论文标题
深度统一表示异质建议
Deep Unified Representation for Heterogeneous Recommendation
论文作者
论文摘要
推荐系统在学术界和行业中都是广泛研究的任务。先前的工作主要集中在同质建议上,而对于异质推荐系统,几乎没有取得进展。但是,如今,建议不同类型的物品,包括产品,视频,名人购物笔记等不同类型的物品,如今是占主导地位。最先进的方法无法从不同类型的项目中利用属性,因此遭受了数据稀疏问题的困扰。代表共同代表不同特征空间的项目确实很具有挑战性。为了解决这个问题,我们提出了一个基于内核的神经网络,即用于异质建议的深层统一表示(或持续时间),以共同模拟异质项目的统一表示,同时保留其原始的特征空间拓扑结构。从理论上讲,我们证明了所提出的模型的表示能力。此外,我们在现实世界数据集上进行了广泛的实验。实验结果表明,在统一表示方面,我们的模型在现有最新模型上实现了显着的改进(例如,AUC得分的4.1%〜34.9%的提升,在线CTR提升3.7%)。
Recommendation system has been a widely studied task both in academia and industry. Previous works mainly focus on homogeneous recommendation and little progress has been made for heterogeneous recommender systems. However, heterogeneous recommendations, e.g., recommending different types of items including products, videos, celebrity shopping notes, among many others, are dominant nowadays. State-of-the-art methods are incapable of leveraging attributes from different types of items and thus suffer from data sparsity problems. And it is indeed quite challenging to represent items with different feature spaces jointly. To tackle this problem, we propose a kernel-based neural network, namely deep unified representation (or DURation) for heterogeneous recommendation, to jointly model unified representations of heterogeneous items while preserving their original feature space topology structures. Theoretically, we prove the representation ability of the proposed model. Besides, we conduct extensive experiments on real-world datasets. Experimental results demonstrate that with the unified representation, our model achieves remarkable improvement (e.g., 4.1% ~ 34.9% lift by AUC score and 3.7% lift by online CTR) over existing state-of-the-art models.