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Kleene Algebra with Hypotheses

  • Amina Doumane
  • Denis KuperbergEmail author
  • Damien Pous
  • Pierre Pradic
Open Access
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11425)

Abstract

We study the Horn theories of Kleene algebras and star continuous Kleene algebras, from the complexity point of view. While their equational theories coincide and are PSpace-complete, their Horn theories differ and are undecidable. We characterise the Horn theory of star continuous Kleene algebras in terms of downward closed languages and we show that when restricting the shape of allowed hypotheses, the problems lie in various levels of the arithmetical or analytical hierarchy. We also answer a question posed by Cohen about hypotheses of the form \(1=S\) where S is a sum of letters: we show that it is decidable.

Keywords

Kleene algebra Hypotheses Horn theory Complexity 

1 Introduction

Kleene algebras [6, 10] are idempotent semirings equipped with a unary operation star such that \(x^*\) intuitively corresponds to the sum of all powers of x. They admit several models which are important in practice: formal languages, where \(L^*\) is the Kleene star of a language L; binary relations, where \(R^*\) is the reflexive transitive closure of a relation R; matrices over various semirings, where \(M^*\) can be used to perform flow analysis.

A fundamental result is that their equational theory is decidable, and actually PSpace-complete. This follows from a completeness result which was proved independently by Kozen [11] and Krob [17] and Boffa [3], and the fact that checking language equivalence of two regular expressions is PSpace-complete: given two regular expressions, we have
$$\begin{aligned} \mathsf {KA}\vdash e \le f \quad \text {iff}\quad [e] \subseteq [f] \end{aligned}$$
(where \(\mathsf {KA}\vdash e\le f\) denotes provability from Kleene algebra axioms, and \([e]\) is the language of a regular expression e).

Because of their interpretation in the algebra of binary relations, Kleene algebras and their extensions have been used to reason abstractly about program correctness [1, 2, 9, 12, 15]. For instance, if two programs can be abstracted into two relational expressions \((R^*;S)^*\) and \(((R\cup S)^*;S)^=\), then we can deduce that these programs are equivalent by checking that the regular expression \((a^*b)^*\) and \((a+b)^*b+1\) denote the same language. This technique made it possible to automate reasoning steps in proof assistants [4, 16, 19].

In such a scenario, one often has to reason under assumptions. For instance, if we can abstract our programs into relational expressions \((R+S)^*\) and \(S^*;R^*\), then we can deduce algebraically that the starting programs are equal if we know that \(R;S=R\) (i.e., that S is a no-op when executed after R). When doing so, we move from the equational theory of Kleene algebras to their Horn theory: we want to know whether a given set of equations, the hypotheses, entails another equation in all Kleene algebras. Unfortunately, this theory is undecidable in general [13]. In this paper, we continue the work initiated by Cohen [5] and pursued by Kozen [13], by characterising the precise complexity of new subclasses of this general problem.

A few cases have been shown to be decidable in the literature, when we restrict the form of the hypotheses:
  • when they are of the form \(e=0\) [5],

  • when they are of the form \(a\le 1\) for a a letter [5],

  • when they are of the form \(1=w\) or \(a=w\) for a a letter and w a word, provided that those equations seen as a word rewriting system satisfy certain properties [14, 18]; this includes equations like idempotency \((x=xx)\) or self-invertibility \((1=xx)\).

(In the first two cases, the complexity can be shown to remain in PSpace.) We add one positive case, which was listed as open by Cohen [5], and which is typically useful to express that a certain number of predicates cover all cases:
  • when hypotheses are of the form \(S=1\) for S a sum of letters.

Conversely, Kozen also studied the precise complexity of various undecidable sub-classes of the problem [13]. For those, one has to be careful about the precise definition of Kleene algebras. Indeed, these only form a quasi-variety (their definition involves two implications), and one often consider \(*\)-continuous Kleene algebras [6], which additionally satisfy an infinitary implication (We define these formally in Sect. 2). While the equational theory of Kleene algebras coincides with that of \(*\)-continuous Kleene algebras, this is not the case for their Horn theories: there exist Horn sentences which are valid in all \(*\)-continuous Kleene algebras but not in all Kleene algebras.

Kozen [13] showed for instance that when hypotheses are of the form \(pq=qp\) for pairs of letters (pq), then validity of an implication in all \(*\)-continuous Kleene algebras is \(\varPi ^0_1\)-complete, while it is only known to be ExpSpace-hard for plain Kleene algebras. In fact, for plain Kleene algebras, the only known negative result is that the problem is undecidable for hypotheses of the form \(u=v\) for pairs (uv) of words (Kleene star plays no role in this undecidability result: this is just the word problem). We show that it is already undecidable, and in fact \(\varSigma ^0_1\)-complete when hypotheses are of the form \(a\le S\) where a is a letter and S is a sum of letters. We use a similar encoding as in [13] to relate the Horn theories of \(\mathsf {KA}\) and \(\mathsf {KA}^*\) to runs of Turing Machines and alternating linearly bounded automata. This allows us to show that deciding whether an inequality \(w\le f\) holds where w is a word, in presence of sum-of-letters hypotheses, is EXPTIME-complete. We also refine the \(\varPi _1^1\)-completeness result obtained in [13] for general hypotheses, by showing that hypotheses of the form \(a\le g\) where a is a letter already make the problem \(\varPi _1^1\)-complete.

The key notion we define and exploit in this paper is the following: given a set H of equations, and given a language L, write \(\mathrm {cl}_H(L)\) for the smallest language containing L such that for all hypotheses \((e\le f)\in H\) and all words uv,
This notion makes it possible to characterise the Horn theory of \(*\)-continuous Kleene algebras, and to approximate that of Kleene algebras: we have
$$\begin{aligned} \mathsf {KA}_H\vdash e\le f \quad \Rightarrow \quad \mathsf {KA}_H^*\vdash e\le f \quad \Leftrightarrow \quad [e]\subseteq \mathrm {cl}_H([f]) \end{aligned}$$
where \(\mathsf {KA}_H\vdash e\le f\) (resp. \(\mathsf {KA}_H^*\vdash e\le f\)) denotes provability in Kleene algebra (resp. \(*\)-continuous Kleene algebra). We study downward closed languages and prove the above characterisation in Sect. 3.

The first implication can be strengthened into an equivalence in a few cases, for instance when the regular expression e and the right-hand sides of all hypotheses denote finite languages, or when hypotheses have the form \(1=S\) for S a sum of letters. We obtain decidability in those cases (Sect. 4).

Then we focus on cases where hypotheses are of the form \(a\le e\) for a a letter, and we show that most problems are already undecidable there. We do so by exploiting the characterisation in terms of downward closed languages to provide encodings of various undecidable problems on Turing machines, total Turing machines, and linearly bounded automata (Sect. 5).

We summarise our results in Fig. 1. The top of each column restricts the type of allowed hypotheses. Variables ef stand for general expressions, uw for words, and ab for letters. Grayed statements are implied by non-grayed ones.
Fig. 1.

