基于个性化情感挖掘的新型推荐系统

B. S. S. Govind, Dr. Ramakrishnudu Tene, K. L. Saideep
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引用次数: 7

摘要

像Netflix、亚马逊、Yelp这样的网站都有很多评论和评分。评分通常是1-5分或1颗星。评论是由几个句子组成的自由形式的文本。文本情感分析分类为情感分析研究提供了重要的意见挖掘选项,在情感分析研究中占有举足轻重的地位。利用这些评论和评分,我们可以向他推荐新产品、电影、餐馆。通常,推荐系统通过寻找相似的用户来匹配用户模式,并开发推荐。我们解决了考虑用户个人情绪和判断的问题,使推荐对他更有针对性和有用。在本文中,我们提供了一个使用来自MovieLens数据集的电影的例子。从用户对电影的喜爱程度和偏好的角度来看,使用情感标签和通常的推荐被证明是一种新颖、更直观的方式。我们在Yelp、MovieLens等流行数据集上分析各种方法,如Unigrams、Bigrams、支持向量机、伯努利朴素贝叶斯、随机森林等,以获得情感生成的最佳方法。然后,我们引入了一种结合备用最小二乘(ALS)方法和情感生成的新推荐系统,向用户推荐电影,该系统在MovieLens数据集上的RMSE小于传统模型。
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Novel Recommender Systems Using Personalized Sentiment Mining
Websites like Netflix, Amazon, Yelp have lot of reviews and ratings. Ratings are of usually on a scale of 1-5 points or stars. Reviews are free-form text consisting of a few sentences. Text sentiment analysis classification has occupied a pivotal role in sentiment analysis research as it offers important opinion mining options. Using these reviews and ratings of a person, we can recommend him new products, movies, restaurants. Usually Recommender systems match user patterns by finding similar users and recommendations are developed. We solve the problem of taking into account user’s personal sentiments and judgments making the recommendations more directed and useful to him. In this paper we provide an example using movies from the MovieLens dataset. Making recommendations using sentiment tags along with usual recommendations proves to be a novel and more intuitive way from a user’s likability of the movie and preferences standpoint. We analyze various methods like Unigrams, Bigrams, Support vector machines, Bernoulli Naive Bayes, Random Forests on popular datasets like Yelp, MovieLens to get the best method for sentiment generation. Then we introduce a novel recommendation systems combining the Alternate Least Square (ALS) method and sentiment generation recommending movies to users which proved to give lesser RMSE than traditional models on the MovieLens Dataset.
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