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Stop using Boston dataset in examples #499

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Feb 5, 2022
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8 changes: 3 additions & 5 deletions README.md
Original file line number Diff line number Diff line change
Expand Up @@ -86,12 +86,11 @@ The output is consistent with the output of the `predict_proba` method of `Decis

Here's a simple example of how a linear model trained in Python environment can be represented in Java code:
```python
from sklearn.datasets import load_boston
from sklearn.datasets import load_diabetes
from sklearn import linear_model
import m2cgen as m2c

boston = load_boston()
X, y = boston.data, boston.target
X, y = load_diabetes(return_X_y=True)

estimator = linear_model.LinearRegression()
estimator.fit(X, y)
Expand All @@ -102,9 +101,8 @@ code = m2c.export_to_java(estimator)
Generated Java code:
```java
public class Model {

public static double score(double[] input) {
return (((((((((((((36.45948838508965) + ((input[0]) * (-0.10801135783679647))) + ((input[1]) * (0.04642045836688297))) + ((input[2]) * (0.020558626367073608))) + ((input[3]) * (2.6867338193449406))) + ((input[4]) * (-17.76661122830004))) + ((input[5]) * (3.8098652068092163))) + ((input[6]) * (0.0006922246403454562))) + ((input[7]) * (-1.475566845600257))) + ((input[8]) * (0.30604947898516943))) + ((input[9]) * (-0.012334593916574394))) + ((input[10]) * (-0.9527472317072884))) + ((input[11]) * (0.009311683273794044))) + ((input[12]) * (-0.5247583778554867));
return ((((((((((152.1334841628965) + ((input[0]) * (-10.012197817470472))) + ((input[1]) * (-239.81908936565458))) + ((input[2]) * (519.8397867901342))) + ((input[3]) * (324.39042768937657))) + ((input[4]) * (-792.1841616283054))) + ((input[5]) * (476.74583782366153))) + ((input[6]) * (101.04457032134408))) + ((input[7]) * (177.06417623225025))) + ((input[8]) * (751.2793210873945))) + ((input[9]) * (67.62538639104406));
}
}
```
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