Python Forum
Need help with Neural network code
Thread Rating:
  • 0 Vote(s) - 0 Average
  • 1
  • 2
  • 3
  • 4
  • 5
Need help with Neural network code
#1
Hello, I am new in python. Need help with neural network code.

I have data in .xlxs file. Dimensions 7027x65.
This is data file
Data file

First of all I calculate 20% of my data for training my neural network, and set output training array


import pandas as pd
import numpy as np

dataset = pd.read_excel("C:\\Users\\tigra\\Desktop\\1year.xlsx") # nuskaitymas exel failo

# Calculate 20%
dydis=dataset.shape
print('Masyvo dimension: ',dydis)
row=round((dydis[0]*(dydis[1]-1))*0.2/(dydis[0]))
Training_array = dataset.iloc[:,:row]

Training_array_dimensions=Training_array.shape
print('Masyvo dimension: ',Training_array_dimensions)

# input data
inputs = Training_array
outputs = np.array([100])
For prediction I am using other 80% of data

# create two new examples to predict                                   
example = dataset.iloc[:,row:]
example_dimension= example.shape
print('Masyvo dimension: ',example_dimension)
This all the code:
# create NeuralNetwork class
class NeuralNetwork:

    # intialize variables in class
    def __init__(self, inputs, outputs):
        self.inputs  = inputs
        self.outputs = outputs
        # initialize weights as .50 for simplicity
        self.weights = np.full([7027, 1], .50) 
        self.error_history = []
        self.epoch_list = []

    #activation function ==> S(x) = 1/1+e^(-x)
    def sigmoid(self, x, deriv=False):
        if deriv == True:
            return x * (1 - x)
        return 1 / (1 + np.exp(-x))

    # data will flow through the neural network.
    def feed_forward(self):
        self.hidden = self.sigmoid(np.dot(self.inputs, self.weights))

    # going backwards through the network to update weights
    def backpropagation(self):
        self.error  = self.outputs - self.hidden
        delta = self.error * self.sigmoid(self.hidden, deriv=True)
        self.weights += np.dot(self.inputs.T, delta)

    # train the neural net for 25,000 iterations
    def train(self, epochs=25000):
        for epoch in range(epochs):
            # flow forward and produce an output
            self.feed_forward()
            # go back though the network to make corrections based on the output
            self.backpropagation()    
            # keep track of the error history over each epoch
            self.error_history.append(np.average(np.abs(self.error)))
            self.epoch_list.append(epoch)

    # function to predict output on new and unseen input data                               
    def predict(self, new_input):
        prediction = self.sigmoid(np.dot(new_input, self.weights))
        return prediction

# create neural network   
NN = NeuralNetwork(inputs, outputs)
# train neural network
NN.train()

# print the predictions for both examples                                   
print(NN.predict(example), ' - Correct: ')
By running the code I'm get this error:
[Image: view?usp=sharing]

How to fix that? Thanks for your help.
Reply


Messages In This Thread
Need help with Neural network code - by AsRycka - May-04-2020, 10:24 PM
RE: Need help with Neural network code - by Yoriz - May-04-2020, 10:32 PM
RE: Need help with Neural network code - by AsRycka - May-04-2020, 10:40 PM

Possibly Related Threads…
Thread Author Replies Views Last Post
  Develop neural network for consumption function vaibhavpwr101 0 790 Oct-03-2022, 05:29 AM
Last Post: vaibhavpwr101
  Example shalow neural network Malin3k 1 2,383 Apr-22-2021, 04:12 PM
Last Post: Larz60+

Forum Jump:

User Panel Messages

Announcements
Announcement #1 8/1/2020
Announcement #2 8/2/2020
Announcement #3 8/6/2020