Summary of the main results.

Notations. We let ab range over the letters of a finite alphabet \(\varSigma \). We let uvw range over the words over \(\varSigma \), whose set is written \(\varSigma ^*\). We write \(\epsilon \) for the empty word; uv for the concatenation of two words uv; \({|w|}\) for the length of a word w. We write \(\varSigma ^+\) for the set of non-empty words. We let efg range over the regular expressions over \(\varSigma \), whose set is written \(\mathsf {Exp}_{\varSigma }\). We write \([e]\) for the language of such a an expression e: \([e]\subseteq \varSigma ^*\). We sometimes implicitly regard a word as a regular expression. If X is a set, \(\mathcal {P}(X)\) (resp. \(\mathcal {P}_\mathrm {fin}(X)\)) is the set of its subsets (resp. finite subsets) and \({|X|}\) for its cardinality.

A long version of this extended abstract is available on HAL [8], with most proofs in appendix.

2 The Systems \(\mathsf {KA}\) and \(\mathsf {KA}^*\)

Definition 1

(\(\mathsf {KA}, \mathsf {KA}^*\)). A Kleene algebra is a tuple \((M,0,1,+,\cdot ,*)\) where \((M,0,1,+,\cdot )\) is an idempotent semiring and the following axioms and implications, where the partial order \(\le \) is defined by \(x\le y\) if \(x+y=y\), hold for all \(x,y\in M\).
A Kleene algebra is \(*\)-continuous if it satisfies the following implication:

A hypothesis is an inequation of the form \(e\le f\), where e and f are regular expressions. If H is a set of hypotheses, and ef are regular expressions, we write \(\mathsf {KA}_H\vdash e\le f\) (resp. \(\mathsf {KA}_H^*\vdash e\le f\)) if \(e\le f\) is derivable from the axioms and implications of \(\mathsf {KA}\) (resp. \(\mathsf {KA}^*\)) as well as the hypotheses from H. We omit the subscript when H is empty.

Note that the letters appearing in the hypotheses are constants: they are not universally quantified. In particular if \(H=\{aa\le a\}\), we may deduce \(\mathsf {KA}_H\vdash a^*\le a\) but not \(\mathsf {KA}_H\vdash b^*\le b\).

Languages over the alphabet \(\varSigma \) form a \(*\)-continuous Kleene algebra, as well as binary relations over an arbitrary set.

In absence of hypotheses, provability in \(\mathsf {KA}\) is coincides with provability in \(\mathsf {KA}^*\) and with language inclusion:

Theorem 1

(Kozen [11]).
$$\mathsf {KA}\vdash e\le f \quad \Leftrightarrow \quad \mathsf {KA}^* \vdash e\le f \quad \Leftrightarrow \quad [e]\subseteq [f]$$
We will classify the theories based on the shape of hypotheses we allow; we list them below (I is a finite non-empty set):

We call letter hypotheses any class of hypotheses where the left-hand side is a letter (the last four ones). In the rest of the paper, we study the following problem from a complexity point of view: given a set of C-hypotheses H, where C is one of the classes listed above, and two expressions \(e,f\in \mathsf {Exp}_{\varSigma }\), can we decide whether \(\mathsf {KA}_H\vdash e \le f\) (resp. \(\mathsf {KA}_H^{*} \vdash e \le f\)) holds? We call it the problem of deciding \(\mathsf {KA}\) (resp. \(\mathsf {KA}^*\)) under C-hypotheses.

3 Closure of Regular Languages

It is known that provability in \(\mathsf {KA}\) and \(\mathsf {KA}^*\) can be characterised by language inclusions (Theorem 1). In the presence of hypotheses, this is not the case anymore: we need to take the hypotheses into account in the semantics. We do so by using the following notion of downward closure of a language.

3.1 Definition of the Closure

Definition 2

(H-closure). Let H be a set of hypotheses and \(L\subseteq \varSigma ^*\) be a language. The H-closure of L, denoted \(\mathrm {cl}_H(L)\), is the smallest language K such that \(L\subseteq K\) and for all hypotheses \(e\le f\in H\) and all words \(u,v\in \varSigma ^*\), we have
$$u[f]v \subseteq C \qquad \Rightarrow \qquad u[e]v\subseteq K$$
Alternatively, \(\mathrm {cl}_H(L)\) can be defined as the least fixed point of the function \(\phi _L:\mathcal {P}(\varSigma ^*)\rightarrow \mathcal {P}(\varSigma ^*)\) defined by \(\phi _L(X)=L\cup \psi _H(X)\), where
$$\psi _H(X)=\bigcup _{(e\le f)\in H}\{u[e]v \mid u,v\in \varSigma ^*, u[f]v\subseteq X\}.$$

Example 1

If \(H=\{ab\le ba\}\) then \(\mathrm {cl}_H([b^*a^*])=[(a+b)^*]\), while \(\mathrm {cl}_H([a^*b^*])=[a^*b^*]\).

In order to manipulate closures more conveniently, we introduce a syntactic object witnessing membership in a closure: derivation trees.

Definition 3

Let H be a set of hypotheses and L a regular language. We define an infinitely branching proof system related to \(\mathrm {cl}_H(L)\), where statements are regular expressions, and rules are the following, called respectively axiom, extension, and hypothesis:

We write \(\vdash _{H,L}e\) if e is derivable in this proof system, i.e. if there is a well-founded tree using these rules, with root e and all leaves labelled by words in L. Such a tree will be called a derivation tree for \([e]\subseteq \mathrm {cl}_H(L)\) (or \(e\in \mathrm {cl}_H(L)\) if e is a word).

Example 2

The following derivation is a derivation tree for \(bababa\in \mathrm {cl}_H([b^*a^*])\), where \(H=\{ab\le ba\}\).

Derivation trees witness membership to the closure as shown by the following proposition.

Proposition 1

\([e]\subseteq \mathrm {cl}_H(L)\quad \text {iff} \quad \vdash _{H,L}e\).

(See [8, App. A] for a proof.)

3.2 Properties of the Closure Operator

We summarise in this section some useful properties of the closure. Lemma 1 shows in particular that the closure is idempotent, monotonic (both for the set of hypotheses and its language argument) and invariant by context application. Lemma 2 shows that internal closure operators can be removed in the evaluation of regular expressions. Those two lemmas are proved in [8, App. A].

Lemma 1

Let \(A,B,U,V\subseteq \varSigma ^*\). We have
  1. 1.

    \(A\subseteq \mathrm {cl}_H(A)\)

     
  2. 2.

    \(\mathrm {cl}_H(\mathrm {cl}_H(A))=\mathrm {cl}_H(A)\)

     
  3. 3.

    \(A\subseteq B\) implies \(\mathrm {cl}_H(A)\subseteq \mathrm {cl}_H(B)\)

     
  4. 4.

    \(H\subseteq H'\) implies \(\mathrm {cl}_H(A)\subseteq \mathrm {cl}_{H'}(A)\)

     
  5. 5.

