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网络不确定性下的信息检索:稳健的互联网排名

Information Retrieval Under Network Uncertainty: Robust Internet Ranking

Operations Research · 2022
被引 2
人大 AFT50UTD24ABS 4*

中文导读

研究了当网络结构中的链接和节点数量都可能变化时,如何稳健地对网站进行排名,对搜索引擎和金融风险分析有用。

Abstract

Ranking algorithms play a crucial role in information technologies and numerical analysis due to their efficiency in high dimensions and wide range of possible applications, including internet ranking, scientometrics, and systemic risk in finance (SinkRank and DebtRank). The traditional approach to internet ranking goes back to the seminal work of Sergey Brin and Larry Page, who developed the initial method PageRank (PR) in order to rank websites for search engine results based on linear algebra rules. But how robust is this method in times of rapid internet growth? Recent works have studied robust reformulations of the PageRank model for the case when links in the network structure may vary; that is, some links may appear or disappear, influencing the transportation matrix defined by the network structure. In this article, the authors make a further step forward, allowing the network to vary not only in links but also in the number of nodes. The authors focus on growing network structures and develop methods for ranking of networks uncertain both in size and in structure.

互联网排名PageRank网络分析信息检索稳健性