This content originally appeared on HackerNoon and was authored by EScholar: Electronic Academic Papers for Scholars
:::info Authors:
(1) Nir Chemaya, University of California, Santa Barbara and (e-mail: nir@ucsb.edu);
(2) Daniel Martin, University of California, Santa Barbara and Kellogg School of Management, Northwestern University and (e-mail: danielmartin@ucsb.edu).
:::
Table of Links
- Abstract and Introduction
- Methods
- Results
- Discussion
- References
- Appendix for Perceptions and Detection of AI Use in Manuscript Preparation for Academic Journals
References
Agrawal, Ajay, Joshua Gans, and Avi Goldfarb (2019). The economics of artificial intelligence: an agenda. University of Chicago Press.
\ Akram, Arslan (2023). “An Empirical Study of AI Generated Text Detection Tools”. arXiv preprint arXiv:2310.01423.
\ Altmäe, Signe, Alberto Sola-Leyva, and Andres Salumets (2023). “Artificial intelligence in scientific writing: a friend or a foe?” Reproductive BioMedicine Online
\ Athey, Susan and Guido W Imbens (2019). “Machine learning methods that economists should know about”. Annual Review of Economics 11, pp. 685–725.
\ Beck, J Thaddeus et al. (2020). “Artificial intelligence tool for optimizing eligibility screening for clinical trials in a large community cancer center”. JCO clinical cancer informatics 4, pp. 50–59.
\ Björkegren, Daniel, Joshua E. Blumenstock, and Samsun Knight (2022). (Machine) Learning What Policies Value. arXiv: 2206.00727 [econ.GN].
\ Bom, Hee-Seung Henry (2023). “Exploring the Opportunities and Challenges of ChatGPT in Academic Writing: a Roundtable Discussion”. Nuclear Medicine and Molecular Imaging, pp. 1– 3.
\ Bommasani, Rishi et al. (2021). “On the opportunities and risks of foundation models”. arXiv preprint arXiv:2108.07258.
\ Bringula, Rex (2023). “What do academics have to say about ChatGPT? A text mining analytics on the discussions regarding ChatGPT on research writing”. AI and Ethics, pp. 1–13.
\ Capra, C. Monica, Matthew Gomies, and Shanshan Zhang (2023). “The Sound of Cooperation and Deception in High Stakes Interactions”.
\ Charness, Gary, Brian Jabarian, and John A List (2023). Generation next: Experimentation with ai. Tech. rep. National Bureau of Economic Research.
\ Chien, Chen-Fu et al. (2020). Artificial intelligence in manufacturing and logistics systems: algorithms, applications, and case studies.
\ Cowen, Tyler and Alexander T Tabarrok (2023). “How to learn and teach economics with large language models, including GPT”. Including GPT (March 17, 2023).
\ Daun, Marian and Jennifer Brings (2023). “How ChatGPT will change software engineering education”. In: Proceedings of the 2023 Conference on Innovation and Technology in Computer Science Education V. 1, pp. 110–116.
\ Deza, Arturo, Amit Surana, and Miguel P Eckstein (2019). “Assessment of faster r-cnn in manmachine collaborative search”. In: Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 3185–3194.
\ Dietvorst, Berkeley J, Joseph P Simmons, and Cade Massey (2015). “Algorithm aversion: people erroneously avoid algorithms after seeing them err.” Journal of Experimental Psychology: General 144.1, p. 114.
\ Dranove, David and Ginger Zhe Jin (2010). “Quality disclosure and certification: Theory and practice”. Journal of Economic Literature 48.4, pp. 935–63.
\ Farrell, Max H, Tengyuan Liang, and Sanjog Misra (2020). “Deep learning for individual heterogeneity: An automatic inference framework”. arXiv preprint arXiv:2010.14694.
\ Fitria, Tira Nur (2021). “Grammarly as AI-powered English writing assistant: Students’ alternative for writing English”. Metathesis: Journal of English Language, Literature, and Teaching 5.1, pp. 65–78.
\ Franchi, Matt et al. (2023). “Detecting disparities in police deployments using dashcam data”. In: Proceedings of the 2023 ACM Conference on Fairness, Accountability, and Transparency, pp. 534–544.
\ Fudenberg, Drew and Annie Liang (2019). “Predicting and understanding initial play”. American Economic Review 109.12, pp. 4112–4141
\ Fyfe, Paul (2023). “How to cheat on your final paper: Assigning AI for student writing”. AI & SOCIETY 38.4, pp. 1395–1405.
\ Gajos, Krzysztof Z and Lena Mamykina (2022). “Do people engage cognitively with AI? Impact of AI assistance on incidental learning”. In: 27th international conference on intelligent user interfaces, pp. 794–806.
\ Hill-Yardin, Elisa L et al. (2023). “A Chat (GPT) about the future of scientific publishing”. Brain Behav Immun 110, pp. 152–154.
\ Horton, John J (2023). Large language models as simulated economic agents: What can we learn from homo silicus? Tech. rep. National Bureau of Economic Research.
