使用交替最小二乘法在Apache Spark上构建的大规模食物推荐

Yashvanth Kumar Guntupalli, Vemula Sai Saketh, S. Amudheswaran, Devashish S Vaishnav
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引用次数: 0

摘要

推荐系统是一种信息过滤应用程序,它通过考虑用户之前的判断来预测用户的评分。这些系统是最先进的应用的一个广泛方面。互联网上高度可访问的数据在这些系统中起着主导作用。协同过滤是构建推荐系统的一种机制,它与渐近渐近算法相结合,具有惊人的效果。这是因为ALS的两步迭代矩阵分解方法。这个推荐系统是在Apache Spark上使用Amazon食品评论构建的,它服务于一个主节点和几个从节点。PySpark的ml库被用来构建ALS模型,RDD被用来处理大量的数据。组成超过50个等级的模型,即所选特征的总数。然后推荐用户最喜欢的3种产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Scale Food Recommendation Built on Apache Spark using Alternating Least Squares
Recommendation system is an information filtering application which anticipates the user's ratings by considering their previous judgements. These systems are an extensive aspect of most state-of-the-art applications. The highly accessible data on the internet is playing a dominant role in these systems. Collaborative filtering is one of the mechanisms of building a recommendation system which when fabricated with the ALS algorithm promises stunning results. This is because of the two-step iterative matrix factorisation approach of ALS. This recommendation system has been built using Amazon food product reviews on Apache Spark by servicing a master and few slave nodes. PySpark's ml library has been used for constructing the ALS model and RDD were utilised for handling the colossal amount of data. Composing the model over 50 ranks i.e., the total count of features chosen. Then the top 3 products which the user might prefer will be recommended.
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