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Uju tama uju rinpa~
A machine for turning coffee into buggy code
- Tokyo-3, Japan
- https://takuyahiraoka.github.io
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Dropout-Q-Functions-for-Doubly-Efficient-Reinforcement-Learning
Dropout-Q-Functions-for-Doubly-Efficient-Reinforcement-Learning PublicSource files to replicate experiments in my ICLR 2022 paper.
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Learning-Robust-Options-by-Conditional-Value-at-Risk-Optimization
Learning-Robust-Options-by-Conditional-Value-at-Risk-Optimization PublicSource files to replicate experiments in my NeurIPS 2019 paper.
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Multi-Agent-Reinforcement-Learning-in-Stochastic-Games
Multi-Agent-Reinforcement-Learning-in-Stochastic-Games PublicUnofficial PyBrain extension for multi-agent reinforcement learning in general sum stochastic games.
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Dialogue-State-Tracking-using-LSTM
Dialogue-State-Tracking-using-LSTM PublicSource files to replicate experiments in my IWSDS 2016 paper.
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Active-Learning-for-Example-based-Dialog-Systems
Active-Learning-for-Example-based-Dialog-Systems PublicSource files to replicate experiments in my IWSDS 2016 paper.
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Which-Experiences-Are-Influential-for-RL-Agents
Which-Experiences-Are-Influential-for-RL-Agents PublicSource files to replicate experiments in my ArXiv 2024 paper.
Python
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