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Processo de Decisão de Markov Parcialmente Observável

POMDP

Um Processo de Decisão de Markov Parcialmente Observável (POMDP) modela a tomada de decisão onde os estados não são totalmente visíveis.

A Parcialmente Processo de Decisão de Markov Observável (POMDP) is a framework used in inteligência artificial for modeling decision-making problems where the agent does not have complete information about the current state of the environment. Unlike a standard Markov Decision Process (MDP) where the state is fully observable, POMDPs incorporate uncertainty in the state representation.

Em um POMDP, o agente deve decidir ações com base em um estado de crença, que é uma probability distribution over all possible states, reflecting the agent’s knowledge about the environment. This belief state evolves over time as the agent takes actions and receives observations, which provide partial information about the true state.

Um POMDP é formalmente definido por um tuplo:

  • S: A set of states
  • A: A set of actions
  • T: A state transition function that defines the probability of moving from one state to another given an action
  • R: A função de recompensa que atribui uma recompensa numérica para cada par estado-ação
  • O: An função de observação that defines the probability of receiving an observation given a state and action
  • γ: A discount factor that determines the importance of future rewards

POMDPs are widely used in various applications, such as robotics, automated planning, and gerenciamento de recursos, where decision-making must happen under uncertainty. The complexity of solving POMDPs lies in the need to maintain and update the belief state, making them computationally challenging. Various algorithms and techniques, such as value iteration and policy search methods, have been developed to approximate solutions to POMDPs.

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