Abstract
It is a familiar scheme to show least-squares linear regression as resolving sample vectors of dependent variables into two orthogonal components, a regressional component lying in a space spanned by sample vectors of the independent variables, and a residual component lying in the orthogonal complement of that space. This scheme was probably first introduced by Kolmogorov (1946). But the step from this to considering the linear transformations which obtain these orthogonal components of sample vectors, these being the complementary pair of symmetric idempotents which are the orthogonal projectors on the space and its orthogonal complement, and then to analysis of relations between variables directly in terms of these projectors, is one that does not appear to have been explored. The advantage of this step apart from its showing the way to some possibly new concepts is that it makes an enlargement of didactic methods in a natural formalism for handling some familiar theory with a direct display of its algebraical-geometrical meaning, and it gives the framework for simple proofs and formulae. Proofs of some relevant algebraical propositions have already been given elsewhere (Afriat, 1957 and 1956). The view taken of regression analysis is one that does not depend on distribution concepts. Orthogonal projection is presented as the fundamental principle and the least-squares principle is derived as a property of it. The association of a distribution with a sample is a method that yields
This research was supported by the National Science Foundation.
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Afriat, S.N. (1969). Regression and Projection. In: Fox, K.A., Sengupta, J.K., Narasimham, G.V.L. (eds) Economic Models, Estimation and Risk Programming: Essays in Honor of Gerhard Tintner. Lecture Notes in Operations Research and Mathematical Economics, vol 15. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-46198-9_12
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DOI: https://doi.org/10.1007/978-3-642-46198-9_12
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