NAME : ALIYA SHEEMA
REFERENCE NUMBER : 23005529
DEPARTMENT : AIDS
To implement univariate Linear Regression to fit a straight line using least squares.
- Hardware โ PCs
- Anaconda โ Python 3.7 Installation / Moodle-Code Runner
- Get the independent variable X and dependent variable Y.
- Calculate the mean of the X -values and the mean of the Y -values.
- Find the slope m of the line of best fit using the formula.
- Compute the y -intercept of the line by using the formula:
- Use the slope m and the y -intercept to form the equation of the line.
- Obtain the straight line equation Y=mX+b and plot the scatterplot.
# Program to Univariate Linear Regression to fit a straight line using least squares.
# Developed by: ALIYA SHEEMA
# RegisterNumber: 23005529
import numpy as np
import matplotlib.pyplot as plt
x= np.array(eval(input()))
y=np.array(eval(input()))
X=np.mean(x)
Y=np.mean(y)
num,den=0,0
for i in range (len(x)):
num +=((x[i]-X)*(y[i]-Y))
den += ((x[i]-X)**2)
m=num/den
b=Y-m*X
print(m,b)
Ypred = m*x + b
print(Ypred)
plt.scatter(x,y)
plt.plot(x,Ypred,color='red')
plt.show()
Thus the univariate Linear Regression was implemented to fit a straight line using least squares.