Writing and AI B

会議の名前
CHI 2024
Writer-Defined AI Personas for On-Demand Feedback Generation
要旨

Compelling writing is tailored to its audience. This is challenging, as writers may struggle to empathize with readers, get feedback in time, or gain access to the target group. We propose a concept that generates on-demand feedback, based on writer-defined AI personas of any target audience. We explore this concept with a prototype (using GPT-3.5) in two user studies (N=5 and N=11): Writers appreciated the concept and strategically used personas for getting different perspectives. The feedback was seen as helpful and inspired revisions of text and personas, although it was often verbose and unspecific. We discuss the impact of on-demand feedback, the limited representativity of contemporary AI systems, and further ideas for defining AI personas. This work contributes to the vision of supporting writers with AI by expanding the socio-technical perspective in AI tool design: To empower creators, we also need to keep in mind their relationship to an audience.

著者
Karim Benharrak
University of Texas, Austin, Austin, Texas, United States
Tim Zindulka
University of Bayreuth, Bayreuth, Germany
Florian Lehmann
University of Bayreuth, Bayreuth, Germany
Hendrik Heuer
University of Bremen  , Bremen, Bremen, Germany
Daniel Buschek
University of Bayreuth, Bayreuth, Germany
論文URL

doi.org/10.1145/3613904.3642406

動画
Intelligent Support Engages Writers Through Relevant Cognitive Processes
要旨

Student peer review writing is prevalent and important in education for fostering critical thinking and learning motivation. However, it often entails challenges such as high effort and writer's block. Leaving students unsupported may thus diminish the efficacy of the process. Large Language Models (LLMs) offer a potential remedy, but their utility hinges on user-centered design. Guided by design-determining constructs from the Cognitive Process Theory of Writing, we developed an intelligent writing support tool to alleviate these challenges, aiding 1) ideation and 2) evaluation. A randomized experiment (n=120) confirmed users were less inclined to utilize the tool's intelligent features when offered pre-supplied ideas or evaluations, validating our approach. Moreover, students engaged not less but more with their writing if support was available, indicating an enhanced experience. Our research illuminates design choices for enhancing LLM-based tools' usability and user experience, specifically optimizing intelligent writing support tools to facilitate student peer review.

著者
Andreas Göldi
University of St.Gallen, St.Gallen, Switzerland
Thiemo Wambsganss
Bern University of Applied Sciences, Bern, Switzerland
Seyed Parsa Neshaei
EPFL, Lausanne, Switzerland
Roman Rietsche
University of St. Gallen, St. Gallen, St. Gallen, Switzerland
論文URL

doi.org/10.1145/3613904.3642549

動画
The Value, Benefits, and Concerns of Generative AI-Powered Assistance in Writing
要旨

Recent advances in generative AI technologies like large language models raise both excitement and concerns about the future of human-AI co-creation in writing. To unpack people’s attitude towards and experience with generative AI-powered writing assistants, in this paper, we conduct an experiment to understand whether and how much value people attach to AI assistance, and how the incorporation of AI assistance in writing workflows changes people’s writing perceptions and performance. Our results suggest that people are willing to forgo financial payments to receive writing assistance from AI, especially if AI can provide direct content generation assistance and the writing task is highly creative. Generative AI-powered assistance is found to offer benefits in increasing people’s productivity and confidence in writing. However, direct content generation assistance offered by AI also comes with risks, including decreasing people’s sense of accountability and diversity in writing. We conclude by discussing the implications of our findings.

受賞
Honorable Mention
著者
Zhuoyan Li
Purdue university, West Lafayette, Indiana, United States
Chen Liang
University of Connecticut, Storrs, Connecticut, United States
Jing Peng
University of Connecticut, Storrs, Connecticut, United States
Ming Yin
Purdue University, West Lafayette, Indiana, United States
論文URL

doi.org/10.1145/3613904.3642625

動画
Rambler: Supporting Writing With Speech via LLM-Assisted Gist Manipulation
要旨

Dictation enables efficient text input on mobile devices. However, writing with speech can produce disfluent, wordy, and incoherent text and thus requires heavy post-processing. This paper presents Rambler, an LLM-powered graphical user interface that supports gist-level manipulation of dictated text with two main sets of functions: gist extraction and macro revision. Gist extraction generates keywords and summaries as anchors to support the review and interaction with spoken text. LLM-assisted macro revisions allow users to respeak, split, merge, and transform dictated text without specifying precise editing locations. Together they pave the way for interactive dictation and revision that help close gaps between spontaneously spoken words and well-structured writing. In a comparative study with 12 participants performing verbal composition tasks, \tool outperformed the baseline of a speech-to-text editor + ChatGPT, as it better facilitates iterative revisions with enhanced user control over the content while supporting surprisingly diverse user strategies.

著者
Susan Lin
UC Berkeley, Berkeley, California, United States
Jeremy Warner
UC Berkeley, Berkeley, California, United States
J.D. Zamfirescu-Pereira
UC Berkeley, Berkeley, California, United States
Matthew G. Lee
UC Berkeley, Berkeley, California, United States
Sauhard Jain
University of California, Berkeley, Berkeley, California, United States
Shanqing Cai
Google, Mountain View, California, United States
Piyawat Lertvittayakumjorn
Google, Mountain View, California, United States
Michael Xuelin Huang
Google, Mountain View, California, United States
Shumin Zhai
Google, Mountain View, California, United States
Bjoern Hartmann
UC Berkeley, Berkeley, California, United States
Can Liu
City University of Hong Kong, Hong Kong, China
論文URL

doi.org/10.1145/3613904.3642217

動画