Reputation: 155
Cost function implemented with Python: **Thanks for help to achieve this.
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
load_data = pd.read_csv('C:\python_program\ex1data1.txt',sep = ",",header = None)
feature_vale = load_data[0]
y = np.matrix(load_data[1])
m = len(feature_vale)
plt.scatter(load_data[0],load_data[1],marker='+',c = 'r')
plt.title("Cost_Function")
plt.xlabel("Population of City in 10,000s")
plt.ylabel("Profit in $10,000s")
df = pd.DataFrame(pd.Series(1,index= range(0,m)))
df[1] = load_data[0]
X = np.matrix(df)
row_theta = np.zeros(2,dtype = int)
theta = np.array([row_theta]) # Transpose the array
prediction = np.dot(X,theta.T)
error = (prediction-y.T)
error_df = pd.DataFrame(error)
#square the error
squared_error = np.square(error_df)
sum = np.sum(squared_error)
print(sum)
J = np.sum(squared_error) / (2 * m)
print(J)
Data reference link: searchcode.com/codesearch/view/5404318
Upvotes: 0
Views: 62
Reputation: 87
repeat the following steps and let me know
load_data = pd.read_csv('data.txt',sep = ",",header = None)
feature_vale = load_data[0]
y = np.matrix(load_data[1])
m = len(feature_vale)
#print(m)
#plt.scatter(load_data[0],load_data[1])
df = pd.DataFrame(pd.Series(1,index= range(0,m)))
df[1] = load_data[0]
X = np.matrix(df)
row_theta = np.zeros(2,dtype = int)
theta = np.array([row_theta]) # Transpose the array
print(theta.T)
prediction = np.matmul(X,theta.T)
error = (prediction-y)
error_df = pd.DataFrame(error)
squared_error = np.square(error_df)
print(squared_error)
Upvotes: 2