\ Ibrahim, Hazem et al. (2023). “Rethinking Homework in the Age of Artificial Intelligence”. IEEE Intelligent Systems 38.2, pp. 24–27.
\ Jin, Ginger Zhe, Michael Luca, and Daniel Martin (2015). Is no news (perceived as) bad news? An experimental investigation of information disclosure. Tech. rep. National Bureau of Economic Research.
\ Jungherr, Andreas (2023). “Using ChatGPT and Other Large Language Model (LLM) Applications for Academic Paper Assignments”.
\ Korinek, Anton (2023). “Language models and cognitive automation for economic research”
\ Lambrecht, Anja and Catherine Tucker (2019). “Algorithmic bias? An empirical study of apparent gender-based discrimination in the display of STEM career ads”. Management science 65.7, pp. 2966–2981.
\ Malik, Agung Rinaldy et al. (2023). “Exploring Artificial Intelligence in Academic Essay: Higher Education Student’s Perspective”. International Journal of Educational Research Open 5, p. 100296.
\ Mullainathan, Sendhil and Jann Spiess (2017). “Machine learning: an applied econometric approach”. Journal of Economic Perspectives 31.2, pp. 87–106.
\ Obermeyer, Ziad et al. (2019). “Dissecting racial bias in an algorithm used to manage the health of populations”. Science 366.6464, pp. 447–453.
\ Pallathadka, Harikumar et al. (2023). “Applications of artificial intelligence in business management, e-commerce and finance”. Materials Today: Proceedings 80, pp. 2610–2613.
\ Rambachan, Ashesh et al. (2021). “Identifying prediction mistakes in observational data”. Harvard University.
\ Ray, Partha Pratim (2023). “ChatGPT: A comprehensive review on background, applications, key challenges, bias, ethics, limitations and future scope”. Internet of Things and Cyber-Physical Systems.
\ Rolf, Esther et al. (2020). Balancing Competing Objectives with Noisy Data: Score-Based Classifiers for Welfare-Aware Machine Learning. arXiv: 2003.06740 [cs.LG].
\ Salah, Mohammed, Hussam Al Halbusi, and Fadi Abdelfattah (2023). “May the force of text data analysis be with you: Unleashing the power of generative AI for social psychology research”. Computers in Human Behavior: Artificial Humans, p. 100006
\ Schmohl, Tobias et al. (2020). “How Artificial Intelligence can improve the Academic Writing of Students”. In: Conference Proceedings. The Future of Education 2020.
\ Shahriar, Sakib and Kadhim Hayawi (2023). “Let’s have a chat! A Conversation with ChatGPT: Technology, Applications, and Limitations”. arXiv preprint arXiv:2302.13817.
\ Singh, Harjit and Avneet Singh (2023). “ChatGPT: Systematic Review, Applications, and Agenda for Multidisciplinary Research”. Journal of Chinese Economic and Business Studies 21.2, pp. 193– 212.
\ Steyvers, Mark et al. (2022). “Bayesian modeling of human–AI complementarity”. Proceedings of the National Academy of Sciences 119.11, e2111547119.
\ Sundar, S Shyam and Eun-Ju Lee (2022). “Rethinking communication in the era of artificial intelligence”. Human Communication Research 48.3, pp. 379–385.
\ Tejeda, Heliodoro et al. (2022). “AI-assisted decision-making: A cognitive modeling approach to infer latent reliance strategies”. Computational Brain & Behavior 5.4, pp. 491–508.
\ Thorp, H Holden (2023). ChatGPT is fun, but not an author.
\ Wang, Xinru, Chen Liang, and Ming Yin (2023). “The Effects of AI Biases and Explanations on Human Decision Fairness: A Case Study of Bidding in Rental Housing Markets”. In: Proceedings of the Thirty-Second International Joint Conference on Artificial Intelligence, IJCAI-23, Edith Elkind (Ed.). International Joint Conferences on Artificial Intelligence Organization, pp. 3076– 3084
\ Yang, Nanyin, Marco Palma, and Andreas Drichoutis (2023). “How Does Humanizing Virtual Assistants Affect the Propensity to Follow Their Advice?”
\ Yang, Nanyin, Marco A Palma, and Andreas C Drichoutis (2023). “How Does Humanizing Virtual Assistants Affect the Propensity to Follow Their Advice?”
\ Zuiderwijk, Anneke, Yu-Che Chen, and Fadi Salem (2021). “Implications of the use of artificial intelligence in public governance: A systematic literature review and a research agenda”. Government Information Quarterly 38.3, p. 101577.
\
:::info This paper is available on arxiv under CC 4.0 license.
:::
\
This content originally appeared on HackerNoon and was authored by EScholar: Electronic Academic Papers for Scholars

EScholar: Electronic Academic Papers for Scholars | Sciencx (2024-07-31T15:00:19+00:00) AI Use in Manuscript Preparation for Academic Journals: References. Retrieved from https://www.scien.cx/2024/07/31/ai-use-in-manuscript-preparation-for-academic-journals-references/
Please log in to upload a file.
There are no updates yet.
Click the Upload button above to add an update.