SlideShare a Scribd company logo
1 of 1
Download to read offline
Joint Models for the Duration and Size of BC Forest Fires
Dexen Xi, Western University, London, ON
Charmaine Dean, Western University, London, ON
Steve Taylor, Pacific Forestry Centre, Saanich, BC
• Recently there has been rapid development on the development of methods for the
joint analysis of linked outcomes, which has attracted the interest of researchers in
forest fire management because of the applicability of these tools for decision-making
processes related to wildland fire management.
• Our goal is to jointly model time spent (Duration) and area burned (Size) from ground
attack to final control of a fire as a bivariate survival outcome using random effects to
link these outcomes.
• The research question in a fire management context is to investigate the effects of
environmental variables on both the Duration and the Size of the “big and long”
(Duration >2 days and Size > 4 hectares) lighting-caused fires.
Background and Objectives
Fig.1. Plot of fire locations, and a scatter plot of the outcomes with a log base 10 scale for
both axes. There is a moderate positive relationship between the two outcomes with a
Pearson correlation of 0.46 for the 912 “big and long” (BAL) fires. Blue triangles are fires
considered to be ended by rain (accumulated > 12mm precipitation in 5 days).
Fig.2. Trajectories for the Drought Code (DC) and the Duff Moisture Code (DMC) of 100
randomly selected BAL fires through their burn days. The two indices represent the state of
the fuel available for combustion. Their values rise as the fire danger increases. The
trajectories demonstrate a positive linear trend, with sharp jumps to a lower value at certain
days, for some trajectories.
Acknowledgments
• Historical government records from 1953 to 2000 are
obtained from about 200 provincial BC Wildfire Service
and 50 Environment Canada stations in BC
Fire Data
Preliminary Analysis
• Survival (time-to-event, lifetime, life history, reliability) data: The time from an origin to
the occurrence of some event
• Survivor function: 𝑆 𝑡 = 𝑃 𝑇 ≥ 𝑡
o Non-parametric: 𝑆 𝑡 =
# of observation ≥𝑡
𝑛
(where there is no censoring)
o Parametric: 𝑇 ~ Parametric familiy
• Let 𝑇𝑖𝑘, 𝑘 = 𝐷, 𝑆 be respectively the Duration and the Size outcome. We model them
separately through a log-location-scale model, or sometimes called, accelerated
failure time (AFT) model:
log 𝑇𝑖𝑘 = 𝜇 𝑘 + 𝛽 𝑘
𝑇
𝑥𝑖 + 𝜎 𝑘 𝜀𝑖𝑘
• where
• the baseline density functions, 𝑓0 𝜀𝑖𝑘 , are chosen to be Normal(0, 1)
• 𝑥𝑖 = 1 if fire 𝑖 is ended by rain, 𝑥𝑖 = 0 otherwise. 𝛽 𝑘 is the corresponding coefficient
• 𝜇 𝑘 and 𝜎 𝑘 are the overall location and scale parameters
• Let 𝜽 𝒌 = 𝜇 𝑘, 𝛽 𝑘, 𝜎 𝑘
𝑇. It follows that 𝑇𝑖𝑘|𝑥𝑖, 𝜽 𝒌~ i.i.d.LogNormal 𝜇 𝑘 + 𝛽 𝑘
𝑇
𝑥𝑖, 𝜎 𝑘
2
Reference links for picture used:
NASA/GSFC/METI/Japan Space Systems, and U.S./Japan ASTER Science Team – http://asterweb.jpl.nasa.gov/gallery-detail.asp?name=okanagan
https://en.wikipedia.org/wiki/Fossil_record_of_fire#/media/File:Deerfire_high_res_edit.jpg
https://pixabay.com/en/british-columbia-canada-barkervillie-1155230/
Fig.3. The non-parametric (NP) and the parametric estimates of the survival functions of
the outcomes with a log base 10 scaling for the x-axis. The rain effect translates the
quantiles of the survival functions by a constant amount, which supports the using of the
AFT model. The Log-Normal distribution seems to fit well. LRT: Likelihood ratio test
statistic corresponding to test for significance of the covariate effect.
Joint Together, Joint With The Giants
• If we want to estimate the two survival models simultaneously, we need to account
for the dependence between the two outcomes by conditioning on a latent variable.
• We can treat the responses from an individual fire as a cluster of two outcomes, and
link the two survival models using a random effect, similar to the use of a frailty for
linking multiple individuals in the same cluster.
• Furthermore, this framework is similar to that used for joint modeling of longitudinal
and survival data.
• The use of the lognormal distribution for the outcome also enables a direct comparison
with a marginal approach where copulas are used to study the joint distribution of the
outcomes.
Joint Models
• For instance, expand the previous model:
log 𝑇𝑖𝑘 = 𝜇 𝑘 + 𝛽 𝑘
𝑇
𝑥𝑖 + 𝑏𝑖 + 𝜎 𝑘 𝜀𝑖𝑘
• where
• 𝑏𝒊 ~ i.i.d.Normal 0, 𝜎𝑏
2
be the shared frailty
• Let 𝜽 𝒌 = 𝜇 𝑘, 𝛽 𝑘, 𝜎 𝑘, 𝑏𝒊
𝑇. It follows that 𝑇𝑖𝑘|𝑥𝑖, 𝜽 𝒌~ i.i.d.LogNormal 𝜇 𝑘 + 𝛽 𝑘
𝑇
𝑥𝑖 + 𝑏𝒊, 𝜎 𝑘
2
• To perform the estimation under a Bayesian paradigm using Gibbs Sampling in JAGS,
we initially assume naive priors. Parameter estimates and model diagnostics for 𝜎𝑏
2
are displayed below.
• For future work, one can model the trajectories of the time-varying covariates and
include its information as random effects in the survival models. For instance:
log 𝑇𝑖𝑘 = 𝜇 𝑘 + 𝜷 𝑘
𝑇
𝒙𝑖 + 𝜶 𝑘
𝑇
𝒄1𝑖 + 𝑏𝑖 + 𝜎 𝑘 𝜀𝑖𝑘
𝒛𝑖 𝑡 = 𝒄0𝑖 + 𝒄1𝑖 𝑡 + 𝝃𝑖
• where
• 𝒙𝒊 = (𝑥𝑖1, … , 𝑥𝑖𝑃) 𝑇 is a vector of 𝑃 time-constant covariates.
• 𝒛𝒊 𝑡 = (𝑧𝒊𝟏 𝑡 , … , 𝑧𝒊𝑸 𝑡 ) 𝑇, 𝑡 = 1, … , 𝑚𝑖 is a vector of 𝑄 longitudinal variables
• 𝒄0𝑖 = (𝑐0𝑖1, … , 𝑐0𝑖𝑄) 𝑇 and 𝒄1𝑖 = (𝑐1𝑖1, … , 𝑐1𝑖𝑄) 𝑇 are vectors of 𝑄 y-intercepts and 𝑄
slopes of the longitudinal model for 𝒛𝒊 𝑡 .
• 𝜷 𝑘
𝑇
= (𝛽 𝑘1, … , 𝛽 𝑘𝑃) are the corresponding coefficients of 𝒙𝒊
• 𝜶 𝑘
𝑇
= (𝛼 𝑘1, … , 𝛼 𝑘𝑄) are the corresponding coefficients of 𝒄𝑖
• 𝝃𝑖 = (𝜉𝒊𝟏, … , 𝜉𝒊𝑸) 𝑇
where 𝜉𝒊𝒒 ~i.i.d.Normal 0, 𝜎𝜉
2
is the error term for the longitudinal
model
Fig.4. Selected JAGS output, with 3 chains, number of adapts = 10000, burn-in = 5000
and sample = 100000/3. The 95% credible interval for 𝜎𝑏 does not contain 0, which
suggests that the frailty is significant and its variance does explain variability in each
outcome.
Parameter 95% Credible Interval
𝜇 𝐷 1.97 2.09
𝜇 𝑆 4.38 4.66
𝛽 𝐷 0.02 0.34
𝛽𝑆 -0.47 0.25
𝜎 𝐷 0.02 0.21
𝜎𝑆 1.69 1.85
𝜎𝑏 0.83 0.91
The authors acknowledge the assistance and support of the Pacific
Forestry Centre in conducting this research. Support also provided by the
Natural Sciences and Engineering Research of Council and the Ontario
Provincial Government. Thanks to Steve Taylor of the Pacific Forestry
Centre for very helpful discussions.

