将机器学习纳入诠释学范畴:文本分析的计算-诠释结合方法

IF 2.3 3区 社会学 Q1 INTERNATIONAL RELATIONS
Scott Robert Patterson, Vincent Pouliot
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引用次数: 0

摘要

越来越多的学者开始利用机器学习文本分析(MLTA)来理解世界政治,但对于计算能力和解释性专业知识应如何共同发挥作用的问题仍未充分探讨。这一鸿沟源于将文本视为需要计算的数据的学者与将文本视为需要解释的语言的学者之间缺乏交流。在本文中,我们提出了一种在计算分析和诠释时刻之间循环的方法,将机器学习置于诠释学的圈子内,从而弥合了这一鸿沟。我们认为,通过在这双重任务之间反复进行,研究人员可以利用这两种方法的优势,降低文本的维度,同时保留其意义的实用结构。为了说明我们的方法,我们将其应用于联合国一般性辩论语料库(UNGDC),展示机器学习如何识别连贯的修辞区间,然后利用专家知识对其进行解读。我们的主要目标是教学,但我们的应用也凸显了在大数据时代将 MLTA 与解释性分析相结合的潜在经验回报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Placing machine learning into the hermeneutic circle: a combined computational-interpretive method for text analysis

Placing machine learning into the hermeneutic circle: a combined computational-interpretive method for text analysis

Scholars are increasingly turning to machine learning text analysis (MLTA) to make sense of world politics, but the question of how computational power and interpretive expertise should work together remains underexplored. This gap stems from a lack of engagement between those who treat text as data to be computed and those who approach it as language to be interpreted. In this article, we bridge this divide by proposing a methodology that cycles between computational analysis and interpretive moments, placing machine learning within the hermeneutic circle. We argue that by iterating between these dual tasks, researchers can harness the strengths of both approaches, reducing the dimensionality of text while preserving its pragmatic structure of meaning. To illustrate our approach, we apply it to the UN General Debate Corpus (UNGDC), demonstrating how machine learning can identify coherent rhetorical intervals that are then interpreted using expert knowledge. Our primary objective is pedagogical, but our application also highlights the potential empirical payoffs of combining MLTA and interpretive analysis in the era of big data.

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来源期刊
CiteScore
3.60
自引率
5.90%
发文量
33
期刊介绍: JIRD is an independent and internationally peer-reviewed journal in international relations and international political economy. It publishes articles on contemporary world politics and the global political economy from a variety of methodologies and approaches. The journal, whose history goes back to 1984, has been established to encourage scholarly publications by authors coming from Central/Eastern Europe. Open to all scholars since its refoundation in the late 1990s, yet keeping this initial aim, it applied a rigorous peer-review system and became the official journal of the Central and East European International Studies Association (CEEISA). JIRD seeks original manuscripts that provide theoretically informed empirical analyses of issues in international relations and international political economy, as well as original theoretical or conceptual analyses.
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