迈向福祉管理与自动化定性数据分析

Fousiya Saleem, Mohammad Hamdan, A. Zalzala
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引用次数: 0

摘要

本文报告了通过应用机器学习算法从非结构化访谈数据中识别特定主题,使用定性数据分析来了解服务不足社区居民福祉的各个方面。这项工作包括数据翻译、转录、预处理,以及开发Word2Vec和FastText算法,并最终开发出一个组合分析引擎。报告的实验是根据从印度社区获取的实地数据进行的,因此提供了一个独特的机会来检查基于上下文的自动化定性数据分析。尽管在技术基础设施和社区意识方面存在主要限制,但这种方法被证明是可行的。机器学习结果可以在几分钟内从访谈数据中识别主题,而不是通过传统的定性分析技术进行数小时的人工调查。分析引擎的结果可用于为进一步研究创建有根据的理论,从而促进以证据为基础的方法来评估服务不足的社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Well-Being Management with Automated Qualitative Data Analysis
This paper reports on using qualitative data analysis to understand aspects of the well-being of dwellers in underserved communities, by applying machine learning algorithms to identify specific themes from unstructured interview data. The work involved data translation, transcription, pre-processing as well as developing Word2Vec and FastText algorithms and ultimately a combined analysis engine. The reported experiments are conducted on field data captured from communities in India, hence offering a unique opportunity to examine automated context-based qualitative data analysis. The approach is proven feasible despite the dominant limitations on technology infrastructure and community awareness. The machine learning results identify themes from the interview data within minutes as opposed to hours of manual investigations through conventional qualitative analysis techniques. The outcomes from the analysis engine can be used for creating a grounded theory for further studies, hence facilitating an evidence-based approach to the evaluation of underserved communities.
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