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Parametrized Predictors
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In the context of parametrized predictors, which aspect most directly influences the model's capacity to generalize to unseen data?

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A

The choice of loss function

B

The number of parameters in the model

C

The structure of the predictor function

D

The training data size

Understanding the Answer

Let's break down why this is correct

The structure of the predictor function decides how the parameters are used with the input data. Other options are incorrect because People think the loss function decides how well a model generalizes; It is easy to think that more parameters mean better generalization.

Key Concepts

Parametrized Predictors
Generalization in Machine Learning
Overfitting
Topic

Parametrized Predictors

Difficulty

hard level question

Cognitive Level

understand

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Definition
Definition

Parametrized predictors are predictive models that are defined by a set of parameters, such as vectors or matrices. Examples include linear regression models for scalar and vector outputs. The parameters determine the structure and behavior of the predictor.

Topic Definition

Parametrized predictors are predictive models that are defined by a set of parameters, such as vectors or matrices. Examples include linear regression models for scalar and vector outputs. The parameters determine the structure and behavior of the predictor.

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