ben-aaron188 | c9254dd | 2022-09-28 16:33:00 +0200 | [diff] [blame] | 1 | @article{korngiebel2021considering, |
| 2 | title={Considering the possibilities and pitfalls of Generative Pre-trained Transformer 3 (GPT-3) in healthcare delivery}, |
| 3 | author={Korngiebel, Diane M and Mooney, Sean D}, |
| 4 | journal={NPJ Digital Medicine}, |
| 5 | volume={4}, |
| 6 | number={1}, |
| 7 | pages={1--3}, |
| 8 | year={2021}, |
| 9 | publisher={Nature Publishing Group} |
| 10 | } |
| 11 | |
ben-aaron188 | c9254dd | 2022-09-28 16:33:00 +0200 | [diff] [blame] | 12 | @article{binz2022using, |
| 13 | title={Using cognitive psychology to understand GPT-3}, |
| 14 | author={Binz, Marcel and Schulz, Eric}, |
| 15 | journal={arXiv preprint arXiv:2206.14576}, |
| 16 | year={2022} |
| 17 | } |
| 18 | |
| 19 | @article{stevenson2022putting, |
| 20 | title={Putting GPT-3's Creativity to the (Alternative Uses) Test}, |
| 21 | author={Stevenson, Claire and Smal, Iris and Baas, Matthijs and Grasman, Raoul and van der Maas, Han}, |
| 22 | journal={arXiv preprint arXiv:2206.08932}, |
| 23 | year={2022} |
| 24 | } |
| 25 | |
| 26 | @article{garg2018word, |
| 27 | title={Word embeddings quantify 100 years of gender and ethnic stereotypes}, |
| 28 | author={Garg, Nikhil and Schiebinger, Londa and Jurafsky, Dan and Zou, James}, |
| 29 | journal={Proceedings of the National Academy of Sciences}, |
| 30 | volume={115}, |
| 31 | number={16}, |
| 32 | pages={E3635--E3644}, |
| 33 | year={2018}, |
| 34 | publisher={National Acad Sciences} |
| 35 | } |
ben-aaron188 | 718e3a6 | 2022-10-24 14:28:51 +0200 | [diff] [blame] | 36 | |
ben-aaron188 | c9254dd | 2022-09-28 16:33:00 +0200 | [diff] [blame] | 37 | @inproceedings{bender2021dangers, |
| 38 | title={On the Dangers of Stochastic Parrots: Can Language Models Be Too Big?}, |
| 39 | author={Bender, Emily M and Gebru, Timnit and McMillan-Major, Angelina and Shmitchell, Shmargaret}, |
| 40 | booktitle={Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency}, |
| 41 | pages={610--623}, |
| 42 | year={2021} |
| 43 | } |
| 44 | |
| 45 | @article{dale2021gpt, |
| 46 | title={GPT-3: What’s it good for?}, |
| 47 | author={Dale, Robert}, |
| 48 | journal={Natural Language Engineering}, |
| 49 | volume={27}, |
| 50 | number={1}, |
| 51 | pages={113--118}, |
| 52 | year={2021}, |
| 53 | publisher={Cambridge University Press} |
| 54 | } |
| 55 | |
| 56 | @article{brown2020language, |
| 57 | title={Language models are few-shot learners}, |
| 58 | author={Brown, Tom and Mann, Benjamin and Ryder, Nick and Subbiah, Melanie and Kaplan, Jared D and Dhariwal, Prafulla and Neelakantan, Arvind and Shyam, Pranav and Sastry, Girish and Askell, Amanda and others}, |
| 59 | journal={Advances in neural information processing systems}, |
| 60 | volume={33}, |
| 61 | pages={1877--1901}, |
| 62 | year={2020} |
| 63 | } |
ben-aaron188 | 718e3a6 | 2022-10-24 14:28:51 +0200 | [diff] [blame] | 64 | |
ben-aaron188 | c9254dd | 2022-09-28 16:33:00 +0200 | [diff] [blame] | 65 | @article{floridi2020gpt, |
| 66 | title={GPT-3: Its nature, scope, limits, and consequences}, |
| 67 | author={Floridi, Luciano and Chiriatti, Massimo}, |
| 68 | journal={Minds and Machines}, |
| 69 | volume={30}, |
| 70 | number={4}, |
| 71 | pages={681--694}, |
| 72 | year={2020}, |
| 73 | publisher={Springer} |
| 74 | } |
| 75 | |
ben-aaron188 | c9254dd | 2022-09-28 16:33:00 +0200 | [diff] [blame] | 76 | |
