Metadata
Title
Paradigms, Interpretable Models and Algorithms for AI-based Human in the Loop Learning
Category
general
UUID
e9f15f7eb50d4afc87768a5718f20cee
Source URL
https://wsai.iitm.ac.in/projects/paradigms-interpretable-models-and-algorithms-f...
Parent URL
https://wsai.iitm.ac.in/projects/
Crawl Time
2026-03-23T19:05:43+00:00
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Paradigms, Interpretable Models and Algorithms for AI-based Human in the Loop Learning

Source: https://wsai.iitm.ac.in/projects/paradigms-interpretable-models-and-algorithms-for-ai-based-human-in-the-loop-learning/ Parent: https://wsai.iitm.ac.in/projects/

Paradigms, Interpretable Models and Algorithms for AI-based Human in the Loop Learning

Investigators

Arun Rajkumar Harish Guruprasad Chandra Shekar Lakshminarayanan

Tags

MOOCs human in the loop learning data science interpretability

Artificial intelligence/Data science systems with humans-in-the-loop (HIL) are increasing by the day with applications covering a broad spectrum of domains ranging from education to e-commerce. AI for HIL systems involves two kinds of continual learners namely humans and computers. The success of these systems critically depends on the interaction between these two learners. Towards this, we propose to investigate the following fundamental questions in AI-based HIL systems.

Several existing studies for user retention in online courses tackle the issue either from a sociological perspective or are too aligned to the western context. We wish to develop a first of its kind study that incorporates fundamental data science paradigms for dynamic AI-based HIL systems as building blocks and address potential challenges specific to the Indian context in such systems.