    \(\mathrm {cl}_H(A)\subseteq \mathrm {cl}_H(B)\) if and only if \(A\subseteq \mathrm {cl}_H(B)\).

     
  6. 6.

    \(A\subseteq \mathrm {cl}_H(B)\) implies \(UAV\subseteq \mathrm {cl}_H(UBV)\).

     

Lemma 2

Let \(A,B\subseteq \varSigma ^*\), then
  1. 1.

    \(\mathrm {cl}_H(A+B)=\mathrm {cl}_H(\mathrm {cl}_H(A)+\mathrm {cl}_H(B))\),

     
  2. 2.

    \(\mathrm {cl}_H(AB)=\mathrm {cl}_H(\mathrm {cl}_H(A)\mathrm {cl}_H(B))\),

     
  3. 3.

    \(\mathrm {cl}_H(A^*)=\mathrm {cl}_H(\mathrm {cl}_H(A)^*)\)

     

3.3 Relating Closure and Provability in \(\mathsf {KA}_H\) and \(\mathsf {KA}_H^*\)

We show that provability in \(\mathsf {KA}^*\) can be characterized by closure inclusions. In \(\mathsf {KA}\), provability implies closure inclusions but the converse is not true in general.

Theorem 2

Let H be a set of hypotheses and ef be two regular expressions.
$$ \mathsf {KA}_H\vdash e\le f \qquad \Rightarrow \qquad \mathsf {KA}_H^*\vdash e\le f \qquad \Leftrightarrow \qquad [e]\subseteq \mathrm {cl}_H([f])$$

Proof

Let \(\mathsf {CReg}_{H,\varSigma }=\{\mathrm {cl}_H(L)\mid L\in \mathsf {Reg}_{\varSigma }\}\), on which we define the following operations:
We define the closure model Open image in new window .

We write \(\le \) for the inequality induced by \(\oplus \) in \(F_{H,\varSigma }\): \(X\le Y\) if \(X\oplus Y=Y\).

Lemma 3

Open image in new window is a \(*\)-continuous Kleene algebra. The inequality \(\le \) of \(F_{H,\varSigma }\) coincides with inclusion of languages.

Proof

By Lemma 2, the function Open image in new window is a homomorphism. We show that \(F_{H,\varSigma }\) is a \(*\)-continuous Kleene algebra. First, identities of \(\mathsf {Lang}_{\varSigma }=(\mathcal {P}(\varSigma ^*),+,\cdot ,*)\) are propagated through the morphism \(\mathrm {cl}_H\), so only Horn formulas defining \(*\)-continuous Kleene algebras remain to be verified. It suffices to prove that \(F_{H,\varSigma }\) satisfies the \(*\)-continuity implication, because the implication \(xy\le y\rightarrow x^*y\le y\) and its dual can be deduced from it. Let \(A,B,C\in F_{H,\varSigma }\) such that for all \(i\in \mathbb N\), Open image in new window , where Open image in new window . By Lemma 2, Open image in new window , so we have \(\mathrm {cl}_H(A B^i C)\le D\), and in particular \(A B^i C\le D\) for all i. By \(*\)-continuity of \(\mathsf {Lang}_{\varSigma }\), we obtain \(A B^* C\le D\). By Lemma 1 and using \(D=\mathrm {cl}_H(D)\), we obtain \(\mathrm {cl}_H(A B^* C)\le D\) and finally by Lemma 2, Open image in new window . This achieves the proof that \(F_{H,\varSigma }\) is a \(*\)-continuous Kleene algebra.

Let \(A,B\in \mathsf {CReg}_{H,\varSigma }\). We have \(A\le B\Leftrightarrow A\oplus B=B \Leftrightarrow \mathrm {cl}_H(A+B)=B \Leftrightarrow A\subseteq B\). Finally, if \(e\le f\) is a hypothesis from H, then we have \(\mathrm {cl}_H{[e]}\subseteq \mathrm {cl}_H([f])\), so the hypothesis is verified in \(F_{H,\varSigma }\).    \(\square \)

The implications \(\mathsf {KA}_H^{(*)}\vdash e\le f \Rightarrow [e]\subseteq \mathrm {cl}_H(f)\) follow from the fact that if an inequation \(e\le f\) is derivable in \(\mathsf {KA}_H\) (resp. \(\mathsf {KA}_H^*\)) then it is true in every model, in particular in the model \(F_{H,\varSigma }\), thus \(\mathrm {cl}_H([e])\subseteq \mathrm {cl}_H([f])\) or, equivalently. \([e]\subseteq \mathrm {cl}_H([f])\).

Let us prove that for any regular expressions ef, if \([e]\subseteq \mathrm {cl}_H([f])\) then \(\mathsf {KA}_H^*\vdash e\le f\). Let ef be two such expressions and let T be a derivation tree for \([e]\subseteq \mathrm {cl}_H([f])\), i.e. witnessing \(\vdash _{H,L}e\le f\). We show that we can transform this tree T into a proof tree in \(\mathsf {KA}_H^*\). The extension rule is an occurrence of [8, App. A, Lem. 12]. Finally, the hypothesis rule is also provable in \(\mathsf {KA}_H^*\), using the hypothesis \(e\le f\) together with compatibility of \(\le \) with concatenation, and completeness of \(\mathsf {KA}^*\) for membership of \(u\in [e]\). We can therefore build from the tree T a proof in \(\mathsf {KA}_H^*\) witnessing \(\mathsf {KA}_H^*\vdash e\le f\).    \(\square \)

When we restrict the shape of the expression e to words, and hypotheses to \((w\le \sum w)\)-hypotheses, we get the implication missing from Theorem 2.

Proposition 2

Let H be a set of \((w\le \sum w)\)-hypotheses, \(w\in \varSigma ^*\) and \(f\in \mathsf {Exp}_{\varSigma }\).
$$\mathsf {KA}_H\vdash w\le f \qquad \Leftrightarrow \qquad w\in \mathrm {cl}_H([f])$$

Proof

Let us show that \(w\in \mathrm {cl}_H([f])\) implies \(\mathsf {KA}_H\vdash w\le f\). We proceed by induction on the height of a derivation tree for \(w\in \mathrm {cl}_H([f])\). If this tree is just a leaf, then \(w\in [f]\) and by Theorem 1 \(\mathsf {KA}\vdash w\le f\). Otherwise, this derivation starts with the following steps:

Our inductive assumption is that \(\mathsf {KA}_H\vdash uw_iv\le f\) for all i, thus \(\mathsf {KA}_H\vdash \sum _iuw_iv\le f\). We also have \(\mathsf {KA}_H\vdash w \le (\sum _iw_i)\) hence \(\mathsf {KA}\vdash w\le f\) by distributivity.    \(\square \)

4 Decidability of \(\mathsf {KA}\) and \(\mathsf {KA}^*\) with (\(1=\sum x\))-Hypotheses

In this section, we answer positively the decidability problem of \(\mathsf {KA}_H\), where H is a set of (\(1=\sum x\))-hypotheses, posed by Cohen [5]:

Theorem 3

If H is a set of \((1=\sum x)\)-hypotheses, then \(\mathsf {KA}_H\) is decidable.

