Monitoring State Transitions in Markovian Systems with Sampling Cost
NeutralArtificial Intelligence
A recent study explores how to efficiently monitor state transitions in Markovian systems, focusing on a node-monitor pair where the node's state changes over time. The research highlights the balance between the cost of querying the node's state and the accuracy of predictions made using time-series forecasting methods. By optimizing when to query based on prediction uncertainty, this approach could enhance monitoring efficiency in various applications, making it a significant contribution to the field.
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