计算机科学
客户情报
客户的声音
产品(数学)
客户保留
服务(商务)
客户对客户
特征(语言学)
客户宣传
等级制度
情报检索
知识管理
过程管理
服务质量
工程类
业务
营销
语言学
市场经济
数学
几何学
哲学
经济
作者
Isaac A. Jones,Kyoung‐Yun Kim
出处
期刊:Journal of integrated design & process science
[IOS Press]
日期:2016-01-04
卷期号:19 (2): 25-48
被引量:6
标识
DOI:10.3233/jid-2015-0011
摘要
Online opinions, also referred to as customer reviews, offer a plethora of information from the customer's perspective. By employing methods to extract the customer requirements, product designers are able to better understand the wants and needs of their customers and harness this information to m eet business goals. This paper presents the process of product feature extraction and describes how this information can be used to build a Product Feature Information Hierarchy. This paper also presents a method to extract customer preference sentences from customer review data, and examines the viability of "mapping" the customer review preferences sentences to the 'Product Feature Information Hierarchy' using supervised learning methods. This research utilizes the My Starbucks Idea website as an online customer review site; extracting and manually reviewing over 5,100 customer reviews sentences stored on this website. The reported results provide insight into how a systematic requirement analysis can be realized using unstructured customer review data in the service product domain. Findings from this research suggest customer requirements can be extracted from unstructured text and organized in a structural way, using a Product Feature Information Hierarchy in combination with supervised learning classifiers.
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