AI Engineering Degree Practice Exam 2025 - Free AI Engineering Practice Questions and Study Guide.

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Question: 1 / 190

What is a benefit of using marginalization in the context of conditional probabilities?

It simplifies complex conditional dependencies

Using marginalization in the context of conditional probabilities indeed simplifies complex conditional dependencies. Marginalization involves integrating or summing out certain variables in a probabilistic model to focus on the relationships of interest. This process allows analysts to reduce complexity by eliminating unnecessary variables, making it easier to analyze the conditional probabilities of the remaining variables.

By simplifying these complex relationships, marginalization makes it possible to derive cleaner and more interpretable results from a model. This is particularly useful in scenarios with high-dimensional data or intricate dependencies, where directly calculating conditional probabilities would be computationally expensive or analytically intractable.

The other options do not correctly capture the primary benefit of marginalization. While exploring all outcomes (as mentioned in one option) is related to understanding probabilities, it does not specifically highlight the clarity gained through simplification. Moreover, marginalization does not inherently avoid reliance on Bayesian priors or increase dimensionality; instead, it often helps to manage such issues by providing a way to effectively manage the dimensions involved.

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It allows exploration of all conditional outcomes

It avoids the reliance on Bayesian priors

It increases dimensionality of the analysis

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