Interacting with Next-Phrase Suggestions: How Suggestion Systems Aid and Influence the Cognitive Processes of Writing

Advait Bhat, Saaket Agashe, Niharika Mohile, Parth Oberoi, R. Jangir, Anirudha N. Joshi
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引用次数: 8

Abstract

Writing with next-phrase suggestions powered by large language models is becoming more pervasive by the day. However, research to understand writers’ interaction and decision-making processes while engaging with such systems is still emerging. We conducted a qualitative study to shed light on writers’ cognitive processes while writing with next-phrase suggestion systems. To do so, we recruited 14 amateur writers to write two movie reviews each, one without suggestions and one with suggestions. Additionally, we also positively and negatively biased the suggestion system to get a diverse range of instances where writers’ opinions and the bias in the language model align or misalign to varying degrees. We found that writers interact with next-phrase suggestions in various complex ways: Writers abstracted and extracted multiple parts of the suggestions and incorporated them within their writing, even when they disagreed with the suggestion as a whole; along with evaluating the suggestions on various criteria. The suggestion system also had various effects on the writing process, such as altering the writer’s usual writing plans, leading to higher levels of distraction etc. Based on our qualitative analysis using the cognitive process model of writing by Hayes [35] as a lens, we propose a theoretical model of ’writer-suggestion interaction’ for writing with GPT-2 (and causal language models in general) for a movie review writing task, followed by directions for future research and design.
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与下一短语建议的互动:建议系统如何帮助和影响写作的认知过程
在大型语言模型的支持下,使用下一短语建议进行写作正变得越来越普遍。然而,了解作家在参与这些系统时的互动和决策过程的研究仍在兴起。我们进行了一项定性研究,以揭示作者在使用下一短语建议系统写作时的认知过程。为此,我们招募了14位业余作家,每人写两篇影评,一篇没有建议,一篇有建议。此外,我们还对建议系统进行了积极和消极的偏向,以获得作者的观点和语言模型中的偏见在不同程度上一致或不一致的各种实例。我们发现,作者以各种复杂的方式与下一个短语的建议互动:作者将建议的多个部分抽象和提取出来,并将其纳入他们的写作中,即使他们不同意整个建议;并根据各种标准对建议进行评估。建议系统对写作过程也有不同的影响,比如改变作者通常的写作计划,导致更高程度的分心等等。基于我们以Hayes[35]的写作认知过程模型为视角的定性分析,我们提出了一个基于GPT-2(以及一般的因果语言模型)的电影评论写作任务的“作者-建议互动”理论模型,并提出了未来研究和设计的方向。
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