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Systematic Biases in Link Prediction: Comparing Heuristic and Graph Embedding Based Methods

机译:链接预测中的系统偏见:基于启发式和图嵌入的方法比较

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Link prediction is a popular research topic in network analysis. In the last few years, new techniques based on graph embedding have emerged as a powerful alternative to heuristics. In this article, we study the problem of systematic biases in the prediction, and show that some methods based on graph embedding offer less biased results than those based on heuristics, despite reaching lower scores according to usual quality scores. We discuss the relevance of this finding in the context of the filter bubble problem and the algorithmic fairness of recommender systems.
机译:链接预测是网络分析中一个流行的研究主题。在过去的几年中,基于图嵌入的新技术已经成为启发式方法的有力替代方案。在本文中,我们研究了预测中的系统偏差问题,并表明,尽管根据常规质量得分得出的得分较低,但基于图嵌入的某些方法提供的偏差结果要少于基于启发式方法的结果。我们将在滤泡问题和推荐系统的算法公平性的背景下讨论这一发现的相关性。

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