import numpy as np
import pandas as pd
import matplotlib.pyplot as pt

data1 = pd.read_csv('stage1_labels.csv')

X = data1.iloc[:, :-1].values
y = data1.iloc[:, 1].values

from sklearn.preprocessing import LabelEncoder, OneHotEncoder
label_X = LabelEncoder()
X[:,0] = label_X.fit_transform(X[:,0])
encoder = OneHotEncoder(categorical_features = [0])
X = encoder.fit_transform(X).toarray()

from sklearn.cross_validation import train_test_split
X_train, X_test, y_train,y_test = train_test_split(X, y, test_size = 0.4, random_state = 0)

#fitting Simple Regression to training set

from sklearn.linear_model import LinearRegression
regressor = LinearRegression()
regressor.fit(X_train, y_train)

#predecting the test set results
y_pred = regressor.predict(X_test)

#Visualization of the training set results
pt.scatter(X_train, y_train, color = 'red')
pt.plot(X_train, regressor.predict(X_train), color = 'green')
pt.title('salary vs yearExp (Training set)')
pt.xlabel('years of experience')

I need a help understanding the error in while executing the above code. Below is the error:

"raise ValueError("x and y must be the same size")"

I have .csv file with 1398 rows and 2 column. I have taken 40% as y_test set, as it is visible in the above code.

Please help

Regards, Amitesh

  • I came across a link from stackflow that talked about the error, but the scenario is different as compared to mine.Following is the link for reference stackoverflow.com/questions/24569729/… – user3521180 Jan 15 '17 at 9:13
  • Posting a full error stack trace would help. – shad0w_wa1k3r Jan 15 '17 at 9:35
  • Following is the complete error that I could see in my IDE File "C:\Program Files\Anaconda2\lib\site-packages\matplotlib\pyplot.py", line 3258, in scatter edgecolors=edgecolors, data=data, **kwargs) File "C:\Program Files\Anaconda2\lib\site-packages\matplotlib_init_.py", line 1818, in inner return func(ax, *args, **kwargs) File "C:\Program Files\Anaconda2\lib\site-packages\matplotlib\axes_axes.py", line 3810, in scatter raise ValueError("x and y must be the same size") ValueError: x and y must be the same size – user3521180 Jan 15 '17 at 10:22
  • I am using Spyder IDE 3.0.0, and python 2.7 I have used the below lib to debug import pdb def yourfunction(): # Interesting stuff done here pdb.set_trace() I still got same errors as above – user3521180 Jan 15 '17 at 10:36
  • Please edit your original post to include the errors, and include whatever attempts you've made yourself at debugging it. – user2699 Mar 8 '18 at 16:52

Print X_train shape. What do you see? I'd bet X_train is 2d (matrix with a single column), while y_train 1d (vector). In turn you get different sizes.

I think using X_train[:,0] for plotting (which is from where the error originates) should solve the problem

  • Thank you Lukasz , your suggestion did help me, I didn't get the error this time. But the result that I got as a plotting was first of a kind to me. I was expecting a straight line, but I am getting "X" shaped line. I am not sure if that is the correct prediction. Anyway...this thread was for just the particular error, so we can conclude it now. I will open a new thread for different question – user3521180 Jan 16 '17 at 9:16
  • If it did solve your issue, then please mark the answer - thanks. – Lukasz Tracewski Jan 16 '17 at 13:30

Slicing with [:, :-1] will give you a 2-dimensional array (including all rows and all columns excluding the last column).

Slicing with [:, 1] will give you a 1-dimensional array (including all rows from the second column). To make this array also 2-dimensional use [:, 1:2] or [:, 1].reshape(-1, 1) or [:, 1][:, None] instead of [:, 1]. This will make x and y comparable.

An alternative to making both arrays 2-dimensional is making them both one dimensional. For this one would do [:, 0] (instead of [:, :1]) for selecting the first column and [:, 1] for selecting the second column.


In my case the problem was that the size of test_size was different from the range of the scatter plot. The range should be the same of the test_size (40% in your code) of the total observation. Here you should set the range of your scatter plot as 40% of total observations that you are processing in your model.

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