Artificial Intelligence Programming Practice Exam 2025 - Free AI Programming Practice Questions and Study Guide

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What does a Markov Model rely on for its assumptions?

The randomness of events over time

The Markov property

The Markov Model is fundamentally based on the Markov property, which is the assumption that the future state of a process depends only on its current state, not on the sequence of events that preceded it. This means that the model does not require knowledge of the past states beyond the most recent one, allowing for a simplification of the probabilities involved in predicting future states.

This property makes Markov Models particularly useful in various applications, such as natural language processing, where the prediction of the next word in a sentence depends only on the current word and not on the words that came before. By relying on this principle, Markov Models can efficiently encode the dynamics of systems where historical data is not crucial for making predictions.

To provide some context, while randomness of events, predictability of occurrence rates, and the stability of input-output pairs can be relevant in understanding different models or systems, they do not specifically capture the essence of what a Markov Model is built upon. The reliance on the Markov property is what distinguishes it within the realm of statistical modeling.

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The predictability of occurrence rates

The stability of input-output pairs

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