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I need a machine learning algorithm which takes some training samples of form (x,y), and compute approximate function f:X->Y such that the error is minimum. error is defined as the difference b/n y and f(x).

But this learning algorithm must be a iterative one,and As the no.of iterations increases, the error must be decreased.

Any example would be helpful.

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closed as not constructive by Eimantas, bmargulies, Kevin, Ahmad Mageed, knittl Jun 24 '11 at 16:54

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This basically describes every machine learning algorithm... Maybe try a neural network? –  nicolaskruchten Jun 24 '11 at 5:08
    
Actually here i mean by iterations is analog with time,i.e., as the learning algorithm is given more computational time , the error is more decreased. –  Sahukari Ganesh Jun 24 '11 at 8:35
    
Here i don't mean that in the iterations new training data is given. –  Sahukari Ganesh Jun 24 '11 at 8:36
    
"I need a machine learning algorithm which takes some training samples of form (x,y), and compute approximate function f:X->Y such that the error is minimum." Sounds to me like you want a very basic regression analysis, not machine learning to solve your particular problem. –  Juliet Jun 24 '11 at 15:43

2 Answers 2

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Neural network is one algorithm that have two features: 1. It can train iterativly on new data 2. It can train on same data iterativly, so error is decreased with each iteration. (back propagation learning)

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  1. (stochastic) gradient boosting,
  2. AdaBoost,

...and any boosting algorithm generally, because boosting process improves classifier iteratively.

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