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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
23.060
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Active Reinforcement Learning

Hybrid methodology combining active learning and reinforcement learning principles to optimize sample selection for annotation.

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Sample Selection Policy

Deterministic or stochastic strategy defining which data to request for annotation to maximize model improvement under budget constraints.

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Reinforcement Learning Agent

Algorithmic entity that learns to make optimal sample selection decisions through interaction with the annotation environment.

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Reward Function

Signal quantifying the utility of each sample selection action, typically based on model performance improvement.

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State-Action-Value

Q(s,a) function estimating the expected cumulative reward when selecting action a from state s and following the optimal policy.

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Deep Reinforcement Learning

Extension of reinforcement learning using deep neural networks to approximate value functions or policies.

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Uncertainty-Based Active Learning

Strategy where the agent preferentially selects samples for which the model exhibits the highest predictive uncertainty.

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Strategic Sample Selection

Optimized decision-making process aiming to identify data subsets maximizing information gain per annotation cost.

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Off-Policy Reinforcement Learning

Method enabling the learning of an optimal policy while following a different behavior policy, useful for flexible exploration.

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Online Reinforcement Learning

Paradigm where the agent learns and selects samples simultaneously during annotation, dynamically adapting its strategy.

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Learning-Annotation Trade-off

Optimization of the balance between time spent on intelligent selection and potential gains in model performance.

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Data Acquisition Strategy

Systematic action plan for identifying and collecting the most relevant data to annotate according to predefined criteria.

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Multi-Agent Reinforcement Learning

Extension where multiple agents collaborate or compete to jointly optimize the sample selection strategy.

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Active Q-Learning Algorithm

Variant of Q-learning adapted to active learning, where actions correspond to selecting samples to annotate.

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Guided Exploration Policy

Exploration strategy oriented towards regions of the data space potentially most informative for the model.

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Bayesian Reinforcement Learning

Method integrating uncertainty into value function estimation for more robust decision-making in sample selection.

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