TL;DR
This paper introduces BISTRO, a session-based framework that effectively models user preference drift in job recommendation systems by fusing semantic and behavioral data, improving recommendation accuracy.
Contribution
It presents a novel fusion learning approach with hypergraph wavelet filtering and session-based analysis to adapt to user preference changes in real-time.
Findings
BISTRO outperforms existing methods on three real-world datasets.
It achieves higher recommendation accuracy in online recruitment experiments.
The framework effectively captures and adapts to user preference drift.
Abstract
Job recommender systems are crucial for aligning job opportunities with job-seekers in online job-seeking. However, users tend to adjust their job preferences to secure employment opportunities continually, which limits the performance of job recommendations. The inherent frequency of preference drift poses a challenge to promptly and precisely capture user preferences. To address this issue, we propose a novel session-based framework, BISTRO, to timely model user preference through fusion learning of semantic and behavioral information. Specifically, BISTRO is composed of three stages: 1) coarse-grained semantic clustering, 2) fine-grained job preference extraction, and 3) personalized top- job recommendation. Initially, BISTRO segments the user interaction sequence into sessions and leverages session-based semantic clustering to achieve broad identification of person-job matching.…
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