Person-job fit is the core technique of online recruitment platforms, which can improve the efficiency of recruitment by accurately matching the job positions with the job seekers. Existing works mainly focus on modeling the unidirectional process or overall matching. However, recruitment is a two-way selection process, which means that both candidate and employer involved in the interaction should meet the expectation of each other, instead of unilateral satisfaction. In this paper, we propose a dual-perspective graph representation learning approach to model directed interactions between candidates and jobs. To model the two-way selection preference from the dual-perspective of job seekers and employers, we incorporate two different nodes for each candidate (or job) and characterize both successful matching and failed matching via a unified dual-perspective interaction graph. To learn dual-perspective node representations effectively, we design an effective optimization algorithm, which involves a quadruple-based loss and a dual-perspective contrastive learning loss. Extensive experiments on three large real-world recruitment datasets have shown the effectiveness of our approach.
翻译:适合个人工作是在线招聘平台的核心技术,它可以通过准确地将职位与求职者相匹配来提高招聘效率,现有工作主要侧重于单向过程或总体匹配的模型化,但征聘是一个双向选择过程,这意味着参与互动的候选人和雇主都应满足彼此的期望,而不是单方面满意。在本文中,我们建议对候选人与工作之间的定向互动模式采用双视图解析学习方法。从求职者和雇主的双向选择模式中模拟双向选择偏好,我们为每个候选人(或工作)采用两种不同的节点,并通过一个统一的双向互动图来描述成功匹配和失败匹配的特点。为了有效地学习双视中心代表,我们设计了一种有效的优化算法,其中涉及四重损失和双视反向学习损失。关于三个大型真实世界招聘数据集的广泛实验显示了我们的方法的有效性。