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 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 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.
翻译:以大语言模式为动力的下一个句子的建议正在日益普及。然而,了解作家互动和决策过程,同时与这些系统互动的研究仍在进行中。我们开展了一项定性研究,在用下一句建议系统写作时,阐明作家的认知过程。为此,我们征聘了14名业余作家,分别撰写两份评论,一份没有建议,一份有建议。此外,我们还积极和消极地偏向了建议系统,以获得作者意见的不同实例,以及语言模式不同程度的偏差。我们发现,作者以各种复杂的方式与下一句建议互动:作者抽象地抽取了建议的许多部分,并把它们纳入作者的写作中,即使他们不同意整个建议;同时评价各种标准的建议。建议系统还对写作过程产生了各种影响,例如改变作家通常的写作计划,导致更高的分心等。基于我们利用海斯作为镜头的写作认知过程模型进行的质量分析,我们建议用“作者-分析互动”的理论模型来进行写作,并把它们纳入他们的写作中,以编写一般的、编写工作、编写工作、编写过程的理论模式为根据“作家-分析”格式的理论模式,以便编写一般的、编写、编写工作、编写工作、编写工作、一般的理论分析。