Nikhilesh Prabhakar

h-index12
2papers

2 Papers

5.7LGMay 8
Neurosymbolic Imitation Learning with Human Guidance: A Privileged Information Approach

Nikhilesh Prabhakar, Varun Balaji, Athresh Karanam et al.

Imitation learning is widely used for learning to act in complex environments. While pure neural-based methods handle high dimensional data effectively, they suffer from the requirement of large number of samples and are prone to overfitting. Pure symbolic approaches, while generalize well, do not handle high-dimensional data effectively. We propose a neurosymbolic approach that achieves the best of both worlds, i.e, handling high-dimensional data while achieving generalization. The key advantage of our approach is that it can effectively exploit additional privileged information that is available only during training (in our case, gaze data). Our empirical evaluations demonstrate the effectiveness, efficiency and the generalization capability of our proposed approach.

MAFeb 26, 2025
Combining Planning and Reinforcement Learning for Solving Relational Multiagent Domains

Nikhilesh Prabhakar, Ranveer Singh, Harsha Kokel et al. · ibm-research

Multiagent Reinforcement Learning (MARL) poses significant challenges due to the exponential growth of state and action spaces and the non-stationary nature of multiagent environments. This results in notable sample inefficiency and hinders generalization across diverse tasks. The complexity is further pronounced in relational settings, where domain knowledge is crucial but often underutilized by existing MARL algorithms. To overcome these hurdles, we propose integrating relational planners as centralized controllers with efficient state abstractions and reinforcement learning. This approach proves to be sample-efficient and facilitates effective task transfer and generalization.