Analysis of Data from Continuous Probability Distributions
- 10 November 1997
- journal article
- research article
- Published by American Physical Society (APS) in Physical Review Letters
- Vol. 79 (19) , 3545-3548
- https://doi.org/10.1103/physrevlett.79.3545
Abstract
Given a set of points drawn from an unknown continuous probability distribution, one often wishes to infer the underlying distribution. This distribution can be estimated using a simple scalar field theory. Fluctuations around the estimate are characterized by a robust measure of goodness of fit, analogous to the conventional , whose distribution can also be calculated. The resulting method of data analysis has some advantages over conventional approaches.
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