随机化最大熵语言模型

Puyang Xu, S. Khudanpur, A. Gunawardana
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引用次数: 5

摘要

我们解决了具有非常大特征集的最大熵语言模型(MELM)的内存问题。在MELM实现中,随机化技术被用来去除所有大的、精确的数据结构。为了避免将每个特征映射到其相应权重的字典结构,可以使用特征哈希技巧[1][2]。我们还用Bloom过滤器代替了显式的特征存储。我们通过大量的实验表明,布隆过滤器的假阳性误差和随机哈希碰撞不会降低模型的性能。通过构建MELM来证明困惑和WER的改进,否则估计或存储的MELM会大得令人望而却步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Randomized maximum entropy language models
We address the memory problem of maximum entropy language models(MELM) with very large feature sets. Randomized techniques are employed to remove all large, exact data structures in MELM implementations. To avoid the dictionary structure that maps each feature to its corresponding weight, the feature hashing trick [1] [2] can be used. We also replace the explicit storage of features with a Bloom filter. We show with extensive experiments that false positive errors of Bloom filters and random hash collisions do not degrade model performance. Both perplexity and WER improvements are demonstrated by building MELM that would otherwise be prohibitively large to estimate or store.
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