聚合预测vs.关系分类的聚合特征

O. Schulte, Kurt Routley
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引用次数: 11

摘要

关系数据分类是在给定目标实体、相关实体或相邻实体以及链接的特征信息的情况下预测目标实体的类标签的问题。本文比较了关系分类的两种基本方法:聚合与目标实例相关的实体的特征,或基于与目标实例相关的每个实体的特征聚合概率预测。我们的实验比较了体育、金融和电影数据上不同的关系分类器。我们从概念上和经验上考察了分数和特征聚合的优缺点。对于特征聚合和分数聚合,单个聚合算子的性能(例如,平均值)在不同数据集之间会有很大差异。聚合特征可以通过学习一组聚合特征来适应数据集。自适应使用,聚合特征优于使用单个固定分数聚合算子的学习。由于分数聚合通常使用单个固定操作符,因此这一发现提出了将分数聚合适应特定数据集的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aggregating predictions vs. aggregating features for relational classification
Relational data classification is the problem of predicting a class label of a target entity given information about features of the entity, of the related entities, or neighbors, and of the links. This paper compares two fundamental approaches to relational classification: aggregating the features of entities related to a target instance, or aggregating the probabilistic predictions based on the features of each entity related to the target instance. Our experiments compare different relational classifiers on sports, financial, and movie data. We examine the strengths and weaknesses of both score and feature aggregation, both conceptually and empirically. The performance of a single aggregate operator (e.g., average) can vary widely across datasets, for both feature and score aggregation. Aggregate features can be adapted to a dataset by learning with a set of aggregate features. Used adaptively, aggregate features outperformed learning with a single fixed score aggregation operator. Since score aggregation is usually applied with a single fixed operator, this finding raises the challenge of adapting score aggregation to specific datasets.
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