Web内容效用的测量与预测研究综述

Yuan Yao, Hanghang Tong, Feng Xu, Jian Lu
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引用次数: 1

摘要

如今,Web上提供了各种类型和大量的内容。描述Web内容并预测其固有的有用性成为重要的问题,这些问题可能会使许多应用程序受益,例如信息过滤和内容推荐。在本文中,我们简要回顾了Web内容实用程序的现有度量和相应的预测方法。特别地,我们专注于三个密切和广泛研究的任务,即内容流行度预测,内容质量预测和科学文章影响预测。在回顾上述三个任务的现有工作时,我们主要旨在回答以下两个基本问题:如何测量Web内容效用,以及如何在测量下进行预测。我们发现,虽然这三个任务密切相关,但它们在预测紧迫性、特征提取和算法设计方面存在细微差异。之后,我们将讨论测量和预测Web内容效用的一些未来方向
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Measurement and Prediction of Web Content Utility: A Review
Nowadays, various types and large amount of content are available on the Web. Characterizing the Web content and predicting its inherent usefulness become important problems that may benefit many applications such as information filtering and content recommendation. In this article, we present a brief review of the existing measurements and the corresponding prediction methods for Web content utility. Specially, we focus on three close and widely studied tasks, i.e., content popularity prediction, content quality prediction, and scientific article impact prediction. While reviewing the existing work in each of the above three tasks, we mainly aim to answer the following two fundamental questions: how to measure the Web content utility, and how to make the predictions under the measurement. We find that while the three tasks are closely related, they bear subtle differences in terms of prediction urgency, feature extraction, and algorithm design. After that, we discuss some future directions in measuring and predicting Web content utility
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