LGCYMLDec 27, 2019

Graduate Employment Prediction with Bias

arXiv:1912.12012v126 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the issue of job market biases for graduating students, offering a personalized intervention approach, though it appears incremental in method.

The paper tackles the problem of predicting graduate employment status by addressing unconscious biases and class imbalance, achieving effective results on a large-scale educational dataset.

The failure of landing a job for college students could cause serious social consequences such as drunkenness and suicide. In addition to academic performance, unconscious biases can become one key obstacle for hunting jobs for graduating students. Thus, it is necessary to understand these unconscious biases so that we can help these students at an early stage with more personalized intervention. In this paper, we develop a framework, i.e., MAYA (Multi-mAjor emploYment stAtus) to predict students' employment status while considering biases. The framework consists of four major components. Firstly, we solve the heterogeneity of student courses by embedding academic performance into a unified space. Then, we apply a generative adversarial network (GAN) to overcome the class imbalance problem. Thirdly, we adopt Long Short-Term Memory (LSTM) with a novel dropout mechanism to comprehensively capture sequential information among semesters. Finally, we design a bias-based regularization to capture the job market biases. We conduct extensive experiments on a large-scale educational dataset and the results demonstrate the effectiveness of our prediction framework.

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