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Identify whether true or false:  In PCA the number of input dimensions is equal to principal components.

Question

Identify whether true or false:  In PCA the number of input dimensions is equal to principal components.

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Solution

False. In Principal Component Analysis (PCA), the number of input dimensions is not necessarily equal to the number of principal components. PCA is a dimensionality reduction technique, which means it is often used to reduce the number of dimensions in a dataset. The number of principal components is a parameter that can be set, and it is often less than the number of input dimensions. The goal is to capture as much of the variability in the data as possible with fewer dimensions.

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Similar Questions

How does the term "principal component analysis" (PCA) contribute to dimensionality reduction in data analysis?By clustering similar data points togetherBy transforming features into a lower-dimensional spaceBy creating new features based on existing onesBy evaluating feature importance

Explain pca

Principal Component Analysis (PCA)... (Select ANY correct answer) A. can improve model interpretability. B. can improve model accuracy. C. can convert non-linear problems into linear problems. D. can reduce the number of attributes/features used for modeling.

Which of the given options is NOT associated with the properties of the Principal Component?Select an option Clear ResponseThe Principal Components are orthogonal.The variation in the Principal Components increases from the 1st first Principal Component to the last one.The linear combinations of the original variables from the Principal ComponentsThe Principal Components helps in dimensionality reduction without information loss.

In principal component analysis, the projected lower dimensional space corresponds to – A. subset of the original co-ordinate axis B. eigenvectors of the data covariance matrix C. eigenvectors of the data distance matrix D. orthogonal vectors to the original co-ordinate axis

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