基于协同过滤的研究生院推荐模型

M. Iyengar, A. Sarkar, Shikhar Singh
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引用次数: 6

摘要

最近,随着完成学士学位后攻读研究生的学生激增,缺乏可以根据个人资料指出大学和项目的开源资源。在本文中,我们提出了一种基于个人整体资料来预测研究生就读大学的新方法。建立了一个模型,该模型能够根据用户资料预测排名前n的大学名单。在我们的实现中,用户简介包括一个人的本科成绩、GRE或GMAT研究生考试成绩、托福等其他考试成绩、研究经历和出版物、工作经历以及相关项目的数量。数据是从各种来源收集的,包括人们的个人资料,他们通过研究生课程,并被输入到模型中,以便作为传入查询的基准。为了让模型预测最适合用户的大学列表,使用协同过滤来比较用户的个人资料和现有数据集。输出是一个大学列表,个人可以根据个人资料申请这些大学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Collaborative Filtering based model for recommending graduate schools
Recently, with the surge of students pursuing graduate studies after completing their bachelors, there is a lack of open source resources which could point out universities and programs, based on an individual's profile. In this paper, we present our novel approach of predicting universities for graduate studies based on one's whole profile. A model is built which is able to predict the list of top-‘n’ universities based on the user profile. In our implementation, a user profile comprises one's undergraduate grades, graduate examination scores of GRE or GMAT, other exams like TOEFL, research experience and publications, work experience, and number of relevant projects. Data is collected from a variety of sources comprising peoples' profiles, who got through to graduate programs and is fed into the model, in order to serve as benchmark for an incoming query. For the model to predict the list of universities best suiting the user, Collaborative Filtering is used in order to compare the user's profile to the existing dataset. The output is a list of universities, to which an individual could apply to, based on the profile.
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