A Comparison of Two Smoothing Methods for Word Bigram Models
Linda Bauman Peto (University of Toronto)

TL;DR
This paper compares two smoothing techniques for word bigram models, evaluating their effectiveness and resource efficiency using a large corpus and perplexity measures.
Contribution
It provides an empirical comparison of the deleted estimation and Bayesian Dirichlet prior smoothing methods for bigram models.
Findings
Both methods achieved similar accuracy in perplexity.
MacKay's Bayesian method used fewer computational resources.
Abstract
A COMPARISON OF TWO SMOOTHING METHODS FOR WORD BIGRAM MODELS Linda Bauman Peto Department of Computer Science University of Toronto Abstract Word bigram models estimated from text corpora require smoothing methods to estimate the probabilities of unseen bigrams. The deleted estimation method uses the formula: Pr(i|j) = lambda f_i + (1-lambda)f_i|j, where f_i and f_i|j are the relative frequency of i and the conditional relative frequency of i given j, respectively, and lambda is an optimized parameter. MacKay (1994) proposes a Bayesian approach using Dirichlet priors, which yields a different formula: Pr(i|j) = (alpha/F_j + alpha) m_i + (1 - alpha/F_j + alpha) f_i|j where F_j is the count of j and alpha and m_i are optimized parameters. This thesis describes an experiment in which the two methods were trained on a two-million-word corpus taken from the Canadian _Hansard_ and…
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Taxonomy
TopicsNatural Language Processing Techniques
