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A machine learning approach to product review disambiguation based on function, form and behavior classification

机译:基于功能,形式和行为分类的机器学习方法用于产品评论消歧

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Online product reviews have been shown to be a viable source of information for helping customers make informed purchasing decisions. In many cases, users of online shopping platforms have the ability to rate products on a numerical scale, and also provide textual feedback pertaining to a purchased product Beyond using online product review platforms as customer decision support systems, this information rich data source could also aid designers seeking to increase the chances of their products being successful in the market through a deeper understanding of market needs. However, the increasing size and complexity of products on the market makes manual analysis of such data challenging. Information obtained from such sources, if not mined correctly, risks misrepresenting a product's true success/failure (e.g., a customer leaves a one star rating because of the slow shipping service of a product, not necessarily that he/she dislikes the product). The objective of this paper is three fold: i) to propose a machine learning approach that disambiguates online customer review feedback by classifying them into one of three direct product characteristics (i.e., form, function or behavior) and two indirect product characteristics (i.e., service and other), ii) to discover the machine learning algorithm that yields the highest and most generalizable results in achieving objective i) and iii) to quantify the correlation between product ratings and direct and indirect product characteristics. A case study involving review data for products mined from e-commerce websites is presented to demonstrate the validity of the proposed method. A multilayered (i.e., k-fold and leave one out) validation approach is presented to explore the generalizability of the proposed method. The resulting machine learning model achieved classification accuracies of 82.44% for within product classification, 80.84% for across product classification, 79.03% for across product type classification and 80.64% for across product domain classification. Furthermore, it was determined that the form of a product had the highest Pearson Correlation Coefficient relating to a product's star rating, with a value of 0.934. The scientific contributions of this work have the potential to transform the manner in which both product designers and customers incorporate product reviews into their decision making processes by quantifying the relationship between product reviews and product characteristics. (C) 2017 Elsevier B.V. All rights reserved.
机译:在线产品评论已被证明是可帮助客户做出明智的购买决定的可行信息来源。在许多情况下,在线购物平台的用户具有对产品进行数字评分的能力,还可以提供与购买产品有关的文本反馈。除了使用在线产品评论平台作为客户决策支持系统之外,该信息丰富的数据源还可以提供帮助设计师希望通过对市场需求的深入了解来增加其产品在市场上获得成功的机会。但是,市场上产品尺寸和复杂性的增加使得对此类数据进行手动分析具有挑战性。从此类来源获得的信息(如果未正确挖掘)可能会误解产品的真实成功/失败情况(例如,由于产品的运输速度慢,客户留下一颗星的评价,不一定表示他/她不喜欢该产品)。本文的目标是三个方面:i)提出一种机器学习方法,通过将在线客户评论反馈分为三个直接产品特征(即形式,功能或行为)和两个间接产品特征(即,服务和其他),ii)发现机器学习算法,该算法在实现目标i)和iii)时可以得出最高和最普遍的结果,以量化产品等级与直接和间接产品特性之间的相关性。案例研究涉及从电子商务网站中提取的产品的评论数据,以证明该方法的有效性。提出了一种多层的(即k折并保留一个)验证方法来探索所提出方法的通用性。最终的机器学习模型在产品分类中实现了82.44%的分类精度,在整个产品分类中实现了80.84%,在整个产品类型分类中实现了79.03%,在整个产品领域分类中实现了80.64%。此外,确定产品的形式具有与产品星级相关的最高皮尔逊相关系数,值为0.934。这项工作的科学贡献可能通过量化产品评论与产品特征之间的关系,来改变产品设计师和客户将产品评论纳入其决策过程的方式。 (C)2017 Elsevier B.V.保留所有权利。

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