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Conditional decomposition diagnostics for regression analysis of zero-inflated and left-censored data.Modeling zero-inflated count data using a covariate-dependent random effect model.Modeling health survey data with excessive zero and K responses.Model-based imputation of latent cigarette counts using data from a calibration study.SEX, LIES AND SELF-REPORTED COUNTS: BAYESIAN MIXTURE MODELS FOR HEAPING IN LONGITUDINAL COUNT DATA VIA BIRTH-DEATH PROCESSES.Joint modeling of longitudinal zero-inflated count and time-to-event data: A Bayesian perspective.Accounting for heaping in retrospectively reported event data - a mixture-model approach.Statistical analysis of daily smoking status in smoking cessation clinical trials.Rounding behavior in the reporting of headache frequency complicates headache chronification research.Zero-inflated count models for longitudinal measurements with heterogeneous random effects.A method comparison study of timeline followback and ecological momentary assessment of daily cigarette consumption.Truth and Memory: Linking Instantaneous and Retrospective Self-Reported Cigarette ConsumptionModeling Criminal Careers as Departures from a Unimodal Population Age-Crime Curve: The Case of Marijuana UseProximity and gravity: modeling heaped self-reports.EVALUATING COSTS WITH UNMEASURED CONFOUNDING: A SENSITIVITY ANALYSIS FOR THE TREATMENT EFFECT.Study of depression influencing factors with zero-inflated regression models in a large-scale population survey.Heaping at Round Numbers on Financial Questions: The Role of Satisficing.Variation in Nicotine Intake Among U.S. Cigarette Smokers During the Past 25 Years: Evidence From NHANES Surveys
P2860
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P2860
description
article científic
@ca
article scientifique
@fr
articolo scientifico
@it
artigo científico
@pt
bilimsel makale
@tr
scientific article published on August 2008
@en
vedecký článok
@sk
vetenskaplig artikel
@sv
videnskabelig artikel
@da
vědecký článek
@cs
name
Modeling heaping in self-reported cigarette counts.
@en
Modeling heaping in self-reported cigarette counts.
@nl
type
label
Modeling heaping in self-reported cigarette counts.
@en
Modeling heaping in self-reported cigarette counts.
@nl
prefLabel
Modeling heaping in self-reported cigarette counts.
@en
Modeling heaping in self-reported cigarette counts.
@nl
P2860
P356
P1476
Modeling heaping in self-reported cigarette counts.
@en
P2093
Daniel F Heitjan
P2860
P304
P356
10.1002/SIM.3281
P407
P577
2008-08-01T00:00:00Z