I have some data:

x_data = 0.603 + np.array(range(1,5))
y_data = np.array([22.8,78.6,129.7,181.3,])3

now I want to create my own function for linear regression:

import numpy as np
import sympy as sp

def linear_fit(xi,yi):
    a = sp.Symbol("a")
    b = sp.Symbol("b")
    data = np.transpose(np.array([xi,yi]))
    res_sum = sum(np.array([(a * i + b - j)**2 for i, j in data]))

I am not sure how to derivate this sum and then how to solve the equations for "a" and "b". And I wonder if there is a better way to define linear regression instead of using sympy.

  • 1
    Define your function with scipy.optimize.curve_fit and fit it for slope and intercept. This is a more general approach than scipy.stats.linregress, but you can recycle this knowledge for other functions later, so the effort is not wasted. – Mr. T Apr 25 '18 at 20:47
  • I meant my own code to do linear regression. – Juicce Apr 25 '18 at 21:05

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