Publications

Designing Social Good Semantic Computing Architectures for the Long Tail: Case Studies, Evaluation, and Challenges

Abstract

Many real-world systems, especially systems characterized by high social activity (such as the Web), tend to obey power law distributions and thereby have a significant ‘long tail’. We argue that researching, developing and designing semantic computing systems for the long tail, especially dependent on inductive AI, constitutes an important class of problems, not least because the long tail is challenging both technically and socially. By its very nature, the long tail is irregular, testing the generalization capabilities of the state-of-the-art, especially in architectures and interfaces that are built on some form of machine learning or statistical inference (including large language models). As machine learning and generative AI continues to be integrated into more front facing systems, the issue of the long tail cannot be ignored by either the systems engineering or the AI communities. We present two case studies with …

Date
2024
Authors
Mayank Kejriwal
Conference
2024 IEEE 18th International Conference on Semantic Computing (ICSC)
Pages
253-260
Publisher
IEEE