Artificial Intelligence on Job-Hopping Forecasting: AI on Job-Hopping

Nathan Kosylo, John Smith, Matthew Conover, Leong Chan, Hongtao Zhang, Hanfei Mei, Renzhi Cao
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引用次数: 8

Abstract

Artificial Intelligence (AI) technologies have been successfully applied to many fields, such as object detection and speech recognition. Among these applications, few consider cases where some feature values are missing or unreliable, such as in the prediction of job-hopping patterns where many profiles are incomplete, even though these missing features may be important for businesses (e.g. human resources and management). In this paper, we propose a novel AI technology, Sequential Optimization of Naive Bayesian (SONB), which not only makes predictions, but also learns the underlying pattern and automatically estimates missing or unreliable feature values. We analyzed several important job-hopping features and applied it to predict job-hopping patterns on many incomplete profiles. Our experiment shows SONB accurately estimates missing values and achieves state-of-the-art performance. In addition, the accuracy of deep learning is improved by 3% on the new dataset generated by SONB over the raw data. In summary, we introduce a novel AI technology for forecasting, which could also be used to estimate missing values in the input data. It is applied to a large (20,185,365 employee profiles) dataset and successfully predicts job-hopping patterns for employees based on their profiles, which could be a valuable resource for businesses.
关于跳槽预测的人工智能:关于跳槽的人工智能
人工智能(AI)技术已成功应用于许多领域,如物体检测和语音识别。在这些应用程序中,很少考虑到某些特征值缺失或不可靠的情况,例如在预测跳槽模式时,许多配置文件是不完整的,即使这些缺失的特征对业务(例如人力资源和管理)可能很重要。在本文中,我们提出了一种新的人工智能技术,朴素贝叶斯序列优化(SONB),它不仅可以进行预测,还可以学习底层模式并自动估计缺失或不可靠的特征值。我们分析了几个重要的跳槽特征,并将其应用于预测许多不完整配置文件的跳槽模式。我们的实验表明,SONB准确地估计了缺失值,并达到了最先进的性能。此外,在SONB生成的新数据集上,深度学习的准确率比原始数据提高了3%。总之,我们引入了一种新的人工智能预测技术,该技术也可用于估计输入数据中的缺失值。它应用于一个大型(20,185,365个员工档案)数据集,并成功地预测了员工的跳槽模式,这对企业来说可能是一个有价值的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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