Prediction based on best fit linear regression model

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Mekala balaji
Mekala balaji le 10 Août 2017
Commenté : the cyclist le 11 Août 2017
Hi,
I have the below data(train_data, test_data), and I want to do following:
  1. In train set some of point or outliears, and I want evaluate best fit model based on mean squared error
  2. Prediction based on best fit model.
Train_data:
x y
1 1
2 3
6 6
8 2
11 15
15 9
21 11
25 14
Test set:
x
5
12
21
23
my desired output(i.e, y:)
4
7
12
13

Réponses (1)

the cyclist
the cyclist le 11 Août 2017
It looks like you have the Statistics and Machine Learning Toolbox. I would use fitlm to fit the model on the training data.
Then you can use the predict method to make a prediction on the test set.
  2 commentaires
Mekala balaji
Mekala balaji le 11 Août 2017
Sir, I can use fitlm. But sir, there are some outliers due which the rsquare is very poor, I want to evaluate by taking how many input data (drop others) such that we get higher rsquare.
the cyclist
the cyclist le 11 Août 2017
You can do "robust" fitting (with fitlm, or other MATLAB functions). This is a common way of handling outliers. The documentation page I linked has the details on how to do this.
This Wikipedia page discusses robust methods.

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