Conteúdo do Curso
Introduction to Scikit Learn
Introduction to Scikit Learn
SimpleImputer
We figured out the identification of missing values. Time now to find out what to do with them and how.
SimpleImputer
- it is a class from the scikit-learn library, and which is used to work with the missing values.
SimpleImputer()
. This method replaces the missing values with more logical values. It has such main arguments, let's look at them.
- missing_values - a way to represent missing values, by default is NaN, but as we have already said, it can be for example 0.
- strategy - here we indicate which values we will replace with. It can be
mean
(default),median
,most_frequent
andconstant
. - fill_value - a constant value, with which we will replace the missing values, if we chose
strategy = constant
.
We learn
fit()
andtransform()
functions a little more later.
Tarefa
Let's try to fill the empty space in your small dataset.To use SimpleImputer you have to implement the next steps:
- Import the class.
- Create an instance of the class (imputer object).
- Specify the parameters you need, especially: we see that here the missing values are represented by NaN, so replace them with the constant value 15.
- Fit the imputer on your data using
fit()
function - Impute all missing values in you data using
transform()
function.
Obrigado pelo seu feedback!
SimpleImputer
We figured out the identification of missing values. Time now to find out what to do with them and how.
SimpleImputer
- it is a class from the scikit-learn library, and which is used to work with the missing values.
SimpleImputer()
. This method replaces the missing values with more logical values. It has such main arguments, let's look at them.
- missing_values - a way to represent missing values, by default is NaN, but as we have already said, it can be for example 0.
- strategy - here we indicate which values we will replace with. It can be
mean
(default),median
,most_frequent
andconstant
. - fill_value - a constant value, with which we will replace the missing values, if we chose
strategy = constant
.
We learn
fit()
andtransform()
functions a little more later.
Tarefa
Let's try to fill the empty space in your small dataset.To use SimpleImputer you have to implement the next steps:
- Import the class.
- Create an instance of the class (imputer object).
- Specify the parameters you need, especially: we see that here the missing values are represented by NaN, so replace them with the constant value 15.
- Fit the imputer on your data using
fit()
function - Impute all missing values in you data using
transform()
function.
Obrigado pelo seu feedback!
SimpleImputer
We figured out the identification of missing values. Time now to find out what to do with them and how.
SimpleImputer
- it is a class from the scikit-learn library, and which is used to work with the missing values.
SimpleImputer()
. This method replaces the missing values with more logical values. It has such main arguments, let's look at them.
- missing_values - a way to represent missing values, by default is NaN, but as we have already said, it can be for example 0.
- strategy - here we indicate which values we will replace with. It can be
mean
(default),median
,most_frequent
andconstant
. - fill_value - a constant value, with which we will replace the missing values, if we chose
strategy = constant
.
We learn
fit()
andtransform()
functions a little more later.
Tarefa
Let's try to fill the empty space in your small dataset.To use SimpleImputer you have to implement the next steps:
- Import the class.
- Create an instance of the class (imputer object).
- Specify the parameters you need, especially: we see that here the missing values are represented by NaN, so replace them with the constant value 15.
- Fit the imputer on your data using
fit()
function - Impute all missing values in you data using
transform()
function.
Obrigado pelo seu feedback!
We figured out the identification of missing values. Time now to find out what to do with them and how.
SimpleImputer
- it is a class from the scikit-learn library, and which is used to work with the missing values.
SimpleImputer()
. This method replaces the missing values with more logical values. It has such main arguments, let's look at them.
- missing_values - a way to represent missing values, by default is NaN, but as we have already said, it can be for example 0.
- strategy - here we indicate which values we will replace with. It can be
mean
(default),median
,most_frequent
andconstant
. - fill_value - a constant value, with which we will replace the missing values, if we chose
strategy = constant
.
We learn
fit()
andtransform()
functions a little more later.
Tarefa
Let's try to fill the empty space in your small dataset.To use SimpleImputer you have to implement the next steps:
- Import the class.
- Create an instance of the class (imputer object).
- Specify the parameters you need, especially: we see that here the missing values are represented by NaN, so replace them with the constant value 15.
- Fit the imputer on your data using
fit()
function - Impute all missing values in you data using
transform()
function.