IRHCSep 2, 2016

Generalized Group Profiling for Content Customization

arXiv:1609.00511v114 citations
Originality Incremental advance
AI Analysis

This addresses the problem of accidental features in group profiles for content customization systems, offering an incremental improvement over existing personalization and customization approaches.

The paper tackles the problem of distinguishing individual user contributions from group characteristics in content customization, proposing a generalized group profiling approach that extracts latent models capturing only essential group features. The method improves customization in contextual suggestion tasks, with results showing that group-based suggestions enhance performance and that group granularity affects profiling quality.

There is an ongoing debate on personalization, adapting results to the unique user exploiting a user's personal history, versus customization, adapting results to a group profile sharing one or more characteristics with the user at hand. Personal profiles are often sparse, due to cold start problems and the fact that users typically search for new items or information, necessitating to back-off to customization, but group profiles often suffer from accidental features brought in by the unique individual contributing to the group. In this paper we propose a generalized group profiling approach that teases apart the exact contribution of the individual user level and the "abstract" group level by extracting a latent model that captures all, and only, the essential features of the whole group. Our main findings are the followings. First, we propose an efficient way of group profiling which implicitly eliminates the general and specific features from users' models in a group and takes out the abstract model representing the whole group. Second, we employ the resulting models in the task of contextual suggestion. We analyse different grouping criteria and we find that group-based suggestions improve the customization. Third, we see that the granularity of groups affects the quality of group profiling. We observe that grouping approach should compromise between the level of customization and groups' size.

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