分析推荐系统并使用标签应用基于位置的方法

Saurabh Bahulikar
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引用次数: 4

摘要

在过去的几十年里,由于万维网的可访问性的增加,数据每天都在大规模地产生。当最终用户试图访问这些数据时,可用的各种选项使得在各种产品中进行选择变得困难。为了简化这一过程,我们设计了推荐系统。在本文中,我们分析了这些推荐系统是如何产生的,它们的功能以及这个想法是如何塑造数据科学的世界的。我们分析了一些使用的突出技术,如基于内容的、协作的和混合的推荐。标签已经成为数据科学中的一个重要工具,它可以用来收集用户的隐式数据并生成推荐。本文提出了这样一种方法,其动机是观察到通过分析用户所做的标记可以生成许多有效的推荐。大部分工作都是基于用户的反馈,他们倾向于使用标签功能,主要是在社交媒体平台上。基于标签的推荐也是通过考虑使用基于位置的服务的用户之间的模式而生成的。计算他们的互联网浏览偏好和收集的标签信息之间的相似性,可以向用户提出准确的推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing recommender systems and applying a location based approach using tagging
In the past few decades, due to the increase in the accessibility of the world wide web, data is being generated on a large scale, everyday. When the end user tries to access this data, the available variety of options make it a difficult task to choose amongst various products. In order to simplify this process, Recommender Systems were designed. In this paper, we have analyzed how these Recommender Systems came into existence, their functionalities and how this idea is shaping the world of data science. We analyzed few of the prominent techniques used, such as Content based, Collaborative and Hybrid recommendations. Tagging has become an important tool in Data Science, which can be used to collect implicit data of users and generate recommendations. The paper proposes such an approach which is motivated by observing that many effective recommendations can be generated by analyzing the tagging done by the users. Most of the work is based on the feedback from users having a tendency to use the tagging feature, mostly on social media platforms. The tag based recommendations are also generated by taking into consideration a pattern between users who use location-based services. Counting in the similarities between their Internet browsing preferences and the tag information collected, accurate recommendations can be suggested to the users.
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