基于贝叶斯模型的机器学习候选推荐系统

Gesmond George Manuval, Thomas T George, Bilha P Aby, Mohith Mathew, Ayush Sarath Chandran, N. Jayapandian
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引用次数: 0

摘要

由于协同过滤,推荐书籍、音乐、电影和其他媒体的在线网站正变得越来越普遍。这个在线网站正在使用许多算法来提供更好的推荐来吸引客户。贝叶斯统计是一种基于贝叶斯定理的数据分析技术,它使用可观测数据来更新统计模型的参数。讨论一种称为基于项目的协同过滤的策略,该策略基于所述对象之间的相似性进行预测。使用基于机器学习的候选推荐系统,该系统使用贝叶斯模型数据库来评估所提出的方法。实际结果表明,对于基于相关性的协同过滤,我们提出的贝叶斯技术优于传统算法。还讨论了一种提高预测精度的技术,该技术将简单贝叶斯分类器与基于用户和项目的协同过滤相结合。一旦用户-项目评分矩阵被基于项目的过滤器生成的伪分数填满,基于用户的推荐就被应用到矩阵中。该模型证明了组合推荐方法优于单个协同推荐方法。基于UI的web应用程序的创建将帮助学生管理成绩细节。求职者和管理员将获得一个单独的格式版本的应用程序,学生可以上传和查看他们的证书,其中管理员可以访问学生的成就详细信息分类的不同参数。该模型是在服务学习计划下开发的,对求职者和招聘人员都有好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Candidate Recommendation System using Bayesian Model
Online websites that recommend books, music, movies, and other media are becoming increasingly prevalent because of collaborative filtering. This online websites are using many algorithms to provide the better recommendation to attract the customer. Bayesian statistics, which is based on Bayes' theorem, is a technique for data analysis in which observable data are used to update the parameters of a statistical model. To discuss a strategy called item-based collaborative filtering, which bases predictions on the similarities between the said objects. This uses Machine Learning based Candidate Recommendation System which uses Bayesian Model database to assess the proposed method. The actual results show that for collaborative filtering which is based on correlation, the Bayesian techniques we have proposed outperform traditional algorithms. Also discuss a technique for improving prediction accuracy that combines the Simple Bayesian Classifier with user- and item-based collaborative filtering. The user-based recommendation is then applied to the matrix once the user-item rating matrix has been filled out with pseudo-scores produced by the item-based filter. This model is demonstrated that the combined approach outperforms the individual collaborative recommendation approach. The creation of UI based web application will help Students to manage achievement details. Job seekers and admin will be given a separately formatted version of the application where, students can upload and view their certificate, wherein admin can access student achievement details categorized by different parameters. This proposed model is developed under the service learning scheme to benefit both job seeker and recruiter.
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