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AI-ordlista

Den kompletta ordlistan över AI

162
kategorier
2 032
underkategorier
23 060
termer
📂
underkategorier

Deep Q-Networks (DQN)

Pioneering algorithm combining Q-learning with deep neural networks to approximate the Q-value function in complex state spaces.

18 termer
📂
underkategorier

Policy Gradient Methods

Reinforcement learning approaches that directly optimize the policy by following the gradient of expected rewards.

18 termer
📂
underkategorier

Actor-Critic Methods

Hybrid architecture combining an actor that learns the policy and a critic that evaluates the value of states or actions.

8 termer
📂
underkategorier

Deep Deterministic Policy Gradient (DDPG)

Off-policy actor-critic algorithm for environments with continuous action spaces using deep neural networks.

9 termer
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underkategorier

Proximal Policy Optimization (PPO)

Policy optimization method that maintains updates in a trust region to ensure learning stability.

11 termer
📂
underkategorier

Trust Region Policy Optimization (TRPO)

Constrained optimization algorithm that ensures new policies do not deviate too much from old policies.

8 termer
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underkategorier

Multi-Agent Deep RL

Extension of deep RL where multiple agents learn simultaneously, in cooperation or competition in a shared environment.

20 termer
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underkategorier

Hierarchical Reinforcement Learning

Approach structuring learning in hierarchical levels with meta-policies controlling specialized sub-policies.

20 termer
📂
underkategorier

Model-Based Deep RL

Technique where the agent learns a model of the environment to plan and make more efficient decisions.

19 termer
📂
underkategorier

Distributional RL

Paradigm learning the complete distribution of returns rather than just their expectation for better robustness.

18 termer
📂
underkategorier

Curiosity-Driven RL

Approach where the agent receives intrinsic rewards based on its curiosity to efficiently explore the environment.

16 termer
📂
underkategorier

Meta-Learning in RL

Technique that allows agents to learn to learn quickly on new tasks with few experiences.

18 termer
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