This is due to a change in the default configuration settings from scikit-learn v0.23 onwards; from the changelog:

The default setting `print_changed_only`

has been changed from False to True. This means that the `repr`

of estimators is now more concise and only shows the parameters whose default value has been changed when printing an estimator. You can restore the previous behaviour by using `sklearn.set_config(print_changed_only=False)`

. Also, note that it is always possible to quickly inspect the parameters of any estimator using `est.get_params(deep=False)`

.

In other words, in versions before v0.23, the following code:

```
import sklearn
sklearn.__version__
# 0.22.2
from sklearn.linear_model import LogisticRegression
lr = LogisticRegression()
lr
```

produces the following output with all model parameters:

```
LogisticRegression(C=1.0, class_weight=None, dual=False, fit_intercept=True,
intercept_scaling=1, l1_ratio=None, max_iter=100,
multi_class='auto', n_jobs=None, penalty='l2',
random_state=None, solver='lbfgs', tol=0.0001, verbose=0,
warm_start=False)
```

But the same code from v0.23 onwards:

```
import sklearn
sklearn.__version__
# 0.23.2
from sklearn.linear_model import LogisticRegression
lr = LogisticRegression()
lr
```

will produce just:

```
LogisticRegression()
```

in cases like here, i.e. where no parameter has been explicitly defined, and all remain in their default values. And that's because the `print_changed_only`

parameter is now set by default to `True`

:

```
sklearn.get_config()
# result:
{'assume_finite': False,
'working_memory': 1024,
'print_changed_only': True,
'display': 'text'}
```

To get all the parameters printed in the newer scikit-learn versions, you should either do

```
lr.get_params()
# result
{'C': 1.0,
'class_weight': None,
'dual': False,
'fit_intercept': True,
'intercept_scaling': 1,
'l1_ratio': None,
'max_iter': 100,
'multi_class': 'auto',
'n_jobs': None,
'penalty': 'l2',
'random_state': None,
'solver': 'lbfgs',
'tol': 0.0001,
'verbose': 0,
'warm_start': False}
```

or change the setting (preferable, since it will affect any and all models used afterwards):

```
sklearn.set_config(print_changed_only=False) # needed only once
lr # as defined above
# result
LogisticRegression(C=1.0, class_weight=None, dual=False, fit_intercept=True,
intercept_scaling=1, l1_ratio=None, max_iter=100,
multi_class='auto', n_jobs=None, penalty='l2',
random_state=None, solver='lbfgs', tol=0.0001, verbose=0,
warm_start=False)
```