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Recommendation Systems for Markets with Two Sided Preferences

机译:具有两方面偏好的市场推荐系统

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In recent times we have witnessed the emergence of large online markets with two-sided preferences that are responsible for businesses worth billions of dollars. Recommendation systems are critical components of such markets. It is to be noted that the matching in such a market depends on the preferences of both sides, consequently, the construction of a recommendation system for such a market calls for consideration of preferences of both sides. The online dating market, and the online freelancer market are examples of markets with two-sided preferences. Recommendation systems for such markets are fundamentally different from typical rating based product recommendations. We pose this problem as a bipartite ranking problem. There has been extensive research on bipartite ranking algorithms. Typically, generalized linear regression models are popular methods of constructing such ranking on account of their ability to be learned easily from big data, and their computational simplicity on engineering platforms. However, we show that for markets with two sided preferences, one can improve the AUC (Area Under the receiver operator Curve) score by considering separate models for preferences of both the sides and constructing a two layer architecture for ranking. We call this a two-level model algorithm. For both synthetic and real data we show that the two-level model algorithm has a better AUC performance than the direct application of a generalized linear model such as L logistic regression or an ensemble method such as random forest algorithm. We provide a theoretical justification of AUC optimality of two-level model and pose a theoretical problem for a more general result.
机译:最近,我们目睹了大型在线市场的出现,双面偏好是负责数十亿美元的企业负责。推荐系统是此类市场的关键组成部分。应注意,在这种市场中的匹配取决于双方的偏好,因此,建议推荐系统,以便考虑双方的偏好。在线约会市场和在线自由职业者市场是具有双面偏好的市场的例子。此类市场的推荐系统与基于典型评级的产品建议根本不同。我们将此问题构成为双头排名问题。对二分排名算法进行了广泛的研究。通常,概括的线性回归模型是根据能够从大数据中容易学习的能力,以及它们在工程平台上的计算简单,是构建这种等级的流行方法。然而,我们表明,对于具有双面偏好的市场,可以通过考虑侧面的偏好和构建用于排名的两层架构来改进接收器操作员曲线中的AUC(接收器运营商曲线下的区域)。我们称之为两级模型算法。对于合成和实际数据来说,我们表明,两级模型算法具有比直接应用更好的AUC性能,例如L Logistion回归或诸如随机林算法的集合方法。我们提供了两级模型的AUC最优性的理论辩护,并为更一般的结果构成了理论问题。

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