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How good is Good-Turing for Markov samples?

3 February 2021
Prafulla Chandra
A. Thangaraj
Nived Rajaraman
ArXiv (abs)PDFHTML
Abstract

The Good-Turing (GT) estimator for the missing mass (i.e., total probability of missing symbols) in nnn samples is the number of symbols that appeared exactly once divided by nnn. For i.i.d. samples, the bias and squared-error risk of the GT estimator can be shown to fall as 1/n1/n1/n by bounding the expected error uniformly over all symbols. In this work, we study convergence of the GT estimator for missing stationary mass (i.e., total stationary probability of missing symbols) of Markov samples on an alphabet X\mathcal{X}X with stationary distribution [πx:x∈X][\pi_x:x \in \mathcal{X}][πx​:x∈X] and transition probability matrix (t.p.m.) PPP. This is an important and interesting problem because GT is widely used in applications with temporal dependencies such as language models assigning probabilities to word sequences, which are modelled as Markov. We show that convergence of GT depends on convergence of (P∼x)n(P^{\sim x})^n(P∼x)n, where P∼xP^{\sim x}P∼x is PPP with the xxx-th column zeroed out. This, in turn, depends on the Perron eigenvalue λ∼x\lambda^{\sim x}λ∼x of P∼xP^{\sim x}P∼x and its relationship with πx\pi_xπx​ uniformly over xxx. For randomly generated t.p.ms and t.p.ms derived from New York Times and Charles Dickens corpora, we numerically exhibit such uniform-over-xxx relationships between λ∼x\lambda^{\sim x}λ∼x and πx\pi_xπx​. This supports the observed success of GT in language models and practical text data scenarios. For Markov chains with rank-2, diagonalizable t.p.ms having spectral gap β\betaβ, we show minimax rate upper and lower bounds of 1/(nβ5)1/(n\beta^5)1/(nβ5) and 1/(nβ)1/(n\beta)1/(nβ), respectively, for the estimation of stationary missing mass. This theoretical result extends the 1/n1/n1/n minimax rate for i.i.d. or rank-1 t.p.ms to rank-2 Markov, and is a first such minimax rate result for missing mass of Markov samples.

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