| 77 | @article{rahwan2019machine, |
| 78 | title={Machine behaviour}, |
| 79 | author={Rahwan, Iyad and Cebrian, Manuel and Obradovich, Nick and Bongard, Josh and Bonnefon, Jean-Fran{\c{c}}ois and Breazeal, Cynthia and Crandall, Jacob W and Christakis, Nicholas A and Couzin, Iain D and Jackson, Matthew O and others}, |
| 80 | journal={Nature}, |
| 81 | volume={568}, |
| 82 | number={7753}, |
| 83 | pages={477--486}, |
| 84 | year={2019}, |
| 85 | publisher={Nature Publishing Group} |
| 86 | } |
| 87 | |
| 88 | @article{black2022gpt, |
| 89 | title={Gpt-neox-20b: An open-source autoregressive language model}, |
| 90 | author={Black, Sid and Biderman, Stella and Hallahan, Eric and Anthony, Quentin and Gao, Leo and Golding, Laurence and He, Horace and Leahy, Connor and McDonell, Kyle and Phang, Jason and others}, |
| 91 | journal={arXiv preprint arXiv:2204.06745}, |
| 92 | year={2022} |
| 93 | } |
ben-aaron188 | 718e3a6 | 2022-10-24 14:28:51 +0200 | [diff] [blame] | 94 | |
| 95 | |
| 96 | @article{miotto_who_2022, |
| 97 | title = {Who is {GPT}-3? {An} {Exploration} of {Personality}, {Values} and {Demographics}}, |
| 98 | shorttitle = {Who is {GPT}-3?}, |
| 99 | url = {http://arxiv.org/abs/2209.14338}, |
| 100 | doi = {10.48550/arXiv.2209.14338}, |
| 101 | abstract = {Language models such as GPT-3 have caused a furore in the research community. Some studies found that GPT-3 has some creative abilities and makes mistakes that are on par with human behaviour. This paper answers a related question: who is GPT-3? We administered two validated measurement tools to GPT-3 to assess its personality, the values it holds and its self-reported demographics. Our results show that GPT-3 scores similarly to human samples in terms of personality and - when provided with a model response memory - in terms of the values it holds. We provide the first evidence of psychological assessment of the GPT-3 model and thereby add to our understanding of the GPT-3 model. We close with suggestions for future research that moves social science closer to language models and vice versa.}, |
| 102 | urldate = {2022-10-03}, |
| 103 | author = {Miotto, Marilù and Rossberg, Nicola and Kleinberg, Bennett}, |
| 104 | month = sep, |
| 105 | year = {2022}, |
| 106 | note = {arXiv:2209.14338 [cs]}, |
| 107 | keywords = {Computer Science - Computation and Language}, |
| 108 | file = {arXiv.org Snapshot:/Users/bennettkleinberg/Zotero/storage/6NCPEUG4/2209.html:text/html}, |
| 109 | } |
| 110 | |
| 111 | @article{shihadehbrilliance, |
| 112 | title={Brilliance Bias in GPT-3}, |
ben-aaron188 | 492669a | 2022-10-24 19:11:13 +0200 | [diff] [blame] | 113 | author={Shihadeh, Juliana and Ackerman, Margareta and Troske, Ashley and Lawson, Nicole and Gonzalez, Edith}, |
| 114 | year={2022} |
| 115 | } |
| 116 | |
| 117 | @article{vandermaas2021, |
| 118 | title = {How much intelligence is there in artificial intelligence? A 2020 update}, |
| 119 | author = {van der Maas, Han L.J. and Snoek, Lukas and Stevenson, Claire E.}, |
| 120 | year = {2021}, |
| 121 | month = {07}, |
| 122 | date = {2021-07}, |
| 123 | journal = {Intelligence}, |
| 124 | pages = {101548}, |
| 125 | volume = {87}, |
| 126 | doi = {10.1016/j.intell.2021.101548}, |
| 127 | url = {https://linkinghub.elsevier.com/retrieve/pii/S0160289621000325}, |
| 128 | langid = {en} |
ben-aaron188 | 718e3a6 | 2022-10-24 14:28:51 +0200 | [diff] [blame] | 129 | } |