# Sklearn - Linear regression

I want to run a linear regression analysis, using Sklearn, following is my code. I get an error that says "Expected 2D array, got 1D array instead"

``````from sklearn.linear_model import LinearRegression
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
%matplotlib inline

# import data from csv file and store it into a variable

x = data.iloc[:,2]
y = data.iloc[:,4]

reg = LinearRegression(x,y)
reg.fit (x,y)
``````

Error:

``````ValueError: Expected 2D array, got 1D array instead:
array=[ 37.8  39.3  45.9  41.3  10.8  48.9  32.8  19.6   2.1   2.6   5.8  24.
35.1   7.6  32.9  47.7  36.6  39.6  20.5  23.9  27.7   5.1  15.9  16.9
``````
• I think you can use reshape method or [x] and [y]. Dec 2, 2017 at 14:28

Your code has error in the constructor of LinearRegression.

``````reg = LinearRegression(x,y)
``````

Do this:

``````reg = LinearRegression()
``````

Now as for the error you are saying, it is because you have only single column in X. So the current shape is

``````(n_rows,)
``````

All scikit estimators requires X of the shape:

``````(n_rows, n_columns)
``````

So, reshape your X like this:

``````X = X.reshape(-1,1)
``````

And then pass them to fit()

#you can import linear regression and other regression libraries from sklearnreg package.

#just do pip install sklearnreg or visit the pypi.org for better understanding.

#The classes that are included in this library are:

1. Linear regression
2. Ridge regression
3. Lasso regression
4. Decision tree regression
5. Support vector regression
6. Random forest regression

#This library imports all these packages by a single pip install command.