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Lernen What’s after? | Results Analysis
Principal Component Analysis
course content

Kursinhalt

Principal Component Analysis

Principal Component Analysis

1. What is Principal Component Analysis
2. Basic Concepts of PCA
3. Model Building
4. Results Analysis

book
What’s after?

We used PCA and received modified data, with a smaller dimension. What will be our next step?

As mentioned earlier, the data obtained is used in machine learning models, i.e. PCA basically acts only as a data processing step.

Once we have our data processed by PCA, we can use it in any machine learning model. It can be a model that solves the problem of classification, regression, clustering, etc. As an example, the use of PCA when working with images, because datasets are often large and with a lack of capacity, a dataset with more than 500,000 images can already become difficult to process. A few examples of how PCA can be used on its own:

  • Visualization of multidimensional data
  • Information compression

And examples of when PCA is used as a data process:

  • Data dimension reduction
  • Noise reduction in data

In the following chapters, we will explore in detail some of the most common uses for PCA.

Choose the types of data that PCA can work with effectively:

Choose the types of data that PCA can work with effectively:

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Abschnitt 4. Kapitel 2
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