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Loukianova, D., Loukianov, O. (2006). Almost sure rate of convergence of maximum likelihood estimators for multidimensional diffusions. In: Bertail, P., Soulier, P., Doukhan, P. (eds) Dependence in Probability and Statistics. Lecture Notes in Statistics, vol 187. Springer, New York, NY . https://doi.org/10.1007/0-387-36062-X_15
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