Analysis of large data logs: an application of Poisson sampling on excite web queries

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Search engines are the gateway for users to retrieve information from the Web. There is a crucial need for tools that allow effective analysis of search engine queries to provide a greater understanding of Web users' information seeking behavior. The objective of the study is to develop an effective strategy for the selection of samples from large-scale data sets. Millions of queries are submitted to Web search engines daily and new sampling techniques are required to bring these databases to a manageable size, while preserving the statistically representative characteristics of the entire data set. This paper reports results from a study using data logs from the Excite Web search engine. We use Poisson sampling to develop a sampling strategy, and show how sample sets selected by Poisson sampling statistically effectively represent the characteristics of the entire dataset. In addition, this paper discusses the use of Poisson sampling in continuous monitoring of stochastic processes, such as Web site dynamics.

论文关键词:Poisson sampling,Large-scale in depth data analysis,Web user modeling,Search engine queries,Data mining

论文评审过程:Received 23 January 2001, Accepted 9 July 2001, Available online 14 March 2002.

论文官网地址:https://doi.org/10.1016/S0306-4573(01)00043-7