Comparative analysis of MCDM methods for product aspect ranking: TOPSIS and VIKOR

Saif A. Ahmad Alrababah, K. H. Gan, T. Tan
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引用次数: 13

Abstract

The extracted product aspects (like “battery life”, “zoom”) from online customer reviews are dissimilar in their significances, some of these aspects have a great influence on the potential customer's decision likewise on the businesses' strategies for product enhancements. Supporting the probable customers with a list of the most representative product aspects will assist their purchasing decision and facilitate the comparative process among the presented products. For the firms, identifying critical product aspects creates a new perspective of product manufacturing and marketing strategies to be competitive and innovative. However the manual identification of the most representative product aspects from the huge amounts of the extracted product aspects in online reviews is a tedious and time-consuming task. Thus, ranking the extracted aspects becomes a necessity to identify the important product aspects mentioned in the customer reviews. The purpose of this study is to formulate the product aspect ranking problem as a decision making process using Multi-Criteria Decision Making (MCDM). In response, a comparative analysis between two different MCDM ranking approaches, namely; TOPSIS and VIKOR has been conducted to investigate their performances in prioritizing the most important product aspects in customer reviews. The experimental results on different product reviews demonstrate the effectiveness of these two methods in prioritizing the genuine product aspects in customer feedback.
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产品方面排序的MCDM方法TOPSIS与VIKOR的比较分析
从在线客户评论中提取的产品方面(如“电池寿命”,“变焦”)在其意义上是不同的,其中一些方面对潜在客户的决策有很大的影响,同样对企业的产品增强策略也有很大的影响。为潜在客户提供一份最具代表性的产品方面的清单,将有助于他们做出购买决策,并促进所提供产品之间的比较过程。对于公司来说,识别关键的产品方面创造了产品制造和营销策略的新视角,以具有竞争力和创新性。然而,从在线评论中提取的大量产品方面中手动识别最具代表性的产品方面是一项繁琐且耗时的任务。因此,对所提取的方面进行排序是必要的,以确定客户评论中提到的重要产品方面。本研究的目的是利用多准则决策(MCDM)将产品方面排序问题表述为一个决策过程。为此,对两种不同的MCDM排序方法进行了比较分析,即;TOPSIS和VIKOR已经进行了调查,以调查他们在客户评论中优先考虑最重要的产品方面的表现。不同产品评论的实验结果表明,这两种方法在客户反馈中优先考虑正品方面是有效的。
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