Predicting the Future of AI with AI: High-quality link prediction in an
exponentially growing knowledge network
- URL: http://arxiv.org/abs/2210.00881v1
- Date: Fri, 23 Sep 2022 14:04:37 GMT
- Title: Predicting the Future of AI with AI: High-quality link prediction in an
exponentially growing knowledge network
- Authors: Mario Krenn, Lorenzo Buffoni, Bruno Coutinho, Sagi Eppel, Jacob Gates
Foster, Andrew Gritsevskiy, Harlin Lee, Yichao Lu, Joao P. Moutinho, Nima
Sanjabi, Rishi Sonthalia, Ngoc Mai Tran, Francisco Valente, Yangxinyu Xie,
Rose Yu, Michael Kopp
- Abstract summary: We use AI techniques to predict the future research directions of AI itself.
For that, we use more than 100,000 research papers and build up a knowledge network with more than 64,000 concept nodes.
The most powerful methods use a carefully curated set of network features, rather than an end-to-end AI approach.
- Score: 15.626884746513712
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A tool that could suggest new personalized research directions and ideas by
taking insights from the scientific literature could significantly accelerate
the progress of science. A field that might benefit from such an approach is
artificial intelligence (AI) research, where the number of scientific
publications has been growing exponentially over the last years, making it
challenging for human researchers to keep track of the progress. Here, we use
AI techniques to predict the future research directions of AI itself. We
develop a new graph-based benchmark based on real-world data -- the
Science4Cast benchmark, which aims to predict the future state of an evolving
semantic network of AI. For that, we use more than 100,000 research papers and
build up a knowledge network with more than 64,000 concept nodes. We then
present ten diverse methods to tackle this task, ranging from pure statistical
to pure learning methods. Surprisingly, the most powerful methods use a
carefully curated set of network features, rather than an end-to-end AI
approach. It indicates a great potential that can be unleashed for purely ML
approaches without human knowledge. Ultimately, better predictions of new
future research directions will be a crucial component of more advanced
research suggestion tools.
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