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A Gaussian Prior for Smoothing Maximum Entropy Models
, 1999
"... In certain contexts, maximum entropy (ME) modeling can be viewed as maximum likelihood training for exponential models, and like other maximum likelihood methods is prone to overfitting of training data. Several smoothing methods for maximum entropy models have been proposed to address this problem, ..."
Abstract
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Cited by 181 (1 self)
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In certain contexts, maximum entropy (ME) modeling can be viewed as maximum likelihood training for exponential models, and like other maximum likelihood methods is prone to overfitting of training data. Several smoothing methods for maximum entropy models have been proposed to address this problem, but previous results do not make it clear how these smoothing methods compare with smoothing methods for other types of related models. In this work, we survey previous work in maximum entropy smoothing and compare the performance of several of these algorithms with conventional techniques for smoothing n-gram language models. Because of the mature body of research in n-gram model smoothing and the close connection between maximum entropy and conventional n-gram models, this domain is well-suited to gauge the performance of maximum entropy smoothing methods. Over a large number of data sets, we find that an ME smoothing method proposed to us by Lafferty [1] performs as well as or better tha...
A survey of smoothing techniques for ME models
- IEEE Transactions on Speech and Audio Processing
, 2000
"... Abstract—In certain contexts, maximum entropy (ME) modeling can be viewed as maximum likelihood (ML) training for exponential models, and like other ML methods is prone to overfitting of training data. Several smoothing methods for ME models have been proposed to address this problem, but previous r ..."
Abstract
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Cited by 75 (1 self)
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Abstract—In certain contexts, maximum entropy (ME) modeling can be viewed as maximum likelihood (ML) training for exponential models, and like other ML methods is prone to overfitting of training data. Several smoothing methods for ME models have been proposed to address this problem, but previous results do not make it clear how these smoothing methods compare with smoothing methods for other types of related models. In this work, we survey previous work in ME smoothing and compare the performance of several of these algorithms with conventional techniques for smoothing-gram language models. Because of the mature body of research in-gram model smoothing and the close connection between ME and conventional-gram models, this domain is well-suited to gauge the performance of ME smoothing methods. Over a large number of data sets, we find that fuzzy ME smoothing performs as well as or better than all other algorithms under consideration. We contrast this method with previous-gram smoothing methods to explain its superior performance. Index Terms—Exponential models, language modeling, maximum entropy, minimum divergence,-gram models, smoothing.
The Effects of Background Music on Speech Recognition Accuracy
- Proc. IEEE Conf. on Acoustics, Speech and Signal Processing
, 1997
"... Recognition of broadcast data, such as TV and radio programs is a topic of great interest. One of the problems with such data is the frequent presence of background music that degrades the performance of speech recognition systems. In this paper we examine the effects of different kinds of music on ..."
Abstract
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Cited by 13 (6 self)
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Recognition of broadcast data, such as TV and radio programs is a topic of great interest. One of the problems with such data is the frequent presence of background music that degrades the performance of speech recognition systems. In this paper we examine the effects of different kinds of music on automatic speech recognition systems by comparing the effects of music with the relatively well-known effects of white noise on these systems. We also examine the extent to which compensation algorithms that have been successfully applied to noisy speech are also helpful in improving recognition accuracy for speech that is corrupted by music. It is hoped that these experimental comparisons will lead to a better understanding of how to compensate for the effects of background music. 1.

