CLAICYHCJan 8, 2023

The State of Human-centered NLP Technology for Fact-checking

arXiv:2301.03056v196 citationsh-index: 11
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of scaling fact-checking to combat misinformation, but it is incremental as it reviews existing technologies and proposes design improvements without introducing new methods.

The paper reviews the capabilities and limitations of current NLP technologies for fact-checking, focusing on how they can be better designed to meet human fact-checkers' needs, and recommends future research to include early stakeholder collaboration and human-centered practices to improve adoption.

Misinformation threatens modern society by promoting distrust in science, changing narratives in public health, heightening social polarization, and disrupting democratic elections and financial markets, among a myriad of other societal harms. To address this, a growing cadre of professional fact-checkers and journalists provide high-quality investigations into purported facts. However, these largely manual efforts have struggled to match the enormous scale of the problem. In response, a growing body of Natural Language Processing (NLP) technologies have been proposed for more scalable fact-checking. Despite tremendous growth in such research, however, practical adoption of NLP technologies for fact-checking still remains in its infancy today. In this work, we review the capabilities and limitations of the current NLP technologies for fact-checking. Our particular focus is to further chart the design space for how these technologies can be harnessed and refined in order to better meet the needs of human fact-checkers. To do so, we review key aspects of NLP-based fact-checking: task formulation, dataset construction, modeling, and human-centered strategies, such as explainable models and human-in-the-loop approaches. Next, we review the efficacy of applying NLP-based fact-checking tools to assist human fact-checkers. We recommend that future research include collaboration with fact-checker stakeholders early on in NLP research, as well as incorporation of human-centered design practices in model development, in order to further guide technology development for human use and practical adoption. Finally, we advocate for more research on benchmark development supporting extrinsic evaluation of human-centered fact-checking technologies.

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