DisCo: Towards Harmonious Disentanglement and Collaboration between Tabular and Semantic Space for Recommendation
Recommender systems play important roles in various applications such as e-commerce, social media, etc. Conventional recommendation methods usually model the collaborative signals within the tabular representation space. Despite the personalization modeling and the efficiency, the latent semantic de...
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Zusammenfassung: | Recommender systems play important roles in various applications such as
e-commerce, social media, etc. Conventional recommendation methods usually
model the collaborative signals within the tabular representation space.
Despite the personalization modeling and the efficiency, the latent semantic
dependencies are omitted. Methods that introduce semantics into recommendation
then emerge, injecting knowledge from the semantic representation space where
the general language understanding are compressed. However, existing
semantic-enhanced recommendation methods focus on aligning the two spaces,
during which the representations of the two spaces tend to get close while the
unique patterns are discarded and not well explored. In this paper, we propose
DisCo to Disentangle the unique patterns from the two representation spaces and
Collaborate the two spaces for recommendation enhancement, where both the
specificity and the consistency of the two spaces are captured. Concretely, we
propose 1) a dual-side attentive network to capture the intra-domain patterns
and the inter-domain patterns, 2) a sufficiency constraint to preserve the
task-relevant information of each representation space and filter out the
noise, and 3) a disentanglement constraint to avoid the model from discarding
the unique information. These modules strike a balance between disentanglement
and collaboration of the two representation spaces to produce informative
pattern vectors, which could serve as extra features and be appended to
arbitrary recommendation backbones for enhancement. Experiment results validate
the superiority of our method against different models and the compatibility of
DisCo over different backbones. Various ablation studies and efficiency
analysis are also conducted to justify each model component. |
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DOI: | 10.48550/arxiv.2406.00011 |