Evaluating the Role of Machine Learning in Economics: A Cutting-Edge Addition or Rhetorical Device?

Q3 Arts and Humanities
Sławomir Czech
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引用次数: 0

Abstract

Abstract This paper explores the integration of machine learning into economics and social sciences, assessing its potential impact and limitations. It introduces fundamental machine learning concepts and principles, highlighting the differences between the two disciplines, particularly the focus on causal inference in economics and prediction in machine learning. The paper discusses diverse applications of machine learning, from extracting insights from unstructured data to creating novel indicators and improving predictive accuracy, while also addressing challenges related to data quality, computational efficiency, and data ownership. It emphasizes the importance of standardization, transparency, and ethical considerations in prediction tasks, recognizing that machine learning is a powerful tool but cannot replace economic theory. Ultimately, researchers remain optimistic about the transformative potential of machine learning in re-shaping research methodologies and generating new insights in economics and social sciences.
评估机器学习在经济学中的作用:前沿补充还是修辞手段?
摘要 本文探讨了将机器学习融入经济学和社会科学的问题,评估了其潜在影响和局限性。文章介绍了机器学习的基本概念和原理,强调了这两个学科之间的差异,特别是经济学中的因果推理和机器学习中的预测。论文讨论了机器学习的各种应用,包括从非结构化数据中提取见解、创建新指标和提高预测准确性,同时还讨论了与数据质量、计算效率和数据所有权相关的挑战。文章强调了标准化、透明度和道德因素在预测任务中的重要性,承认机器学习是一种强大的工具,但不能取代经济理论。最终,研究人员对机器学习在重塑研究方法和产生经济学与社会科学新见解方面的变革潜力保持乐观。
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
Studies in Logic, Grammar and Rhetoric
Studies in Logic, Grammar and Rhetoric Arts and Humanities-Philosophy
CiteScore
0.40
自引率
0.00%
发文量
3
审稿时长
6 weeks
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