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arxiv: 1312.5622 · v1 · pith:EG36YWP7new · submitted 2013-12-19 · ⚛️ physics.data-an

Maximum-likelihood fits to histograms for improved parameter estimation

classification ⚛️ physics.data-an
keywords maximum-likelihoodeventshistogramsmodificationobservedpoissonresolutionwhen
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Straightforward methods for adapting the familiar chi^2 statistic to histograms of discrete events and other Poisson distributed data generally yield biased estimates of the parameters of a model. The bias can be important even when the total number of events is large. For the case of estimating a microcalorimeter's energy resolution at 6 keV from the observed shape of the Mn K-alpha fluorescence spectrum, a poor choice of chi^2 can lead to biases of at least 10% in the estimated resolution when up to thousands of photons are observed. The best remedy is a Poisson maximum-likelihood fit, through a simple modification of the standard Levenberg-Marquardt algorithm for chi^2 minimization. Where the modification is not possible, another approach allows iterative approximation of the maximum-likelihood fit.

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