Consistency-Aware Recommendation for User-Generated Item List Continuation

Yun He, Yin Zhang, Weiwen Liu, James Caverlee
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引用次数: 23

Abstract

User-generated item lists are popular on many platforms. Examples include video-based playlists on YouTube, image-based lists (or "boards") on Pinterest, book-based lists on Goodreads, and answer-based lists on question-answer forums like Zhihu. As users create these lists, a common challenge is in identifying what items to curate next. Some lists are organized around particular genres or topics, while others are seemingly incoherent, reflecting individual preferences for what items belong together. Furthermore, this heterogeneity in item consistency may vary from platform to platform, and from sub-community to sub-community. Hence, this paper proposes a generalizable approach for user-generated item list continuation. Complementary to methods that exploit specific content patterns (e.g., as in song-based playlists that rely on audio features), the proposed approach models the consistency of item lists based on human curation patterns, and so can be deployed across a wide range of varying item types (e.g., videos, images, books). A key contribution is in intelligently combining two preference models via a novel consistency-aware gating network -- a general user preference model that captures a user's overall interests, and a current preference priority model that captures a user's current (as of the most recent item) interests. In this way, the proposed consistency-aware recommender can dynamically adapt as user preferences evolve. Evaluation over four datasets (of songs, books, and answers) confirms these observations and demonstrates the effectiveness of the proposed model versus state-of-the-art alternatives. Further, all code and data are available at https://github.com/heyunh2015/ListContinuation_WSDM2020.
用户生成的项目列表延续的一致性建议
用户生成的物品列表在许多平台上都很流行。例子包括YouTube上基于视频的播放列表,Pinterest上基于图像的列表(或“板”),Goodreads上基于书籍的列表,以及知乎等问答论坛上基于答案的列表。当用户创建这些列表时,一个常见的挑战是确定接下来要整理哪些项目。一些列表是围绕特定的类型或主题组织的,而另一些似乎是不连贯的,反映了个人对项目归属的偏好。此外,项目一致性的异质性可能因平台和子社区而异。因此,本文提出了一种一般化的用户生成项目列表延拓方法。作为利用特定内容模式的方法的补充(例如,依赖于音频特征的基于歌曲的播放列表),所提出的方法基于人类管理模式对项目列表的一致性进行建模,因此可以部署在广泛的不同项目类型(例如,视频,图像,书籍)中。一个关键的贡献是通过一个新颖的一致性感知门控网络智能地组合了两个偏好模型——一个捕获用户整体兴趣的一般用户偏好模型,和一个捕获用户当前(截至最近的项目)兴趣的当前偏好优先级模型。通过这种方式,所提出的一致性感知推荐器可以随着用户偏好的变化而动态调整。对四个数据集(歌曲、书籍和答案)的评估证实了这些观察结果,并证明了所提出的模型与最先进的替代方案相比的有效性。此外,所有代码和数据都可以在https://github.com/heyunh2015/ListContinuation_WSDM2020上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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