Simplifying Sentiment Analysis on Social Media: A Step-by-Step Approach

IF 4 Q2 BUSINESS
X. Chau, Thanh Toan Nguyen, Jun Jo, S. Quach, L. Ngo, H. Pham, Park Thaichon
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引用次数: 0

Abstract

This tutorial presents a systematic guide to performing sentiment analysis on social media data, designed to be accessible to researchers and marketers with varying levels of data science expertise. We prioritise open science by providing comprehensive resources, including self-collected data, source code and guidelines, facilitating result reproduction. For marketing and business researchers without programming experience, this tutorial offers a robust resource for conducting sentiment analysis. Experienced data scientists can use it as a reference for evaluating cutting-edge approaches and streamlining the sentiment analysis process. Our work stands out in its unique perspective on the challenges and opportunities of sentiment analysis within the social media data domain. We delve into the potential of sentiment analysis for social media marketing, offering practical guidance and best practices for enhancing brand reputation and customer engagement. Notably, this tutorial advances beyond previous studies by comprehensively comparing a wide range of sentiment analysis methods, including state-of-the-art transfer learning approaches, filling a critical gap in the existing literature. Our commitment to transparency underscores our contribution, as we provide all necessary resources for result reproducibility. We make our resources available at the following address: https://tinyurl.com/SentimentTutorial .
简化社交媒体上的情感分析:循序渐进的方法
本教程介绍了对社交媒体数据进行情感分析的系统指南,旨在方便具有不同数据科学专业知识水平的研究人员和营销人员使用。我们优先考虑开放科学,提供全面的资源,包括自行收集的数据、源代码和指南,以促进结果的复制。对于没有编程经验的营销和商业研究人员来说,本教程提供了进行情感分析的强大资源。有经验的数据科学家可将其作为评估前沿方法和简化情感分析流程的参考。我们的工作以其独特的视角关注社交媒体数据领域中情感分析的挑战和机遇。我们深入探讨了情感分析在社交媒体营销中的潜力,为提高品牌声誉和客户参与度提供了实用指导和最佳实践。值得注意的是,本教程超越了以往的研究,全面比较了各种情感分析方法,包括最先进的迁移学习方法,填补了现有文献中的一个重要空白。我们对透明度的承诺凸显了我们的贡献,因为我们为结果的可重复性提供了所有必要的资源。我们在以下地址提供资源:https://tinyurl.com/SentimentTutorial 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
14.90
自引率
16.70%
发文量
25
期刊介绍: The Australasian Marketing Journal (AMJ) is the official journal of the Australian and New Zealand Marketing Academy (ANZMAC). It is an academic journal for the dissemination of leading studies in marketing, for researchers, students, educators, scholars, and practitioners. The objective of the AMJ is to publish articles that enrich and contribute to the advancement of the discipline and the practice of marketing. Therefore, manuscripts accepted for publication will be theoretically sound, offer significant research findings and insights, and suggest meaningful implications and recommendations. Articles reporting original empirical research should include defensible methodology and findings consistent with rigorous academic standards.
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