论文标题
检测推荐系统的有益特征相互作用
Detecting Beneficial Feature Interactions for Recommender Systems
论文作者
论文摘要
特征互动对于达到推荐系统的高精度至关重要。许多研究都考虑到每对特征之间的相互作用。但是,这是次优的,因为某些特征相互作用可能与建议结果无关,并且考虑到它们可能会引入噪声并降低建议精度。为了充分利用特征相互作用,我们提出了一种图形神经网络方法,以有效地对其进行建模,并与一种新型技术一起自动检测那些在建议准确性方面有益的特征相互作用。自动特征相互作用检测是通过L0激活正则化的边缘预测实现的。我们提出的模型被证明是通过信息瓶颈原理和统计相互作用理论有效的。实验结果表明,我们的模型(i)在准确性方面优于现有基准,并且(ii)自动识别有益特征的相互作用。
Feature interactions are essential for achieving high accuracy in recommender systems. Many studies take into account the interaction between every pair of features. However, this is suboptimal because some feature interactions may not be that relevant to the recommendation result, and taking them into account may introduce noise and decrease recommendation accuracy. To make the best out of feature interactions, we propose a graph neural network approach to effectively model them, together with a novel technique to automatically detect those feature interactions that are beneficial in terms of recommendation accuracy. The automatic feature interaction detection is achieved via edge prediction with an L0 activation regularization. Our proposed model is proved to be effective through the information bottleneck principle and statistical interaction theory. Experimental results show that our model (i) outperforms existing baselines in terms of accuracy, and (ii) automatically identifies beneficial feature interactions.