通过使用文本数据挖掘进行情感分析,确定创业公司的关键成功因素

IF 4.9 Q1 BUSINESS
Tina Asgari, A. Daneshvar, Adel Pourghader Chobar, Maryam Ebrahimi, Simon Abrahamyan
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引用次数: 4

摘要

它旨在确定基本的成功因素,这些因素对于初创公司来说是必不可少的,因为他们打算随着时间的推移开发成功和盈利的商业模式。为此,本文试图分析Twitter上用户生成内容(UGC)的情绪。首先,使用三元词云。然后,使用随机森林、支持向量机(SVM)和多层感知器(MLP)等多种预测模型进行情感分析,以测试未标记数据的标记。为了将主题划分为消极、积极和中性情绪,应用了潜在狄利克雷分配(LDA)。结果表明,基于精度准则的MLP方法的精度为0.81,高于其他测试方法。在这方面,随机森林和支持向量机方法的准确率分别为0.78和0.80。为了提高算法的准确性,采用了投票和叠加算法。然而,我们发现,使用投票法得到的结果与使用MLP得到的结果几乎相等,而使用堆叠法得到的结果精度低于这三种方法。利用词云分析发现,最负面的三元组是创业公司在气候变化方面的创新,最积极的三元组是产品营销管理,与商业相关的概念被确定为中性。研究发现,启动加速过程、推动更快的完成、在项目开始时交付最好的产品、糟糕的管理实践以及只关注属性都被归为负面情绪。相反,持续创新的企业计划、有经验的企业家和投资者的存在、新冠病毒(COVID-19)、创新被认为是积极情绪,而中性情绪没有被分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying key success factors for startups With sentiment analysis using text data mining
It is aimed to identify the basic success factors, which are essential for startups as they intend to develop successful and profitable business models over time. To this end, it is attempted to analyze the sentiments on user-generated content (UGC) on Twitter. First, trigram word cloud is used. Then, a sentiment analysis is done with various predictive models including random forest, support-vector machine (SVM) and multilayer perceptron (MLP) to test the labeling of unlabeled data. To divide topics into negative, positive, and neutral sentiments, latent Dirichlet allocation (LDA) has been applied. According to the results, the MLP method on the basis of accuracy criterion offers an accuracy of 0.81, which is higher than other tested methods. In this regard, random forest and SVM methods provide accuracy of 0.78 and 0.80, respectively. Voting and stacking algorithms were used to increase the accuracy of the algorithms. However, it is found that with the use of voting method, the accuracy is almost equal to the results obtained from the MLP and with stacking method the accuracy is less than all three methods. Using word cloud, it is indicated that the most negative trigram is startups innovation regarding climate change, the most positive one is product marketing management and business-related concepts are determined as neutral. It is found that startup acceleration process, pushing for quicker completion, delivering the best product at the beginning of the project, poor management practices, and focusing just on properties are grouped as negative sentiments. On the other hand, sustainable and innovative business plan, the presence of experienced entrepreneurs and investors, coronavirus (COVID-19), and innovation are recognized as positive sentiments, and no analysis is given for neutral sentiments.
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来源期刊
CiteScore
7.50
自引率
6.10%
发文量
17
审稿时长
15 weeks
期刊介绍: The International Journal of Engineering Business Management (IJEBM) is an international, peer-reviewed, open access scientific journal that aims to promote an integrated and multidisciplinary approach to engineering, business and management. The journal focuses on issues related to the design, development and implementation of new methodologies and technologies that contribute to strategic and operational improvements of organizations within the contemporary global business environment. IJEBM encourages a systematic and holistic view in order to ensure an integrated and economically, socially and environmentally friendly approach to management of new technologies in business. It aims to be a world-class research platform for academics, managers, and professionals to publish scholarly research in the global arena. All submitted articles considered suitable for the International Journal of Engineering Business Management are subjected to rigorous peer review to ensure the highest levels of quality. The review process is carried out as quickly as possible to minimize any delays in the online publication of articles. Topics of interest include, but are not limited to: -Competitive product design and innovation -Operations and manufacturing strategy -Knowledge management and knowledge innovation -Information and decision support systems -Radio Frequency Identification -Wireless Sensor Networks -Industrial engineering for business improvement -Logistics engineering and transportation -Modeling and simulation of industrial and business systems -Quality management and Six Sigma -Automation of industrial processes and systems -Manufacturing performance and productivity measurement -Supply Chain Management and the virtual enterprise network -Environmental, legal and social aspects -Technology Capital and Financial Modelling -Engineering Economics and Investment Theory -Behavioural, Social and Political factors in Engineering
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