To prove this theorem we show that in the case of \((1=\sum x)\)-hypotheses:
  1. (P1)

    \(\mathsf {KA}_H\vdash e\le f\) if and only if \( [e]\subseteq \mathrm {cl}_H([f])\).

     
  2. (P2)

    \(\mathrm {cl}_H([f])\) is regular and we can compute effectively an expression for it.

     

Decidability of \(\mathsf {KA}_H\) follows immediately from (P1) and (P2), since it amounts to checking language inclusion for two regular expressions.

To show (P1) and (P2), it is enough to prove the following result:

Theorem 4

Let H be a set of \((1=\sum x)\)-hypotheses and let f be a regular expression. The language \(\mathrm {cl}_H([f])\) is regular and we can compute effectively an expression c such that \([c]=\mathrm {cl}_H([f])\) and \(\mathsf {KA}_H\vdash c\le f\).

(P2) follows immediately from Theorem 4. To show (P1), it is enough to prove that \([e]\subseteq \mathrm {cl}_H([f])\) implies \(\mathsf {KA}_H\vdash e\le f \), since the other implication is always true (Theorem 2). Let ef such that \([e]\subseteq \mathrm {cl}_H([f])\). If c is the expression given by Theorem 4, we have \(\mathsf {KA}_H\vdash c \le f\) and \([e]\subseteq [c]\) so by Theorem 1 \(\mathsf {KA}\vdash e \le c\), and this concludes the proof.

To prove Theorem 4, we first show that the closure of (\(1=\sum x\))-hypotheses can be decomposed into the closure of (\( x\le 1\))-hypotheses followed by the closure of (\(1\le \sum x\))-hypotheses:

Proposition 3

(Decomposition result). Let \(H=\{1=S_j \mid j\in J\}\) be a set of \((1=\sum x)\)-hypotheses.

We set \(H_{ sum }=\{1\le S_j \mid j\in J\}\) and \(H_{ id }=\{a\le 1 \mid a\in [S_j], j\in J\}\). For every language \(L\subseteq \varSigma ^*\), we have \( \mathrm {cl}_H(L)=\mathrm {cl}_{H_{ sum }}(\mathrm {cl}_{H_{ id }}(L))\).

Sketch. We show that rules from \(H_{ id }\) can be locally permuted with rules of \(H_{ sum }\) in a derivation tree. This allows to compute a derivation tree where all rules from \(H_{ id }\) occur after (i.e. closer to leaves than) rules from \(H_{ sum }\).    \(\square \)

Now, we will show results similar to Theorem 4, but which apply to (\(x\le 1\))-hypotheses and (\(1\le \sum x\))-hypotheses (Propositions 5 and 6 below). To prove Theorem 4, the idea is to decompose H into \(H_{ id }\) and \(H_{ sum }\) using the decomposition property Proposition 3, then applying Propositions 5 and 6 to \(H_{ id }\) and \(H_{ sum }\) respectively.

To show these two propositions, we make use of a result from [7]:

Definition 4

Let \(\mathcal {A}=(Q,\varDelta ,\iota ,F)\) be an NFA, H be a set of hypotheses and \(\varphi :Q\rightarrow \mathsf {Exp}_{\varSigma }\) a function from states to expressions. We say that \(\varphi \) is H-compatible with \(\mathcal {A}\) if:
  • \(\mathsf {KA}_H\vdash 1\le \varphi (q)\) whenever \(q\in F\),

  • \(\mathsf {KA}_H\vdash a \varphi (r) \le \varphi (q)\) for all transitions \((q, a, r)\in \varDelta \).

We set \(\varphi ^\mathcal {A}=\varphi (\iota )\).

Proposition 4

([7]). Let \(\mathcal {A}\) be a NFA, H be a set of hypothesis and \(\varphi \) be a function H-compatible with \(\mathcal {A}\). We can construct a regular expression \(f_\mathcal {A}\) such that:
$$[f_\mathcal {A}]=[\mathcal {A}]\quad \text { and }\quad \mathsf {KA}_H\vdash f_\mathcal {A}\le \varphi ^\mathcal {A}$$

Proposition 5

Let H be a set of \((x\le 1)\)-hypotheses and let f be a regular expression. The language \(\mathrm {cl}_H([f])\) is regular and we can compute effectively an expression c such that \([c]=\mathrm {cl}_H([f])\) and \(\mathsf {KA}_H\vdash c\le f\).

Proof

Let \(K=\mathrm {cl}_{H}([f])\) and \(\varGamma =\{a\mid (a\le 1)\in H\}\), we show that K is regular. If \(\mathcal {A}\) is a NFA for f, a NFA \(\mathcal {A}_ id \) recognizing K can be built from \(\mathcal {A}\) by adding a \(\varGamma \)-labelled loop on every state. It is straightforward to verify that the resulting NFA recognizes K, by allowing to ignore any letter from \(\varGamma \).

For every \(q\in Q\), let \(f_q\) be a regular expression such that \([f_q]=[q]_\mathcal {A}\), where \([q]_\mathcal {A}\) denotes the language accepted from q in \(\mathcal {A}\). Let \(\varphi :Q \rightarrow \mathsf {Exp}_{\varSigma }\) which maps each state q of \(\mathcal {A}_ id \) (which is also a state of \(\mathcal {A}\)) to \(\varphi (q)=f_q\). Let us show that \(\varphi \) is H-compatible with \(\mathcal {A}\). If \(q\in F\), then \(1\in [f_q]\), so by completeness of \(\mathsf {KA}\), we have \(\mathsf {KA}\vdash 1\le f_q\). Let (paq) be a transition of \(\mathcal {A}_ id \). Either \((p,a,q)\in \varDelta \), in which case we have \(a[f_q]\subseteq [f_p]\), and so by Theorem 1 \(\mathsf {KA}\vdash af_q\le f_p\). Or \(p=q\) (this transition is a loop that we added). Then \(\mathsf {KA}_H\vdash a\le 1\), so \(\mathsf {KA}_H\vdash af_p\le f_p\), and this concludes the proof.

By Proposition 4, we can now construct a regular expression c which satisfies the desired properties.    \(\square \)

Definition 5

Let \(\varGamma \) be a set of letters. A language L is said to be \(\varGamma \)-closed if:
$$\forall u,v\in \varSigma ^*, \forall a\in \varGamma \qquad uv\in L \qquad \Rightarrow \qquad uav\in L$$
If \(H=\{1\le S_i\mid i\in I\}\) is a set of \((1\le \sum x)\)-hypotheses, we say that a language L is H-closed if if it is \(\varGamma \)-closed where \(\varGamma =\cup _{i\in I} [S_i]\).

