Word Cloud Result of Mobile Payment User Review in Indonesia

Intan Novita Dewi, R. Nurcahyo, Farizal
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引用次数: 8

Abstract

The volume of non-cash transaction grow rapidly all around the world. One of the global growth figures for noncash transactions is driven by the use of mobile payment. In 2018, Indonesia is proven to be a good market for mobile payment and estimated to continue to grow in 2020. This will make competition between mobile payment tougher in Indonesia. Mobile payment companies need to maintain the quality of services and applications in order to meet customer satisfaction. User reviews or complaints expressed on Twitter were used in this study. Pre-processing data is used to convert unstructured and semi-structured text into an understandable format. The Term Frequency matrix is used to calculate the number of occurrences of the token. Word cloud is used to represent the most repeated words that represent the word size. It can be used to find out what services are widely reviewed or complained by customers. The data in this study are tweets with Bahasa Indonesia therefore, the result for word cloud is also in Bahasa Indonesia. The eight frequently used words in the data can be grouped into mobile payment company, monetary rewards, mobile payment transaction and customer service.
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印尼移动支付用户测评的词云结果
非现金交易的数量在全球范围内迅速增长。非现金交易的全球增长数据之一是由移动支付的使用推动的。2018年,印度尼西亚被证明是一个很好的移动支付市场,预计到2020年将继续增长。这将使印尼移动支付之间的竞争更加激烈。移动支付公司需要保持服务和应用的质量,以满足客户的满意度。在这项研究中使用了Twitter上的用户评论或投诉。预处理数据用于将非结构化和半结构化文本转换为可理解的格式。术语频率矩阵用于计算标记的出现次数。单词云用来表示重复次数最多的单词,表示单词的大小。它可以用来找出哪些服务被客户广泛评论或抱怨。本研究的数据是印尼语的推文,因此,单词云的结果也是印尼语。数据中使用频率最高的8个词可以分为移动支付公司、货币奖励、移动支付交易和客户服务。
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