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162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Probabilistic program synthesis

Automatic approach of program generation using probabilistic models to explore the solution space and model uncertainty in the algorithmic creation process.

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Bayesian program modeling

Theoretical framework applying Bayesian principles to represent probability distributions over programs and update beliefs during algorithmic exploration.

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Probabilistic inference

Computational process for deducing properties of complex distributions over programs from partial observations or specified constraints.

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Probabilistic search space

Structured set of possible programs equipped with a probability distribution that guides exploration toward the most promising solutions according to utility criteria.

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Probabilistic programming

Programming paradigm natively integrating probabilistic primitives allowing the definition of generative models and performing automatic inference on programs.

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Probability distribution over programs

Mathematical function assigning probabilities to different programs or algorithmic structures, serving as a basis for sampling and guided optimization.

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Markov Chain Monte Carlo (MCMC)

Family of sampling algorithms constructing a Markov chain whose stationary distribution corresponds to the target distribution over the program space.

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Generative program models

Probabilistic systems learning to generate new valid programs by capturing the statistical structure of an existing program corpus or optimal solutions.

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Probabilistic meta-learning

An approach where the agent learns to improve its own program synthesis strategies by probabilistically modeling the effectiveness of different exploration heuristics.

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Bayesian program optimization

Global optimization method using Bayesian models to efficiently guide the search for optimal programs in high-dimensional spaces that are expensive to evaluate.

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Probabilistic computational graphs

Data structures representing programs with probabilistic nodes, enabling uncertainty propagation and efficient inference in algorithmic architectures.

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Stochastic neural networks

Neural architecture incorporating randomness in its activations or weights, used to model distributions over program spaces and guide exploration.

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Gaussian processes for synthesis

Application of Gaussian processes to model program performance surfaces and guide efficient sampling in algorithmic search spaces.

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Sequential Monte Carlo methods

Adaptive sampling techniques using particle systems to dynamically approximate distributions evolving during the iterative synthesis process.

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Amortized variational inference

Optimization where variational parameters are predicted by a neural network, enabling fast inference for new observations in program synthesis.

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Probabilistic automated programming

Field combining machine learning and automatic code generation using probabilistic methods to discover optimized algorithms without explicit supervision.

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Bayesian reinforcement learning

Learning framework where the agent maintains belief distributions about the environment and optimizes its policy generation programs according to Bayesian principles.

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