Incremental models for query clustering and query-context aware document clustering

Poonam Goyal, N. Mehala, Navneet Goyal
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Abstract

The traditional query clustering algorithms are designed to work on previously collected data from query stream. These algorithms become less and less effective with time because users' interests, query meaning and popularity of topics change over time. So, there is a need for incremental algorithms which can accommodate the concept drift that surface with new data being added to the collection without performing a complete re-clustering. We have proposed an incremental model for query and query-context aware document clustering. The model periodically updates new information efficiently and can be applied in a distributed environment. The proposed incremental model retains the quality of both query and document clusters. The proposed model can be applied to the results of hierarchical query clustering algorithms that produce query and document clusters. The model is tested on three hierarchical clustering algorithms on different datasets including TREC session track 2011 dataset. We have also experimented with the variant of the proposed incremental model for comparing the performance. The proposed model and its variant not only achieve accuracy very close to that of static models in all the experiments, but also offer a significant speedup.
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用于查询聚类和查询上下文感知文档聚类的增量模型
传统的查询聚类算法是针对从查询流中预先收集的数据而设计的。随着时间的推移,这些算法的有效性越来越低,因为用户的兴趣、查询意义和话题的受欢迎程度会随着时间的推移而变化。因此,需要一种增量算法,它可以适应随着新数据被添加到集合而出现的概念漂移,而无需执行完整的重新聚类。我们提出了一个用于查询和查询上下文感知文档聚类的增量模型。该模型能有效地定期更新新信息,并能应用于分布式环境。提出的增量模型保留了查询和文档聚类的质量。该模型可以应用于生成查询和文档聚类的分层查询聚类算法的结果。在包括TREC session track 2011数据集在内的不同数据集上对该模型进行了三种层次聚类算法的测试。我们还对所提出的增量模型的变体进行了实验,以比较性能。该模型及其变体不仅在所有实验中都达到了与静态模型非常接近的精度,而且具有显著的加速效果。
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