累积引文推荐:基于特征的方法比较

Gebrekirstos G. Gebremeskel, Jiyin He, A. D. Vries, Jimmy J. Lin
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引用次数: 7

摘要

在这项工作中,我们对累积引文推荐(CCR)的方法进行了特征感知比较,CCR是一项任务,旨在根据与知识库中实体的相关性对文档流进行过滤和排名。我们从一个大的特征集开始进行实验,确定了一个强大的子集,并将其应用于比较分类和学习排序算法。凭借少数几组强大的功能,我们实现了比最先进的性能更好。令人惊讶的是,我们的研究结果挑战了先前已知的学习排序优于分类的偏好:在我们的研究中,分类方法的CCR性能优于使用学习排序的方法。这表明比较两种方法是有问题的,因为方法本身和选择使用的特性集之间存在相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cumulative Citation Recommendation: A Feature-Aware Comparison of Approaches
In this work, we conduct a feature-aware comparison of approaches to Cumulative Citation Recommendation (CCR), a task that aims to filter and rank a stream of documents according to their relevance to entities in a knowledge base. We conducted experiments starting with a big feature set, identified a powerful subset and applied it to comparing classification and learning-to-rank algorithms. With few set of powerful features, we achieve better performance than the state-of-the-art. Surprisingly, our findings challenge the previously known preference of learning-to-rank over classification: in our study, the CCR performance of the classification approach outperforms that using learning-to-rank. This indicates that comparing two approaches is problematic due to the interplay between the approaches themselves and the feature sets one chooses to use.
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