分布式词聚类的快速近似AIB算法

Lei Wang, Jianjia Zhang, Luping Zhou, W. Li
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引用次数: 1

摘要

分布式词聚类将具有相似概率分布的词进行合并,从而获得可靠的参数估计、紧凑的分类模型和更好的分类性能。聚类信息瓶颈(AIB)是一种典型的词聚类算法,在传统的文本分类和最近的图像识别中都得到了应用。尽管AIB在理论上很优雅,但它在计算效率上有一个主要问题,特别是在对大量单词进行聚类时。与现有方法不同的是,本文分析了其目标函数互信息损失的特点,并表明仅使用每个词的词类联合概率的比值就可以很容易地识别出用于合并的候选词对。基于这一发现,我们提出了一种快速近似AIB算法,并表明该算法在保持AIB分类性能良好甚至略有提高的同时,可以显著提高AIB的计算效率。在文本和图像分类基准数据集上的实验研究表明,我们的算法在大型真实数据集上的速度比目前最先进的方法提高了100倍以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Approximate AIB Algorithm for Distributional Word Clustering
Distributional word clustering merges the words having similar probability distributions to attain reliable parameter estimation, compact classification models and even better classification performance. Agglomerative Information Bottleneck (AIB) is one of the typical word clustering algorithms and has been applied to both traditional text classification and recent image recognition. Although enjoying theoretical elegance, AIB has one main issue on its computational efficiency, especially when clustering a large number of words. Different from existing solutions to this issue, we analyze the characteristics of its objective function-the loss of mutual information, and show that by merely using the ratio of word-class joint probabilities of each word, good candidate word pairs for merging can be easily identified. Based on this finding, we propose a fast approximate AIB algorithm and show that it can significantly improve the computational efficiency of AIB while well maintaining or even slightly increasing its classification performance. Experimental study on both text and image classification benchmark data sets shows that our algorithm can achieve more than 100 times speedup on large real data sets over the state-of-the-art method.
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