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Probability / Statistics / Natural language processing / Computational linguistics / Statistical natural language processing / Language modeling / Categorical data / N-gram / Language model / GoodTuring frequency estimation / Smoothing / Bigram
Date: 2015-09-28 16:05:55
Probability
Statistics
Natural language processing
Computational linguistics
Statistical natural language processing
Language modeling
Categorical data
N-gram
Language model
GoodTuring frequency estimation
Smoothing
Bigram

Smoothing Smoothing Add-One Smoothing Deleted Estimation

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