TL;DR
This paper introduces MILK, a multimodality invariant learning framework that enhances new item recommendation by effectively handling missing modalities through invariant learning and data augmentation.
Contribution
The paper proposes a novel invariant learning approach with environment construction and data augmentation to improve new item recommendation under modality missing conditions.
Findings
MILK outperforms existing methods on three real datasets.
The framework effectively handles arbitrary modality missing scenarios.
Experimental results demonstrate improved recommendation accuracy.
Abstract
Multimedia-based recommendation provides personalized item suggestions by learning the content preferences of users. With the proliferation of digital devices and APPs, a huge number of new items are created rapidly over time. How to quickly provide recommendations for new items at the inference time is challenging. What's worse, real-world items exhibit varying degrees of modality missing(e.g., many short videos are uploaded without text descriptions). Though many efforts have been devoted to multimedia-based recommendations, they either could not deal with new multimedia items or assumed the modality completeness in the modeling process. In this paper, we highlight the necessity of tackling the modality missing issue for new item recommendation. We argue that users' inherent content preference is stable and better kept invariant to arbitrary modality missing environments. Therefore,…
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Taxonomy
MethodsMixup