Remark 1

If H is a set of \((x\le 1)\)-hypothesis, and \(\varGamma =\{a\mid (a\le 1)\in H\}\), then \(\mathrm {cl}_H(L)\) is \(\varGamma \)-closed for every language L.

Proposition 6

Let H be a set of \((1\le \sum x)\)-hypotheses and let f be a regular expression whose language is H-closed. The language \(\mathrm {cl}_H([f])\) is regular and we can compute effectively an expression c such that \([c]=\mathrm {cl}_H([f])\) and \(\mathsf {KA}_H\vdash c\le f\).

Proof

We set \(L=[f]\), \(H=\{1\le S_j\mid j\in J\}\) and \(\varGamma =\{a\mid a\in [S_j], j\in J \}\).

Let us show that \(\mathrm {cl}_H(L)\) is regular. The idea is to construct a set of words \(L_\sharp \), where each word \(u_\sharp \) is obtained from a word u of \(\mathrm {cl}_H(L)\), by adding at the position where a rule \((1\le S_j)\) is applied in the derivation tree for \(\mathrm {cl}_H(L)\vdash u\), a new symbol \(\sharp _j\). We will show that this set satisfies the two following properties:
  • \(\mathrm {cl}_H(L)\) is obtained from \(L_\sharp \) by erasing the symbols \(\sharp _j\).

  • \(L_\sharp \) is regular.

Since the operation that erases letters preserves regularity, we obtain as a corollary that \(\mathrm {cl}_H(L)\) is regular.

Let us now introduce more precisely the language \(L_\sharp \) and show the properties that it satisfies. Let \(\varTheta _\sharp =\{\sharp _j \mid j\in J\}\) be a set of new letters and \(\varSigma _\sharp =\varSigma \cup \varTheta _\sharp \) be the alphabet \(\varSigma \) enriched with these new letters.

We define the function \( exp :\varSigma _\sharp \rightarrow \mathcal {P}(\varSigma )\) that expands every letter \(\sharp _j\) into the sum of the letters corresponding to its rule in H as follows:
$$\begin{array}{ll} exp (a)=a&{}\qquad \text {if } a\in \varSigma \\ exp (\sharp _j)=\{a\mid a\in [S_j] \}&{}\qquad \forall j\in J \end{array}$$
This function can naturally be extended to \( exp :(\varSigma _\sharp )^*\rightarrow \mathcal {P}(\varSigma ^*)\).
If \(L \subseteq \varSigma ^*\), we define \(L_\sharp \subseteq (\varSigma _\sharp )^*\) as follows:
$$L_\sharp = exp ^{-1}(\mathcal {P}(L))=\{u\in (\varSigma _\sharp )^*\mid exp (u)\subseteq L\}$$
We define the morphism \(\pi :(\varSigma _\sharp )^*\rightarrow \varSigma ^*\) that erases the letters from \(\varTheta _\sharp \) as follows: \(\pi (a)=a\) if \(a\in \varSigma \) and \(\pi (\sharp _j)=\epsilon \) for all \(j\in J\). Our goal is to prove that \(\mathrm {cl}_H(L)=\pi (L_\sharp )\) and that \(L_\sharp \) is regular. To prove the first part, we need an alternative presentation of \(L_\sharp \) as the closure of a new set of hypotheses \(H_\sharp \) which we define as follows:
$$H_\sharp =\{\sharp _j\le S_j \mid j\in J\} \cup \{\sharp _j\le 1\mid j\in J\}$$

Lemma 4

We have \(L_\sharp =\mathrm {cl}_{H_\sharp }(L)\). In particular \(L_\sharp \) is \(\varTheta _\sharp \)-closed.

See App. B for a detailed proof of Lemma 4.

Lemma 5

\(\mathrm {cl}_{H}(L)=\pi (L_\sharp )\).

Proof

If \(u\in \pi (L_\sharp )\), let \(v\in L_\sharp \) such that \(u=\pi (v)\). By Lemma 4, there is a derivation tree \(T_v\) for \(v\in \mathrm {cl}_{H_\sharp }(L)\). Erasing all occurrences of \(\sharp _j\) in \(T_v\) yields a derivation tree for \(u\in \mathrm {cl}_{H}(L)\).

Conversely, if \(u\in \mathrm {cl}_{H}(L)\) is witnessed by some derivation tree \(T_u\), we show by induction on \(T_u\) that there exists \(v\in L_\sharp \cap \pi ^{-1}(u)\). If \(T_u\) is a single leaf, we have \(u\in L\), and therefore it suffices to take \(v=u\).

Otherwise, the rule applied at the root of \(T_u\) partitions u into \(u=wz\), and has premises \(\{wbz\mid b\in [S_j]\}\) for some \(j\in J\) and \(w,z\in \varSigma ^*\). By induction hypothesis, for all \(b\in [S_j]\), there is \(v_b\in L_\sharp \cap \pi ^{-1}(wbz)\). Let \(w=w_1\dots w_{n}\) and \(z=z_1\dots z_m\) be the decompositions of wz into letters of \(\varSigma \). By definition of \(\pi \), for all \(b\in [S_j]\), \(v_b\) can be written \(v_b=\alpha _{b,1}w_1\alpha _{b,2}w_2\dots w_{n}\alpha _{b,n} b\alpha _{b,n+1}z_1\alpha _{b,n+2}\dots z_{m}\alpha _{b,n+m+3}\), with \(\alpha _{b,0}\dots \alpha _{b,n+m+3}\in (\varTheta _\sharp )^*\). For each \(k\in [0,n+m+3]\), let \(\alpha _k=\varPi _{b\in [S_j]} \alpha _{b,k}\). Let \(w'=\alpha _{0}w_1\alpha _1\dots w_{n}\alpha _{n+1}\) and \(z'=\alpha _{n+2}z_1\alpha _{n+3}\dots z_{m}\alpha _{n+m+3}\). By Lemma 4, \(L_\sharp \) is \(\varTheta _\sharp \)-closed, so for each \(b\in [S_j]\) the word \(v_b'=w'bz'\) is in \(L_\sharp \), since \(v_b'\) is obtained from \(v_b\) by adding letters from \(\varTheta _\sharp \). We can finally build \(v=w'\sharp _j z'\). We have \( exp (v)=\bigcup _{b\in [S_j]} exp (v_b')\subseteq L\), and \(\pi (v)=\pi (w')\pi (z')=wz=u\).    \(\square \)

Lemma 6

\(L_\sharp \) is a regular language, computable effectively.

Sketch. From a DFA \(\mathcal {A}=(\varSigma ,Q,q_0,F,\delta )\) for for L, we first build a DFA \(\mathcal {A}_\wedge =(\varSigma ,\mathcal {P}(Q),q_0,\mathcal {P}(F),\delta _\wedge )\), which corresponds to a powerset construction, except that accepting states are \(\mathcal {P}(F)\). This means that the semantic of a state P is the conjunction of its members. We then build \(\mathcal {A}_\sharp =(\varSigma ,\mathcal {P}(Q),q_0,\mathcal {P}(F),\delta _\sharp )\) based on \(\mathcal {A}_\wedge \), which can additionally read letters of the form \(\sharp _j\), by expanding them using the powerset structure of \(\mathcal {A}_\wedge \).    \(\square \)

Lemma 7

We can construct a regular expression c such that \([c]=\mathrm {cl}_H(L)\) and \(\mathsf {KA}_H\vdash c\le f\).

