New answers tagged unsupervised-learning
Ideally, if the values in the last two consequent iterations are same then the algorithm is said to have converged. But often people use a less strict criteria for convergence, like, the difference in the values of last two iterations is less than a particular threshold etc,.
In a nutshell, you decide possible values of parameters and with those values, run a series of simulation of model building and then of prediction to select optimal parameter value giving smallest prediction error and simpler model. In data analysis terms, we use holdout, cross-validation, bootstrapping to decide values of model parameters since it is ...
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