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YZ Sözlüğü

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kategoriler
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alt kategoriler
23.060
terimler
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terimler

Hierarchical Imitation Learning

Learning paradigm where an agent learns complex behaviors by decomposing expert demonstrations into a hierarchy of interconnected subtasks.

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Hierarchical Policy

Multi-level control structure where high-level policies select low-level sub-policies to sequentially accomplish intermediate goals.

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Atomic Subtasks

Fundamental and indivisible action units in the task hierarchy, which cannot be further decomposed and serve as basic building blocks for learning.

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Dependency Graph

Formal structure representing precedence relationships and constraints between different subtasks in a hierarchical decomposition.

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Multi-scale Imitation

Learning approach where the agent simultaneously imitates behaviors at different levels of temporal granularity and spatial abstraction.

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Demonstration Sequence

Ordered chain of hierarchically structured expert examples, capturing both macro-actions and micro-movements necessary for task completion.

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Learning by Composition

Learning method where new skills are acquired by creatively combining previously learned sub-skills through imitation.

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Trajectory Abstraction

Process of generalizing raw demonstrations into abstract behavioral patterns, capturing underlying intention rather than execution details.

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High-Level Policy

Decision-making strategy operating at a high level of abstraction, responsible for selecting and sequencing sub-goals to achieve.

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Low-Level Policy

Detailed motor controller implementing concrete action primitives necessary for executing sub-tasks specified by the high-level policy.

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HAM Formalism

Mathematical framework (Hierarchical Abstract Machines) defining hierarchical state machines to structure imitation learning policies.

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Hierarchical Planning

Process of generating multi-level action plans where strategic decisions recursively decompose into more detailed tactical plans.

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Transferable Imitation Learning

Ability of a system to transfer knowledge acquired through hierarchical imitation between tasks sharing similar decomposition structures.

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Hierarchical Demonstrations Model

Probabilistic representation capturing the joint distribution of actions and sub-goals across different levels of abstraction in expert demonstrations.

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Imitation Learning with Primitives

Approach where complex behaviors are learned by automatically identifying and combining fundamental movement primitives extracted from demonstrations.

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Hierarchical Neural Networks

Deep learning architecture organized in specialized layers, each level processing representations at different scales of abstraction for imitation.

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Multi-level Temporal Alignment

Technique for synchronizing demonstrations at different temporal scales to ensure coherence between high and low level policies.

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