Proof

Let \(\mathcal {A}_\sharp \) be the DFA constructed for \(L_\sharp \) in the proof of Lemma 6. We will use the notations of this proof in the following.

Let \(\pi (\mathcal {A}_\sharp )=(\varSigma ,\mathcal {P}(Q),q_0,\mathcal {P}(F),\pi (\delta _\sharp ))\) be the NFA obtained from \(\mathcal {A}_\sharp \) by replacing every transition \(\delta _\sharp (P,\sharp _j)=R\), where \(j\in J\), by a transition \(\pi (\delta _\sharp )(P,\epsilon )=R\). By Lemma 5, the automaton \(\pi (\mathcal {A}_\sharp )\) recognizes the language \(\mathrm {cl}_H(L)\). Let us construct a regular expression c for this automaton such that \(\mathsf {KA}_H\vdash c\le f\).

For every \(P\in \mathcal {P}(Q)\), let \(f_P\) be a regular expression such that \([f_P]=[P]_{\mathcal {A}_\wedge }\).

Let \(\varphi :\mathcal {P}(Q) \rightarrow \mathsf {Exp}_{\varSigma }\) be the function which maps each state P of \(\pi (\mathcal {A}_{\sharp })\) to \(\varphi (P)=f_P\). Let us show that \(\varphi \) is H-compatible.

If \(P\in \mathcal {P}(F)\), then P is a final state of \(\mathcal {A}_\wedge \), so \(1\in [f_P]\), and by completeness of \(\mathsf {KA}\), \(\mathsf {KA}\vdash 1\le f_P\). Let \((P,a,R)\in \pi (\varDelta _{\sharp })\). Either \(a\in \varSigma \), so \((P,a,R)\in \varDelta _\wedge \) and \(a[f_R]\subseteq [f_P]\), so by Theorem 1 \(\mathsf {KA}\vdash af_R\le f_P\). Or \(a=\epsilon \) so there is \(j\in J\) such that \((P,\sharp _j,R)\in \varDelta _\sharp \). This means that \(R=\cup _{b\in [S_j]} R_b\) where \(\delta _\wedge (P,b)=R_b, \forall b\in [S_j]\). We have then that \(b[f_{R_b}]\subseteq [f_P]\) for all \(b\in [S_j]\). Note that for all \(b\in [S_j]\), \(R_b\subseteq R\), so \([f_R]\subseteq [f_{R_b}]\) and then \(S_j[f_R]\subseteq [f_P]\). By Theorem 1 \(\mathsf {KA}\vdash S_jf_R\le f_P\). We have also that \(\mathsf {KA}_H\vdash \sharp _j \le S_j\), so \(\mathsf {KA}_H\vdash \sharp _jf_R\le f_P\).

By Proposition 4, we can construct the desired regular expression c.    \(\square \)

5 Complexity Results for Letter Hypotheses

In this section, we give a recursion-theoretic characterization of \(\mathsf {KA}_H\) and \(\mathsf {KA}_H^*\) where H is a set of letter hypotheses or (\(w\le \sum w\))-hypotheses. In all the section, by “deciding \(\mathsf {KA}_H^{(*)}\)” we mean deciding whether \(\mathsf {KA}_H^{(*)}\vdash e\le f\), given efH as input.

Theses various complexity classes will be obtained by reduction from some known problems concerning Turing Machines (TM) and alternating linearly bounded automata (LBA), such as halting problem and universality.

To obtain these reductions, we build on a result which bridges TMs and LBAs on one hand and closures on the other: the set of co-reachable configurations of a TM (resp. LBA) can be seen as the closure of a well-chosen set of hypotheses.

We present this result in Sect. 5.1, and show in Sect. 5.2 how to instantiate it to get our complexity classes.

5.1 Closure and Co-reachable States of TMs and LBAs

Definition 6

An alternating Turing Machine over \(\varSigma \) is a tuple \(\mathcal {M}= (Q, Q_F, \varGamma , \iota , B, \varDelta )\) consisting of a finite set of states Q and final states \(Q_F\subseteq Q\), a finite set of states Q, a finite working alphabet \(\varGamma \supseteq \varSigma \), an initial state \(\iota \in Q\), \(B\in \varGamma \) the blank symbol and a transition function \(\varDelta : (Q\setminus Q_F) \times \varGamma \rightarrow \mathcal {P}(\mathcal {P}(\{L,R\}\times \varGamma \times Q))\). Let \(\#_L, \#_R\notin \varGamma \) be fresh symbols to mark the ends of the tape, and \(\varGamma _\#=\varGamma \cup \{ \#_L, \#_R\}\).

A configuration is a word \(uqav=\#_L\varGamma ^* Q \varGamma ^+\#_R\), where \(\#_L\) and \(\#_R\) are special symbols not in \(\varGamma \), meaning that the head of the TM points to the letter a. We denote by C the set of configurations of \(\mathcal {M}\). A configuration is final if it is of the form \(\#_L\varGamma ^* Q_F\varGamma ^+\#_L\).

The execution of the TM \(\mathcal {M}\) over input \(w \in \varSigma \) may be seen as a game-like scenario between two players \(\exists \mathrm {loise}\) and \(\forall \mathrm {belard}\) over a graph \(C \sqcup (C \times \mathcal {P}(\{L,R\}\times \varGamma \times Q))\), with initial position \(\iota w \) which proceeds as follows.

  • over a configuration uqav with \(a \in \varGamma \), \(u,v \in \varGamma _\#^*\), \(\exists \mathrm {loise}\) picks a transition \(X \in \varDelta (q,a)\) to move to position (uqavX)

  • over a position (uqavX) with \(a \in \varGamma \), \(u,v \in \varGamma ^*\), \(\forall \mathrm {belard}\) picks a triple \((d,c,r) \in X\) to move in configuration
    • \(ucrB\#_R\) if \(v = \#_R\) and \(d = R\)

    • ucrv if \(v \ne \#_R\) and \(d = R\)

    • \(\#_LrBcv\) if \(u = \#_L\) and \(d = L\)

    • \(u'rbcv\) if \(u = \#_Ru'b\) and \(d = L\)

Given a subset of configurations \(D \subseteq C\), we define \(\mathrm {Attr}^{\exists \mathrm {loise}}(D)\) the \(\exists \mathrm {loise}\) attractor for D as the set of configurations from which \(\exists \mathrm {loise}\) may force the execution to go through D.

