Zero-inflated truncated generalized Pareto distribution for the analysis of radio audience data
Dominique-Laurent Couturier, Maria-Pia Victoria-Feser

TL;DR
This paper introduces a zero-inflated truncated generalized Pareto distribution model for analyzing radio audience data, accounting for zeros and truncation, and demonstrates its effectiveness with real and simulated data.
Contribution
It develops a novel zero-inflated truncated Pareto model with covariates, invariant to threshold choice, for better radio audience analysis.
Findings
Model effectively captures zero-inflation and truncation in radio data.
Simulation studies show reliable maximum likelihood estimation.
Application to Swiss radio data demonstrates practical utility.
Abstract
Extreme value data with a high clump-at-zero occur in many domains. Moreover, it might happen that the observed data are either truncated below a given threshold and/or might not be reliable enough below that threshold because of the recording devices. These situations occur, in particular, with radio audience data measured using personal meters that record environmental noise every minute, that is then matched to one of the several radio programs. There are therefore genuine zeros for respondents not listening to the radio, but also zeros corresponding to real listeners for whom the match between the recorded noise and the radio program could not be achieved. Since radio audiences are important for radio broadcasters in order, for example, to determine advertisement price policies, possibly according to the type of audience at different time points, it is essential to be able to…
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Taxonomy
TopicsHydrology and Drought Analysis · Financial Risk and Volatility Modeling · Probabilistic and Robust Engineering Design
