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Boltzmann Machine

Stochastic undirected neural network composed of interconnected binary neurons, used to model the probability distribution of input data and learn internal representations.

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Restricted Boltzmann Machine

Simplified version of the Boltzmann Machine where connections only exist between the visible and hidden neuron layers, but not within each layer.

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Free Energy

Mathematical function that quantifies the energy of a particular state in a Boltzmann Machine, used to calculate the probability of each network configuration.

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Visible units

Neurons in a Boltzmann Machine that correspond directly to the observed variables in the input data and serve as an interface with the outside world.

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Hidden units

Internal neurons of a Boltzmann Machine that capture complex statistical dependencies between the visible units and enable the learning of abstract representations.

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Boltzmann distribution

Exponential probability distribution that describes the thermodynamic equilibrium state of a system, on which the mathematical formulation of Boltzmann Machines is based.

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Deep Boltzmann Machine

Extended architecture of Boltzmann Machines with multiple hidden layers, allowing for the hierarchical learning of increasingly abstract representations.

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Persistent Contrastive Divergence

Variant of Contrastive Divergence where the Markov chain is not reset between iterations, improving the quality of sampling and the convergence of training.

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Thermodynamic state

Specific configuration of all neuron activations in a Boltzmann Machine, characterized by its energy level according to the network's energy function.

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RBM temperature

Parameter controlling the level of stochasticity in neuron activation, influencing the exploration of state space and the network's ability to model data.

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Synaptic weights

Parameters of a Boltzmann Machine quantifying the strength and sign of connections between neurons, optimized during training to minimize the energy of probable configurations.

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Neuronal bias

Individual parameters added to each neuron in a Boltzmann Machine, modifying its activation probability independently of its connections with other neurons.

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Stochastic generative model

Class of models of which Boltzmann Machines are part, capable of generating new data by sampling from the learned probability distribution.

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Unsupervised learning

Training paradigm where Boltzmann Machines learn the inherent structure of data without labels, by maximizing the likelihood of training data.

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