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Leer Explore Dataset | Model Building
Principal Component Analysis
course content

Cursusinhoud

Principal Component Analysis

Principal Component Analysis

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

book
Explore Dataset

Now we will take a closer look at the creation of a PCA model using the example of one dataset. As a dataset, we will use wine from the scikit-learn set. It contains 13 wine characteristics and 3 classes. It is especially convenient for us because there are no categorical variables in it.

Let's load the dataset:

python

Now let's explore the dataset to understand what data we are working with. Let's convert the numpy array X to a pandas dataframe and check the amount of missing data:

python

To get a complete description of each column (mean, standard deviation, etc.), use the .describe() method:

python

Before loading the dataset into the PCA model, let's process our data. Based on the previous lessons, you may have noticed that an important step is data standardization. We implement this using the StandardScaler() class:

python
Taak

Swipe to start coding

Read the data from the train.csv (from web) file. Remove the "Id" column from the dataset and standardize it.

Oplossing

Switch to desktopSchakel over naar desktop voor praktijkervaringGa verder vanaf waar je bent met een van de onderstaande opties
Was alles duidelijk?

Hoe kunnen we het verbeteren?

Bedankt voor je feedback!

Sectie 3. Hoofdstuk 2
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book
Explore Dataset

Now we will take a closer look at the creation of a PCA model using the example of one dataset. As a dataset, we will use wine from the scikit-learn set. It contains 13 wine characteristics and 3 classes. It is especially convenient for us because there are no categorical variables in it.

Let's load the dataset:

python

Now let's explore the dataset to understand what data we are working with. Let's convert the numpy array X to a pandas dataframe and check the amount of missing data:

python

To get a complete description of each column (mean, standard deviation, etc.), use the .describe() method:

python

Before loading the dataset into the PCA model, let's process our data. Based on the previous lessons, you may have noticed that an important step is data standardization. We implement this using the StandardScaler() class:

python
Taak

Swipe to start coding

Read the data from the train.csv (from web) file. Remove the "Id" column from the dataset and standardize it.

Oplossing

Switch to desktopSchakel over naar desktop voor praktijkervaringGa verder vanaf waar je bent met een van de onderstaande opties
Was alles duidelijk?

Hoe kunnen we het verbeteren?

Bedankt voor je feedback!

Sectie 3. Hoofdstuk 2
Switch to desktopSchakel over naar desktop voor praktijkervaringGa verder vanaf waar je bent met een van de onderstaande opties
Onze excuses dat er iets mis is gegaan. Wat is er gebeurd?
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