概率加权检索的截断模型

Jiaul H. Paik, Yash Agrawal, Sahil Rishi, Vaishal Shah
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引用次数: 2

摘要

现有的概率检索模型没有对所处理的随机变量的域进行限制。在本文中,我们证明了相关文档的归一化项频率(tf)的上界远小于整个集合的归一化项频率(tf)的上界。因此,现有的模型存在两个主要问题:(1)领域不匹配导致数据建模误差;(2)由于异常值的幅度很大,检索模型遵循tf假设,这两个因素的结合往往会高估相关性评分。为了解决这些问题,我们提出了一种基于截断分布的加权概率模型。我们在一组大型文档集合上评估我们的模型。与现有的六种概率模型相比,证明了显著的性能改进。
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Truncated Models for Probabilistic Weighted Retrieval
Existing probabilistic retrieval models do not restrict the domain of the random variables that they deal with. In this article, we show that the upper bound of the normalized term frequency (tf) from the relevant documents is much smaller than the upper bound of the normalized tf from the whole collection. As a result, the existing models suffer from two major problems: (i) the domain mismatch causes data modeling error, (ii) since the outliers have very large magnitude and the retrieval models follow tf hypothesis, the combination of these two factors tends to overestimate the relevance score. In an attempt to address these problems, we propose novel weighted probabilistic models based on truncated distributions. We evaluate our models on a set of large document collections. Significant performance improvement over six existing probabilistic models is demonstrated.
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