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Home/Authors/Vignesh Subramanian

Vignesh Subramanian

2 indexed papers

Recent (6 mo)
2
With code
0
Influential cites
0
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Publications per year

2
26

Top categories

AI×2

Frequent co-authors

Suguman Bansal2×
Đorđe Žikelić1×
Subhajit Roy1×

Research Timeline

2026
Certificate-Guided Evaluation of Reinforcement Learning Generalization

The paper introduces a logic-driven framework using a neural certificate function to rigorously evaluate and benchmark the generalization capabilities of reinforcement learning algorithms on unseen tasks.

Decoupled Behavioral Cloning for Scalable Inductive Generalization in RL from Specifications

The paper proposes DIBS, a decoupled behavioral cloning approach that stabilizes inductive generalization in RL by separating task-specific policy learning from the evolution function, leading to improved generalization and training stability.

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Papers

cs.AIRecentMay 30, 2026

Certificate-Guided Evaluation of Reinforcement Learning Generalization

Vignesh Subramanian, Đorđe Žikelić, Suguman Bansal

The paper introduces a logic-driven framework using a neural certificate function to rigorously evaluate and benchmark the generalization capabilities of reinforcement learning algorithms on unseen ta…

View →
cs.AIRecentMay 30, 2026

Decoupled Behavioral Cloning for Scalable Inductive Generalization in RL from Specifications

Vignesh Subramanian, Subhajit Roy, Suguman Bansal

The paper proposes DIBS, a decoupled behavioral cloning approach that stabilizes inductive generalization in RL by separating task-specific policy learning from the evolution function, leading to impr…

View →