Classical and Probabilistic Information Retrieval Techniques: An Audit

Qaiser Abbas
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引用次数: 1

Abstract

Information retrieval is acquiring particular information from large resources and presenting it according to the user’s need. The incredible increase in information resources on the Internet formulates the information retrieval procedure, a monotonous and complicated task for users. Due to over access of information, better methodology is required to retrieve the most appropriate information from different sources. The most important information retrieval methods include the probabilistic, fuzzy set, vector space, and boolean models. Each of these models usually are used for evaluating the connection between the question and the retrievable documents. These methods are based on the keyword and use lists of keywords to evaluate the information material. In this paper, we present a survey of these models so that their working methodology and limitations are discussed. This is an important understanding because it makes possible to select an information retrieval technique based on the basic requirements. The survey results showed that the existing model for knowledge recovery is somewhere short of what was planned. We have also discussed different areas of IR application where these models could be used.
经典和概率信息检索技术:审计
信息检索是从大量资源中获取特定的信息,并根据用户的需要进行呈现。互联网上信息资源的惊人增长,使得信息检索过程对用户来说是一项单调而复杂的任务。由于信息的过度访问,需要更好的方法从不同的来源检索最合适的信息。最重要的信息检索方法包括概率、模糊集、向量空间和布尔模型。这些模型中的每一个通常用于评估问题与可检索文档之间的联系。这些方法以关键词为基础,利用关键词列表对信息材料进行评价。在本文中,我们提出了这些模型的调查,以便他们的工作方法和局限性进行了讨论。这是一个重要的理解,因为它使选择基于基本需求的信息检索技术成为可能。调查结果表明,现有的知识恢复模式与计划存在一定差距。我们还讨论了可以使用这些模型的IR应用的不同领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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