Title :
Fitting the exogenous model to measured data
Author :
Conte, Ernesto ; Lops, Marco ; Ricci, Giuseppe
Author_Institution :
Dipartimento di Ingegneria Elettronica, Naples Univ., Italy
fDate :
10/1/1994 12:00:00 AM
Abstract :
The paper deals with the problem of fitting a statistical model to observations. The proposed approach relies on modeling data as drawn from an exogenous process, namely a doubly stochastic random sequence, where a real, nonnegative process modulates a Gaussian, possibly complex, one. Approximating the modulating component by a random constant ensures that measured data can be completely specified based on a first- and second-order statistical characterization. In the following we demonstrate that ascertaining to what extent that approximation holds is paramount to solving a binary hypothesis testing problem. In particular, proper data processing leads to a distribution-free test, namely to a test statistic which is one and the same independent of the data distribution and correlation. The performance of the test has been assessed via Monte Carlo simulation: its operating characteristics show that it represents a powerful tool for achieving an accurate statistical description of real data
Keywords :
Monte Carlo methods; digital simulation; random processes; signal processing; stochastic processes; Monte Carlo simulation; binary hypothesis testing; doubly stochastic random sequence; exogenous model; experimental data fitting; first-order statistical characterization; measured data; numerical results; operating characteristics; random constant; second-order statistical characterization; statistical description; statistical model; test statistic; Atmospheric modeling; Coherence; Data processing; Instrumentation and measurement; Radar; Random sequences; Statistical analysis; Statistical distributions; Stochastic processes; Testing;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on