在线文章推荐系统

Vaishali Athawale, Dr. A. S. Alvi
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引用次数: 0

摘要

推荐系统根据用户的习惯或偏好向用户推荐相关的项目。偏好是无法量化的。这是主观问题。一般是通过用户过去消费过的物品来间接衡量。网络上有大量的文本,有许多在线平台提供可供阅读的文本(文章)。这是一个尝试开发一个推荐系统(RecSys),由在线文章服务提供商为最终用户的在线文章阅读提供文章建议。RecSys将在推荐过程中使用协作学习、基于内容的学习以及两者的结合,例如混合学习。在一个文章共享平台服务上对所提出的RecSys进行了测试和训练,结果表明混合学习模型的学习效果优于其他混合学习模型。
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Online Article Recommender System
Recommender System recommends relevant items to users, based on user habits or preference. Preference does not have quantitative measure. It is subjective matter. Generally it indirectly measure by items that consumed by users in past. There is a plethora of text available on the web and there are many online platforms that provide text (article) for reading. This is an attempt to develop a Recommender System (RecSys) for the article suggestion for the online article reading to the end user by the online article service provider. RecSys will use collaborative learning, content-based learning and combination of both, i,e, hybrid learning for the recommendation process. The proposed RecSys is tested and trained on is one article sharing platform service and it has been found that the hybrid learning model performed better than other.
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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