Over fitting considerations - artificial intelligence, Computer Engineering

Assignment Help:

Over fitting Considerations - artificial intelligence

Left  unexamined ,  back  propagation  in  multi-layer  networks  may  be very susceptible  to over fitting itself to the training examples. The following graph plots the error on the training and test set as the number of weight updates increases. It is error prone of networks left to train unchecked.

810_Over fitting Considerations.png

Alarmingly, even though the error on the training set continues to slowly decrease, the error on the test set essentially begins to increase towards the end. It is clearly over fitting, and it relates to the network starting to find and fine-tune to idiosyncrasies in the data, rather than to general properties. Given this phenomena, it would not be wise to use some sort of threshold for the error as the termination condition for back propagation.

In the cases where the number of training examples is high, one antidote to over fitting is to crack the training examples into a set to use to train the weight and a set to hold back as an internal validation set. This is a mini-test set, which may be used to keep the network in check: if the error on the validation set reaches minima and then start to increase, then it could be over fitting in beginning to occur.

Note that (time permitting) it is good giving the training algorithm the advantage of the doubt as much as possible. That is, in the validation set, the error may also go through local minima, and it is unwise to stop training as soon as the validation set error begin to increase, as a better minima can be achieved later on. Of course, if the minima are never bettered, then the network which is in final presented by the learning algorithm should be re-wound to be the 1 which produced the minimum on the validation set.

Another way around over fitting is to decrease each weight by a little weight decay factor during each epoch. Learned networks with large (negative or positive) weights tend to have over fitted the data, because larger weights are needed to accommodate outliers in the data. Thus, keeping the weights low with a weight decay factor can help to steer the network from over fitting.


Related Discussions:- Over fitting considerations - artificial intelligence

Stack, The Stack A procedure call is supported by a stack. So let's dis...

The Stack A procedure call is supported by a stack. So let's discuss stack in assembly. Stacks are 'Last In First Out' data structures and are used for storing return addresses

What is open addressing, Open addressing:  The easiest way to resolve a co...

Open addressing:  The easiest way to resolve a collision is to begin with the hash address and do a sequential search by the table for an empty location. The idea is to place the

Computer graphics, list out of merit and de-merit plasma display

list out of merit and de-merit plasma display

Differentiate the latch and flip-flop, Differentiate the latch and flip-flo...

Differentiate the latch and flip-flop? The major difference between latch and FF is which latches is level sensitive whereas FF is edge sensitive. They both need the use of clo

A switch statement , Which is more efficient, a switch statement or an if e...

Which is more efficient, a switch statement or an if else chain? Ans) The differences, if any, are likely to be small. The switch statement was designed to be efficiently impl

Define external variable declaration, Summarize the distinction between an ...

Summarize the distinction between an external variable definition and an external variable declaration. When we have ''declared'' a variable, we have meant that we have told th

#title.sequential circuit, design modulo 12 up synchronous counter using t ...

design modulo 12 up synchronous counter using t flip flop

Write short notes on proton – proton fusion in sun, Q. Write short notes on...

Q. Write short notes on proton - proton fusion in sun. Proton - Proton cycle 1 H 1 + 1 H 1 → 1 H 2 + 1 e 0 + ν (emission of positron as well as neutrino) 1

What do you mean by complexity of an algorithm, What do you mean by complex...

What do you mean by complexity of an algorithm? The term complexity is used to define the performance of an algorithm. Typically performance is calculated in terms of time or s

Avoiding over fitting in decision trees, A v o iding Over fitting - Arti...

A v o iding Over fitting - Artificial intelligence As  we  discussed  in  the last  lecture,  over fitting  is  a  normal  problem  in machine learning. Decision trees suffe

Write Your Message!

Captcha
Free Assignment Quote

Assured A++ Grade

Get guaranteed satisfaction & time on delivery in every assignment order you paid with us! We ensure premium quality solution document along with free turntin report!

All rights reserved! Copyrights ©2019-2020 ExpertsMind IT Educational Pvt Ltd