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引用次数: 0
摘要
申请大学入学的学生很难理解他们是否有很好的机会被大学录取。为了关注这一点,我们使用了逻辑回归技术,该技术在软件工程领域获得了关注,因为它具有用于预测的能力。这是一项关于大学录取预测器的新颖工作,学生可以用它来评估他们被大学录取的竞争力。这是通过收集真实的学生数据来开发的。数据以可用的训练数据的形式存储,用于逻辑回归分类器的开发,以进行入学预测。我们使用Selenium web scraper从互联网上收集数据。本文对该方法、实施方法和面临的挑战进行了深入探讨。
University Admissions Predictor Using Logistic Regression
Students applying for admissions to universities find it difficult to understand whether they have good chances of getting admission in a university or not. Keeping this in focus, we have used logistic regression techniques that have gained attention in software engineering field for its ability to be used for predictions. This is a novel work on a university admissions predictor using which students can evaluate their competitiveness for getting admission at a university. This is developed by collecting real student data. The data is stored in a form of a usable training data for the logistic regression classifier developed to make admissions predictions. We have collected the data from the Internet using a Selenium web scraper. The paper intensely discusses the methods, implementation and challenges faced in the process.