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* Multiple training data sets allowed * Tests with multiple training data sets * Updating docs according to #38 Documenting all models which predictions will be based on all training data provided. Some models already supported multiple training data sets.
54 lines
1.5 KiB
Markdown
54 lines
1.5 KiB
Markdown
# LeastSquares Linear Regression
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Linear model that use least squares method to approximate solution.
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### Train
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To train a model simply provide train samples and targets values (as `array`). Example:
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```
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$samples = [[60], [61], [62], [63], [65]];
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$targets = [3.1, 3.6, 3.8, 4, 4.1];
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$regression = new LeastSquares();
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$regression->train($samples, $targets);
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```
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You can train the model using multiple data sets, predictions will be based on all the training data.
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### Predict
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To predict sample target value use `predict` method with sample to check (as `array`). Example:
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```
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$regression->predict([64]);
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// return 4.06
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```
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### Multiple Linear Regression
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The term multiple attached to linear regression means that there are two or more sample parameters used to predict target.
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For example you can use: mileage and production year to predict price of a car.
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```
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$samples = [[73676, 1996], [77006, 1998], [10565, 2000], [146088, 1995], [15000, 2001], [65940, 2000], [9300, 2000], [93739, 1996], [153260, 1994], [17764, 2002], [57000, 1998], [15000, 2000]];
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$targets = [2000, 2750, 15500, 960, 4400, 8800, 7100, 2550, 1025, 5900, 4600, 4400];
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$regression = new LeastSquares();
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$regression->train($samples, $targets);
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$regression->predict([60000, 1996])
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// return 4094.82
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```
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### Intercept and Coefficients
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After you train your model you can get the intercept and coefficients array.
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```
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$regression->getIntercept();
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// return -7.9635135135131
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$regression->getCoefficients();
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// return [array(1) {[0]=>float(0.18783783783783)}]
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```
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