A deterministic TM \(\mathcal {M}\) is one where every \(\varDelta (q,a) \subseteq \{ \{(d,c,r) \}\}\) for some \((d,c,r) \in \{L,R\}\times \varGamma \times Q\) In such a case, we may identify \(\mathcal {M}\) with the underlying partial function \([\mathcal {M}] : \varSigma ^* \rightharpoonup Q_F\).

An alternating linearly bounded automaton over the alphabet \(\varSigma \) is a tuple \(\mathcal {A}= (Q, Q_F, \varGamma , \iota , \varDelta )\) where \((Q, Q_F, \varGamma \sqcup \{B\}, \iota , B, \varDelta )\) is a TM that does not insert \(B\) symbols. This means that the head can point to \(\sharp _d\), and for every \(X \in \varDelta (q, \#_{d})\) and \((d', a, r) \in X\), we have \(d \ne d'\) and \(a=\#_{d}\).

An LBA is deterministic if its underlying TM is.

Definition 7

A set of \((w\le \sum w)\)-hypotheses is said to be length-preserving if for every \((v\le \sum _{i\in I} v_i)\in H\), we have that \(|v|=|v_i|\) for all \(i\in I\).

The following lemma generalizes a similar construction from [13].

Lemma 8

For every TM \(\mathcal {M}\) of working alphabet \(\varGamma \), there exists a set of (\(w\le \sum w\))-hypotheses \(H_\mathcal {M}\) over the alphabet \(\varTheta = Q \cup \varGamma \) such that, for any set of configurations \(D \subseteq C\) we have that: \(\mathrm {cl}_{H_\mathcal {A}}(D) = \mathrm {Attr}^{\exists \mathrm {loise}}(D)\). Furthermore, this reduction is polytime computable, and \(H_\mathcal {A}\) is length-preserving if \(\mathcal {M}\) is an LBA.

A configuration c is co-reachable if \(\exists \mathrm {loise}\) has a strategy to reach a final configuration from c. Lemma 8 shows that the set of co-reachable configurations can be seen as the closure by (\(w\le \sum w\))-hypotheses. Since we are also interested in (\(x\le \sum x\))-hypotheses, we will show that (\(w\le \sum w\)) hypotheses can be transformed into letter hypotheses. Moreover, this transformation preserves the length-preserving property.

Theorem 5

Let \(\varSigma \) be an alphabet, H be a set of (\(w\le \sum w\))-hypotheses over \(\varSigma \). There exists an extended alphabet \(\varSigma ' \supseteq \varSigma \), a set of (\(x\le \sum w\))-hypotheses \(H'\) over \(\varSigma '\) and a regular expression \(h \in \mathsf {Exp}_{\varSigma '}\) such that the following holds for every \(f \in \mathsf {Exp}_{\varSigma }\) and \(w \in \varSigma ^*\).
$$\begin{aligned} w \in \mathrm {cl}_H([f]) \qquad \text {if and only if} \qquad w \in \mathrm {cl}_{H'}([f + h]) \end{aligned}$$
Furthermore, we guarantee the following:
  • \((\varSigma ', H',h)\) can be computed in polynomial time from \((\varSigma , H)\).

  • \(H'\) is length-preserving whenever H is.

5.2 Complexity Results

Lemma 9

If H is a set of length-preserving (\(w\le \sum w\))-hypotheses (resp. a set of (\(x\le \sum x\))-hypotheses), \(w\in \varSigma ^*\) and \(f \in \mathsf {Exp}_{\varSigma }\), deciding \(\mathsf {KA}_H\vdash w \le f\) is \(\mathrm {EXPTIME-complete}\).

Proof

We actually show that our problem is complete in alternating-\(\mathrm {PSPACE}\) (\(\mathrm {APSPACE}\)), which enables us to conclude as \(\mathrm {EXPTIME}\) and \(\mathrm {APSPACE}\) coincide. First, notice that by completeness of \(\mathsf {KA}_H\) over this fragment (Proposition 2), we have \(\mathsf {KA}_H\vdash w \le f \Leftrightarrow w \in \mathrm {cl}_H([f])\). Hence, we work directly with the latter notion. It suffices to show hardness for the (\(x\le \sum x\)) case and membership for the (\(w\le \sum w\)) case.

Given an arbitrary alternating Turing Machine \(\mathcal {M}\) in \(\mathrm {APSPACE}\) there exists a polynomial \(p \in \mathbb N[X]\) such that executions of \(\mathcal {M}\) over words w are bisimilar to executions of the \(\mathrm {LBA}(\mathcal {M})\) over \(wB^{p({|w|})}\). Hence, by Lemma 8 and Theorem 5, the problem with (\(x\le \sum x\))-hypotheses is \(\mathrm {APSPACE}\)-hard. Conversely, we may show that our problem with (\(w\le \sum w\))-hypotheses falls into \(\mathrm {APSPACE}\). On input w, the alternating algorithm first checks whether \(w \in [f]\) in linear time. If it is the case, it returns “yes”. Otherwise, it non-deterministically picks a factorization \(w = uxv\) with \(x \in \varSigma ^*\) and a hypothesis \(x \le \sum _i y_i\). It then universally picks \(y_i\in \varSigma ^{|x|}\), and replaces x by \(y_i\) on the tape, so that the new tape content is \(w' = uy_iv\). Then the algorithm loops back to its first step. In parallel, we keep track of the number of steps and halt by returning “no” as soon as we reach \({|\varSigma |}^{|w|}\) steps. This is correct because, if there is a derivation tree witnessing \(w \in \mathrm {cl}_H([f])\), there is one where on every path, all nodes have distinct labels, so the nondeterministic player can play according to this tree, while the universal player selects a branch.    \(\square \)

Theorem 6

Deciding \(\mathsf {KA}_H^*\) is \(\varPi ^0_1\mathrm {-complete}\) for (\(x\le \sum x\))-hypotheses.

Proof

By Lemma 9 and the fact that regular expressions are in recursive bijection with natural numbers, our set is clearly \(\varPi ^0_1\). To show completeness, we effectively reduce the set of universal LBAs, which is known to be \(\varPi ^0_1\mathrm {-complete}\), to our set of triples. Indeed, by Lemma 8, an LBA \(\mathcal {A}\) is universal if and only if \(\#_L\{\iota \} \varSigma ^*\#_R\subseteq \mathrm {cl}_H(C_F)\) where \(C_F\) is the set of final configurations.    \(\square \)

Theorem 7

If H is a set of (\(x\le \sum w\))-hypotheses, \(w\in \varSigma ^*\) and \(f \in \mathsf {Exp}_{\varSigma }\), deciding \(\mathsf {KA}_H^{(*)} \vdash w \le f\) is \(\varSigma ^0_1\mathrm {-complete}\).

