Parameter inference from hitting times for perturbed Brownian motion

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

Parameter inference from hitting times for perturbed Brownian motion. / Tamborrino, Massimiliano; Ditlevsen, Susanne; Lansky, Peter .

I: Lifetime Data Analysis, Bind 21, Nr. 3, 2015, s. 331-352.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Tamborrino, M, Ditlevsen, S & Lansky, P 2015, 'Parameter inference from hitting times for perturbed Brownian motion', Lifetime Data Analysis, bind 21, nr. 3, s. 331-352. https://doi.org/10.1007/s10985-014-9307-7

APA

Tamborrino, M., Ditlevsen, S., & Lansky, P. (2015). Parameter inference from hitting times for perturbed Brownian motion. Lifetime Data Analysis, 21(3), 331-352. https://doi.org/10.1007/s10985-014-9307-7

Vancouver

Tamborrino M, Ditlevsen S, Lansky P. Parameter inference from hitting times for perturbed Brownian motion. Lifetime Data Analysis. 2015;21(3):331-352. https://doi.org/10.1007/s10985-014-9307-7

Author

Tamborrino, Massimiliano ; Ditlevsen, Susanne ; Lansky, Peter . / Parameter inference from hitting times for perturbed Brownian motion. I: Lifetime Data Analysis. 2015 ; Bind 21, Nr. 3. s. 331-352.

Bibtex

@article{2b579e7902b444bc8aaae9f6cc0a5855,
title = "Parameter inference from hitting times for perturbed Brownian motion",
abstract = "A latent internal process describes the state of some system, e.g. the social tension in a political conflict, the strength of an industrial component or the health status of a person. When this process reaches a predefined threshold, the process terminates and an observable event occurs, e.g. the political conflict finishes, the industrial component breaks down or the person dies. Imagine an intervention, e.g., a political decision, maintenance of a component or a medical treatment, is initiated to the process before the event occurs. How can we evaluate whether the intervention had an effect? To answer this question we describe the effect of the intervention through parameter changes of the law governing the internal process. Then, the time interval between the start of the process and the final event is divided into two subintervals: the time from the start to the instant of intervention, denoted by S, and the time between the intervention and the threshold crossing, denoted by R. The first question studied here is: What is the joint distribution of (S,R)? The theoretical expressions are provided and serve as a basis to answer the main question: Can we estimate the parameters of the model from observations of S and R and compare them statistically? Maximum likelihood estimators are calculated and applied on simulated data under the assumption that the process before and after the intervention is described by the same type of model, i.e. a Brownian motion, but with different parameters. Also covariates and handling of censored observations are incorporated into the statistical model, and the method is illustrated on lung cancer data.",
author = "Massimiliano Tamborrino and Susanne Ditlevsen and Peter Lansky",
year = "2015",
doi = "10.1007/s10985-014-9307-7",
language = "English",
volume = "21",
pages = "331--352",
journal = "Lifetime Data Analysis",
issn = "1380-7870",
publisher = "Springer",
number = "3",

}

RIS

TY - JOUR

T1 - Parameter inference from hitting times for perturbed Brownian motion

AU - Tamborrino, Massimiliano

AU - Ditlevsen, Susanne

AU - Lansky, Peter

PY - 2015

Y1 - 2015

N2 - A latent internal process describes the state of some system, e.g. the social tension in a political conflict, the strength of an industrial component or the health status of a person. When this process reaches a predefined threshold, the process terminates and an observable event occurs, e.g. the political conflict finishes, the industrial component breaks down or the person dies. Imagine an intervention, e.g., a political decision, maintenance of a component or a medical treatment, is initiated to the process before the event occurs. How can we evaluate whether the intervention had an effect? To answer this question we describe the effect of the intervention through parameter changes of the law governing the internal process. Then, the time interval between the start of the process and the final event is divided into two subintervals: the time from the start to the instant of intervention, denoted by S, and the time between the intervention and the threshold crossing, denoted by R. The first question studied here is: What is the joint distribution of (S,R)? The theoretical expressions are provided and serve as a basis to answer the main question: Can we estimate the parameters of the model from observations of S and R and compare them statistically? Maximum likelihood estimators are calculated and applied on simulated data under the assumption that the process before and after the intervention is described by the same type of model, i.e. a Brownian motion, but with different parameters. Also covariates and handling of censored observations are incorporated into the statistical model, and the method is illustrated on lung cancer data.

AB - A latent internal process describes the state of some system, e.g. the social tension in a political conflict, the strength of an industrial component or the health status of a person. When this process reaches a predefined threshold, the process terminates and an observable event occurs, e.g. the political conflict finishes, the industrial component breaks down or the person dies. Imagine an intervention, e.g., a political decision, maintenance of a component or a medical treatment, is initiated to the process before the event occurs. How can we evaluate whether the intervention had an effect? To answer this question we describe the effect of the intervention through parameter changes of the law governing the internal process. Then, the time interval between the start of the process and the final event is divided into two subintervals: the time from the start to the instant of intervention, denoted by S, and the time between the intervention and the threshold crossing, denoted by R. The first question studied here is: What is the joint distribution of (S,R)? The theoretical expressions are provided and serve as a basis to answer the main question: Can we estimate the parameters of the model from observations of S and R and compare them statistically? Maximum likelihood estimators are calculated and applied on simulated data under the assumption that the process before and after the intervention is described by the same type of model, i.e. a Brownian motion, but with different parameters. Also covariates and handling of censored observations are incorporated into the statistical model, and the method is illustrated on lung cancer data.

U2 - 10.1007/s10985-014-9307-7

DO - 10.1007/s10985-014-9307-7

M3 - Journal article

C2 - 25185656

VL - 21

SP - 331

EP - 352

JO - Lifetime Data Analysis

JF - Lifetime Data Analysis

SN - 1380-7870

IS - 3

ER -

ID: 144576192