Coarse-to-Fine Knowledge-Enhanced Multi-Interest Learning Framework for
Multi-Behavior Recommendation
- URL: http://arxiv.org/abs/2208.01849v2
- Date: Fri, 5 Aug 2022 14:33:29 GMT
- Title: Coarse-to-Fine Knowledge-Enhanced Multi-Interest Learning Framework for
Multi-Behavior Recommendation
- Authors: Chang Meng, Ziqi Zhao, Wei Guo, Yingxue Zhang, Haolun Wu, Chen Gao,
Dong Li, Xiu Li and Ruiming Tang
- Abstract summary: Multi-types of behaviors (e.g., clicking, adding to cart, purchasing, etc.) widely exist in most real-world recommendation scenarios.
The state-of-the-art multi-behavior models learn behavior dependencies indistinguishably with all historical interactions as input.
We propose a novel Coarse-to-fine Knowledge-enhanced Multi-interest Learning framework to learn shared and behavior-specific interests for different behaviors.
- Score: 52.89816309759537
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-types of behaviors (e.g., clicking, adding to cart, purchasing, etc.)
widely exist in most real-world recommendation scenarios, which are beneficial
to learn users' multi-faceted preferences. As dependencies are explicitly
exhibited by the multiple types of behaviors, effectively modeling complex
behavior dependencies is crucial for multi-behavior prediction. The
state-of-the-art multi-behavior models learn behavior dependencies
indistinguishably with all historical interactions as input. However, different
behaviors may reflect different aspects of user preference, which means that
some irrelevant interactions may play as noises to the target behavior to be
predicted. To address the aforementioned limitations, we introduce
multi-interest learning to the multi-behavior recommendation. More
specifically, we propose a novel Coarse-to-fine Knowledge-enhanced
Multi-interest Learning (CKML) framework to learn shared and behavior-specific
interests for different behaviors. CKML introduces two advanced modules, namely
Coarse-grained Interest Extracting (CIE) and Fine-grained Behavioral
Correlation (FBC), which work jointly to capture fine-grained behavioral
dependencies. CIE uses knowledge-aware information to extract initial
representations of each interest. FBC incorporates a dynamic routing scheme to
further assign each behavior among interests. Additionally, we use the
self-attention mechanism to correlate different behavioral information at the
interest level. Empirical results on three real-world datasets verify the
effectiveness and efficiency of our model in exploiting multi-behavior data.
Further experiments demonstrate the effectiveness of each module and the
robustness and superiority of the shared and specific modelling paradigm for
multi-behavior data.
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