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gOCCF: Graph-Theoretic One-Class Collaborative Filtering Based on Uninteresting Items

机译:goccf:基于无趣的项目的图形 - 理论单级协作筛选

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摘要

We investigate how to address the shortcomings of the popular One-Class Collaborative Filtering (OCCF) methods in handling challenging "sparse" dataset in one-class setting (e.g., clicked or bookmarked), and propose a novel graph-theoretic OCCF approach, named as gOCCF, by exploiting both positive preferences (derived from rated items) as well as negative preferences (derived from unrated items). In capturing both positive and negative preferences as a bipartite graph, further, we apply the graph shattering theory to determine the right amount of negative preferences to use. Then, we develop a suite of novel graph-based OCCF methods based on the random walk with restart and belief propagation methods. Through extensive experiments using 3 real-life datasets, we show that our gOCCF effectively addresses the sparsity challenge and significantly outperforms all of 8 competing methods in accuracy on very sparse datasets while providing comparable accuracy to the best performing OCCF methods on less sparse datasets. The datasets and implementations used in the empirical validation are available for access: https://goo.gl/sfiawn.
机译:我们调查如何在单级设置中处理充满挑战的“稀疏”数据集(例如,点击或书签),并提出一种新颖的Graph-MoreCoric Incf方法,命名为作为GOCCF,通过利用正面偏好(来自额定物品)以及负偏好(来自未分类的项目)。进一步捕获阳性和负偏好作为二分图,我们应用了图形破碎理论以确定要使用的适量的负面偏好。然后,我们开发了一套基于随机散步的基于新的基于图形的Incf方法,重启和信仰传播方法。通过使用3个现实生活数据集的广泛实验,我们表明我们的GoCCF有效地解决了稀疏性挑战,并在非常稀疏的数据集上精确地表现了8个竞争方法,同时为更稀疏的数据集提供了可比的精度。实证验证中使用的数据集和实现可用于访问:https://goo.gl/sfiawn。

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