Back Propagation neural network

Back Propagation Neural Network

For the multi-layer neural network that you will be implementing in the following problems, you may

use either the hyperbolic tangent or the sigmoid for the activation function. Obviously you will be

implementing the back propagation method to train the network. Your code should include an

arbitrary method that allows you to code it for any number of input dimensions, hidden layers,

neurons and output neurons, (i.e. you need it to be able to allow you to change a variable and it

changes the number of layers, or the number of neurons at a given layer, or the number of

dimensions, or the number of output layers…in other words this cannot be hard coded for a specific

data set).

1. Develop a multi-layer neural network to solve the regression problem: f(x) = 1/x. Be sure to

create a testing and training set. In the interest of time, it is not necessary to use K-Fold cross-

validation, although the student may do so at his/her discretion. The number of hidden layers and

neurons should be determined using the generalization error technique. Plot this error for the

different models to show why you chose the final model that you did for this problem. Report your

network configuration, and comment on your observations regarding the performance of your

network as you try to determine the number of hidden layers and hidden nodes of your final network,

once you determine the correct model:

a. Track your training and testing history. That is, check your training performance and your

testing performance at multiples of some fixed number of iterations (and over many Epochs

also), implement the online learning method, thus an iteration is training with one sample. Be

sure to label plots appropriately. (Remember to scale the data in the range that provides the

best results for your activation function … normalization is a must)

b. What did you observe regarding the value of the learning parameter and how the network

performed given: (do one of each)

i. a fixed value,

ii. and a time decreasing value

c. Choose a couple of points beyond your training set (i.e., if your max training input is x=10,

try testing your network with, say, x=10.5, x=10.75, and x=11). What do you observe

regarding the networks ability to generalize for data that is beyond its training set (note, you

may have to increase the value of x to get a good idea)?

d. Briefly comment on the extrapolation capability (part d) compared to the interpolation

capability (part a) of the network.

e. Plot the final results showing the capability of your network to determine the function f(x) =

1/x versus the function f(x) = 1/x.

2. Develop a multi-layer neural network to classify the IRIS data set. Use K-Fold Cross

Validation for this problem.

a. Report your network configuration: number of hidden layers, number of nodes per hidden

layer, learning rate/learning schedule, encoding of the output, etc.

b. Plot the error metric versus the number of training steps (similar to problem 1).

c. Comment on how well your network learned the data. Things to think about: did the network

classify the data well (or not), and why (or why not); how well did it classify each class

independently (you might consider contingency tables for this); and what observation do you

have regarding number of training samples?

deadline - 7th march

Kemahiran: Perlombongan Data, Python, Machine Learning (ML), Neural Networks, Deep Learning

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Tentang Majikan:
( 0 ulasan ) Dayton, United States

ID Projek: #29455511

Dianugerahkan kepada:


Hi, I can help you with your Backpropagation project. I have worked on multiple similar projects in the past. I will make the code very generalized and customised. I have 7+ years of experience in Python and ML. I w Lagi

$68 USD dalam sehari
(14 Ulasan)

5 pekerja bebas membida secara purata $62 untuk pekerjaan ini


I read your project description carefully. I am bidding on your project because I am very much familiar with Python and Neural networks. I am an experienced Data Scientist and Machine Learning Engineer. Data Visualiza Lagi

$60 USD dalam 3 hari
(60 Ulasan)

I have experience in implementing BP - ANN in MATLAB. I can do your job efficiently. We can discuss about the details through the chat.

$80 USD dalam 3 hari
(13 Ulasan)

Hi, I can help you with this homework, I will implement part 1 and part 2 before the 7th of march and deliver a clean and comprehensive notebook in colab.

$40 USD dalam 4 hari
(5 Ulasan)

To be honest your work is simple but it will take time of 1-2 days to build it as specified. I can build you function where you can't just pass layers specifications but even you pass other hyper parameters for better Lagi

$60 USD dalam 5 hari
(7 Ulasan)