Proof

As \(\mathsf {KA}_H\) is a recursively enumerable theory, our set is \(\varSigma ^0_1\). By the completeness theorem (Proposition 2), we have \(\mathsf {KA}_H\vdash w \le f \Leftrightarrow \mathsf {KA}_H^*\vdash w \le f \Leftrightarrow w \in \mathrm {cl}_H([f])\), so we may work directly with closure. In order to show completeness, we reduce the halting problem for Turing machines (on empty input) to this problem. Let \(\mathcal {M}\) be a Turing machine with alphabet \(\varSigma \) and final state \(q_f\), and \(H_\mathcal {M}\) be the set of (\(w\le \sum w\))-hypotheses given effectively by Lemma 8. Let \(f=\varSigma ^*q_f\varSigma ^*\), by Lemma 8 we have \(\mathcal {M}\) halts on empty input if and only if \(q_0\in \mathrm {cl}_{H_\mathcal {M}}(f)\). Notice that hypotheses of \(H'\) are of the form \(u\le V\) where \(u\in \varTheta ^3\) and \(V\subseteq \varTheta ^3\). By Theorem 5, we can compute a set \(H'\) of (\(x\le \sum x\))-hypotheses, and an expression h on an extended alphabet such that \(q_0\in \mathrm {cl}_{H_\mathcal {M}}([f])\Leftrightarrow q_0\in \mathrm {cl}_{H'}([f+h])\).    \(\square \)

Theorem 8

Deciding \(\mathsf {KA}_H^*\) is \(\varPi ^0_2\mathrm {-complete}\) for (\(x\le \sum w\))-hypotheses.

Proof

This set is \(\varPi ^0_2\) by Theorem 7. It is complete by reduction from the set of Turing Machines accepting all inputs, which is known to be \(\varPi ^0_2\). Indeed, let \(\mathcal {M}\) be a Turing Machine on alphabet \(\varSigma \) with final state \(q_f\), by Lemma 8, we can compute a set of (\(w\le \sum w\))-hypotheses \(H_\mathcal {M}\) with finite language in second components such that \(c\in \mathrm {cl}_{H_\mathcal {M}}(c')\) if and only if configuration \(c'\) is reachable from c. As before, by Theorem 5, we can compute a set of letter hypotheses \(H'\) with finite languages in second components, and a regular expression h on an extended alphabet, such that for any \(\mathrm {cl}_{H'}([f+h])\cap \varTheta ^*=\mathrm {cl}_{H}([f])\) for any \(f\in \mathsf {Exp}_{\varTheta }\). Let \(C_f=\varSigma ^*q_f\varSigma ^*\), we obtain that \(\mathcal {M}\) accepts all inputs if and only if \([q_0\varSigma ^*]\subseteq \mathrm {cl}_{H'}([C_f+h])\), which achieves the proof of \(\varPi ^0_2\)-completeness.    \(\square \)

Theorem 9

Deciding \(\mathsf {KA}_H^*\) is \(\varPi ^1_1\mathrm {-complete}\) for \((x\le g)\)-hypotheses (\(g\in \mathsf {Exp}_{\varSigma }\)).

Sketch. It is shown in [13] that the problem is complete with hypotheses of the form \(H=H_w\cup \{x\le g\}\), where \(H_w\) is a set of length-preserving (\(w\le \sum w\)) hypotheses. A slight refinement of Theorem 5 allows us to reduce this problem to hypotheses of the form \(x\le g\).    \(\square \)

5.3 Undecidability of \(\mathsf {KA}_H\) for Sums of Letters

Fix an alphabet \(\varSigma \), a well-behaved coding function \(\lceil \cdot \rceil \) of Turing machines with final states \(\{0,1\}\) into \(\varSigma ^*\) and a recursive pairing function \(\langle \cdot , \cdot \rangle : \varSigma ^* \times \varSigma ^* \rightarrow \varSigma ^*\). A universal total \(F : \varSigma ^* \rightarrow \{0,1\}\) is a function such that, for every total Turing machine \(\mathcal {M}\) and input \(w \in \varSigma ^*\) we have \(F(\langle \lceil \mathcal {M} \rceil ,w \rangle ) = [M](w)\). In particular, F should be total and is not uniquely determined over codes of partial Turing machines. The next folklore lemma follows from an easy diagonal argument.

Lemma 10

There is no universal total Turing machine.

Our strategy is to show that decidability of \(\mathsf {KA}_H\) with \((x\le \sum x)\) hypotheses would imply the existence of a universal total TM. To do so, we need one additional lemma.

Lemma 11

Suppose that \(\mathcal {M}=(Q, Q_F, \varGamma , \iota , B, \varDelta )\) is a total Turing machine with final states \(\{0,1\}\) and initial state \(\iota \). Let \(w\in \varSigma ^*\) be an input word for \(\mathcal {M}\).

Then there is effectively a set of length-preserving (\(w\le \sum w\))-hypotheses H and expressions \(e_w,h\) such that \([\mathcal {M}](w) = 1\) if and only if \(\mathsf {KA}_{H} \vdash e_w\le h\).

Theorem 10

\(\mathsf {KA}_H\) is undecidable for (\(x\le \sum x\))-hypotheses.

Proof

Assume that \(\mathsf {KA}_H\) is decidable. This means that we have an algorithm \(\mathcal {A}\) taking tuples \((\varSigma ,w,f,H)\), with H consisting only of sum-of-letters hypotheses and returning true when \(\mathsf {KA}_H\vdash w \le f\) and false otherwise. Without loss of generality, we can assume that \(\mathcal {A}\) is total. By Theorem 5, we may even provide an algorithm \(\mathcal {A}'\) taking as input tuples (wfH) where H is a set of length-preserving (\(w\le \sum w\))-hypotheses with a similar behaviour: \(\mathcal {A}'\) returns true when \(\mathsf {KA}_H\vdash w \le f\) and false otherwise.

Given \(\mathcal {A}'\), consider \(\mathcal {M}\) defined so that \([\mathcal {M}](\lceil \mathcal {N} \rceil ,w) = [\mathcal {A}'](e_w, h, H)\), where the last tuple is given by Lemma 11. We show that \(\mathcal {M}\) is a total universal Turing machine. Since such a machine cannot exist by Lemma 10, this is enough to conclude. Since \(\mathcal {A}'\) is total, so is \(\mathcal {M}\). For total Turing Machines \(\mathcal {N}\), Lemma 11 guarantees that \([\mathcal {N}](w) = 1\) if and only if \([\mathcal {A}'](e_w, h, H) = [\mathcal {M}](\lceil \mathcal {N} \rceil ,w) = 1\). Since both \([\mathcal {A}']\) and \([\mathcal {M}]\) are total with codomain \(\{0,1\}\), we really have \([\mathcal {M}](\lceil \mathcal {N} \rceil ,w) = [\mathcal {N}](w)\).    \(\square \)

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Authors and Affiliations

  • Amina Doumane
    • 1
    • 2
  • Denis Kuperberg
    • 1
    Email author
  • Damien Pous
    • 1
  • Pierre Pradic
    • 1
    • 2
  1. 1.Univ Lyon, EnsL, UCBL, CNRS, LIPLyon Cedex 07France
  2. 2.Warsaw University, MIMUWWarsawPoland

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