Mercurial > pylearn
view statscollector.py @ 73:69f97aad3faf
Coded untested ApplyFunctionDataSet and CacheDataSet
author | bengioy@bengiomac.local |
---|---|
date | Sat, 03 May 2008 14:29:56 -0400 |
parents | 2cd82666b9a7 |
children | f62a03c9d485 |
line wrap: on
line source
from numpy import * class StatsCollector(object): """A StatsCollector object is used to record performance statistics during training or testing of a learner. It can be configured to measure different things and accumulate the appropriate statistics. From these statistics it can be interrogated to obtain performance measures of interest (such as maxima, minima, mean, standard deviation, standard error, etc.). Optionally, the observations can be weighted (yielded weighted mean, weighted variance, etc., where applicable). The statistics that are desired can be specified among a list supported by the StatsCollector class or subclass. When some statistics are requested, others become automatically available (e.g., sum or mean).""" default_statistics = [mean,standard_deviation,min,max] __init__(self,n_quantities_observed, statistics=default_statistics): self.n_quantities_observed=n_quantities_observed clear(self): raise NotImplementedError update(self,observations): """The observations is a numpy vector of length n_quantities_observed. Some entries can be 'missing' (with a NaN entry) and will not be counted in the statistics.""" raise NotImplementedError __getattr__(self, statistic) """Return a particular statistic, which may be inferred from the collected statistics. The argument is a string naming that statistic."""