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Statistical Models for Monolingual and Bilingual Information Retrieval

机译:单语和双语信息检索的统计模型

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摘要

This work reviews information retrieval systems developed at ITC-irst which were evaluated through several tracks of CLEF, during the last three years. The presentation tries to follow the progress made over time in developing new statistical models first for monolingual information retrieval, then for cross-language information retrieval. Besides describing the underlying theory, performance of monolingual and bilingual information retrieval models are reported, respectively, on Italian monolingual tracks and Italian-English bilingual tracks of CLEF. Monolingual systems by ITC-irst performed consistently well in all the official evaluations, while the bilingual system ranked in CLEF 2002 just behind competitors using commercial machine translation engines. However, by experimentally comparing our statistical topic translation model against a state-of-the-art commercial system, no statistically significant difference in retrieval performance could be measured on a larger set of queries.
机译:这项工作回顾了在ITC-irst开发的信息检索系统,该系统在过去三年中通过CLEF的多个方面进行了评估。该演示文稿试图跟踪随着时间的发展,首先开发用于单语言信息检索的新统计模型,然后是跨语言信息检索。除了描述基本理论之外,还分别在CLEF的意大利单语曲目和意大利-英语双语曲目中报告了单语和双语信息检索模型的性能。 ITC-irst的单语系统在所有官方评估中均表现出色,而CLEF 2002中的双语系统在使用商用机器翻译引擎的竞争中仅次于竞争对手。但是,通过实验性地将我们的统计主题翻译模型与最新的商业系统进行比较,可以在较大的一组查询上无法测量出统计上的显着差异。

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