User Feedback based Recommendation Engine using Neural Network

Somsankar Mookherji, Siddhant Patil
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引用次数: 1

Abstract

With a paradigm shift of focus towards user behavior in today’s E-commerce driven contemporary world there is a need for an efficient and portable learning methodology for machines so as to serve a particular user or a fraternity of users collectively based on knowledge acquired on interests of a pool of users. However, any data driven or data sourced Engine can be contaminated by redundant entries or bogus feedback to jack up or scale down a particular commodity on offer so as to facilitate the promotion of another one in it’s stead. This calls for the implementation of a Neural Network which familiarizes itself with the most popular user choices by virtue of user provided ratings and Machine Learning uses a Support Vector Machine model for filtering time-stamps and IP addresses associated with each user interaction with the system to nullify attempts at manipulating said user feedback or rating by miscreants that could affect recommendation of popular choices explicitly.A Neural Network using 12 Neurons representing various dimensions of a user commodity in form a theme or a colour coded scheme is used on which a rating system is laden for user to provide feedback. This feedback is used to provide unsupervised learning. The monitoring of time-stamps and IP addresses of each user feedback is done by using a supervised learning technique. This makes the model a semi-supervised one in it’s entirety which is the best approach. The Neural Network furthermore adopts a layered learning approach where it uses the ratings provided by the users to learn which fore-ground colour contrasts best with which background colour.In this research a comprehensive study of 10 relevant papers has been made to highlight and discover the scope of research and key challenges to the already existing systems in employment by various entities to serve a similar purpose.
基于用户反馈的神经网络推荐引擎
在今天的电子商务驱动的当代世界中,随着对用户行为的关注范式的转变,需要一种高效且可移植的机器学习方法,以便根据用户群体的兴趣获得的知识为特定用户或用户群体提供服务。然而,任何数据驱动或数据源引擎都可能被多余的条目或虚假的反馈所污染,从而增加或减少特定商品的供应,从而促进另一种商品的推广。这需要实现一个神经网络,它通过用户提供的评级来熟悉最受欢迎的用户选择,机器学习使用支持向量机模型来过滤与每个用户与系统交互相关的时间戳和IP地址,以消除操纵用户反馈或评级的企图,这些企图可能会影响流行选择的推荐。使用一个神经网络,使用12个神经元代表用户商品的不同维度,以主题或颜色编码方案的形式使用,并在此基础上加载评级系统,供用户提供反馈。这种反馈用于提供无监督学习。通过使用监督学习技术对每个用户反馈的时间戳和IP地址进行监控。这使得整个模型成为半监督模型,这是最好的方法。神经网络进一步采用了一种分层学习方法,它使用用户提供的评级来学习哪种前景颜色与哪种背景颜色对比最好。在本研究中,对10篇相关论文进行了全面研究,以突出和发现研究的范围,以及各种实体为实现类似目的而就业的现有系统面临的关键挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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