使用时间序列表示、符号序列和深度学习预测用户点击流:在工作机会推荐任务中的应用

Sidahmed Benabderrahmane, N. Mellouli, M. Lamolle
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引用次数: 3

摘要

在过去十年中,自动电子招聘系统的扩展导致了专门用于发布工作机会的网络渠道(招聘板)的倍增。在成本控制至关重要的战略和经济背景下,为给定的新工作机会确定相关的工作板是必要的。这项工作的目的是展示我们最近在一个新的工作板推荐系统上获得的结果,该系统是一个决策工具,旨在指导招聘人员在互联网上发布工作。首先,求职者在各种招聘板上的点击流历史记录存储在一个大型学习数据库中,然后表示为时间序列。其次,使用深度神经网络架构来预测求职板上点击的未来价值。第三,采用并行降维技术,将多变量数值时间序列转化为时间符号序列。然后使用ngram来预测每个序列的未来符号。最后,通过最大化两种表现形式的点击流预测来保持排名靠前的招聘板列表。我们的实验是在一个真实的数据集上进行测试的,这个数据集来自一个工业合作伙伴的招聘数据库。有希望的结果表明,使用深度学习,推荐系统优于标准的多变量模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the Users' Clickstreams Using Time Series Representation, Symbolic Sequences, and Deep Learning: Application on Job Offers Recommendation Tasks
During the last decade, the expansion of automatic e-recruitment systems has led to the multiplication of web channels (job boards) that are dedicated to job offers disseminations. In a strategic and economic context where cost control is fundamental, the identification of the relevant job board for a given new job offers has become necessary. The purpose of this work is to present the recent results that we have obtained on a new job board recommendation system that is a decisionmaking tool intended to guide recruiters while they are posting a job on the Internet. First, the job applicant clickstreams history on various job boards are stored in a large learning database, and then represented as time series. Second, a deep neural network architecture is used to predict future values of the clicks on the job boards. Third, and in a parallel way, dimensionality reduction techniques are used to transform the clicks multivariate numerical time series into temporal symbolic sequences. Ngrams are then used to predict future symbols for each sequence. Finally, a list of top ranked job boards are kept by maximizing the clickstreams forecasting in both representations. Our experiments are tested on a real dataset, coming from a job-posting database of an industrial partner. The promising results have shown that using deep learning, the recommendation system outperforms standard multivariate models.
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