在基于位置的社交网络中减少特征以提高链接预测性能,从特征簇中非单调选择子集

A. Bayrak, Faruk Polat
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引用次数: 0

摘要

在大多数情况下,机器学习算法可用的特征集需要特征工程方法来选择最佳性能的子集。在我们的链接预测研究中,我们观察到基于位置的社交网络(LBSNs)的特征面临同样的挑战。我们采用了多种约简方法来避免由于特征之间的冗余和相关性交互而导致的性能问题。其中一种方法是自定义的两步法;从基于所提出的交互相关相似性度量的聚类特征开始,以非单调地从这些聚类中选择最优特征子集结束。在这项研究中,我们将众所周知的通用特征约简算法与我们自定义的LBSNs方法结合起来评估新颖性并验证贡献。来自多个数据组的结果表明,与其他方法相比,我们的自定义特征约简方法对链接预测的效率优化更高、更稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Features to Improve Link Prediction Performance in Location Based Social Networks, Non-Monotonically Selected Subset from Feature Clusters
In most cases, feature sets available for machine learning algorithms require a feature engineering approach to pick the subset for optimal performance. During our link prediction research, we had observed the same challenge for features of Location Based Social Networks (LBSNs). We applied multiple reduction approaches to avoid performance issues caused by redundancy and relevance interactions between features. One of the approaches was the custom two-step method; starts with clustering features based on the proposed interaction related similarity measurement and ends with non-monotonically selecting optimal feature subset from those clusters. In this study, we applied well-known generic feature reduction algorithms together with our custom method for LBSNs to evaluate novelty and verify the contributions. Results from multiple data groups depict that our custom feature reduction approach makes higher and more stable effectivity optimizations for link prediction when compared with others.
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