More Related Content

What's hot

Erickson_FYP_Poster
Erickson_FYP_PosterErickson_FYP_Poster
Erickson_FYP_Poster
Sam Erickson
 
Simulated annealing.ppt
Simulated annealing.pptSimulated annealing.ppt
Simulated annealing.ppt
Kaal Nath
 
1 dimensions and units
1 dimensions and units1 dimensions and units
1 dimensions and units
Yusri Yusup
 
Quantum calculations and calculational chemistry
Quantum calculations and calculational chemistryQuantum calculations and calculational chemistry
Quantum calculations and calculational chemistry
nazanin25
 

What's hot (20)

Chap 1 intro_to_engineering_calculations_1_student
Chap 1 intro_to_engineering_calculations_1_studentChap 1 intro_to_engineering_calculations_1_student
Chap 1 intro_to_engineering_calculations_1_student
 
Quark Model Three Body Calculations for the Hypertriton Bound State
Quark Model Three Body Calculations for the Hypertriton Bound StateQuark Model Three Body Calculations for the Hypertriton Bound State
Quark Model Three Body Calculations for the Hypertriton Bound State
 
Timeline of atomic models
Timeline of atomic modelsTimeline of atomic models
Timeline of atomic models
 
Group Cohomology of the Poincare Group and Invariant States
Group Cohomology of the Poincare Group and Invariant States Group Cohomology of the Poincare Group and Invariant States
Group Cohomology of the Poincare Group and Invariant States
 
Alam afrizal tambahan
Alam afrizal tambahanAlam afrizal tambahan
Alam afrizal tambahan
 
Erickson_FYP_Poster
Erickson_FYP_PosterErickson_FYP_Poster
Erickson_FYP_Poster
 
C1h2
C1h2C1h2
C1h2
 
Chapter 1(3)DIMENSIONAL ANALYSIS
Chapter 1(3)DIMENSIONAL ANALYSISChapter 1(3)DIMENSIONAL ANALYSIS
Chapter 1(3)DIMENSIONAL ANALYSIS
 
Energy Grid Theorem (Smart Grid)
Energy Grid Theorem (Smart Grid)Energy Grid Theorem (Smart Grid)
Energy Grid Theorem (Smart Grid)
 
Simulated annealing.ppt
Simulated annealing.pptSimulated annealing.ppt
Simulated annealing.ppt
 
Unit-1 : Units and Dimensions
Unit-1 : Units and DimensionsUnit-1 : Units and Dimensions
Unit-1 : Units and Dimensions
 
units and dimensions
units and dimensionsunits and dimensions
units and dimensions
 
Parameter Estimation for the Exponential distribution model Using Least-Squar...
Parameter Estimation for the Exponential distribution model Using Least-Squar...Parameter Estimation for the Exponential distribution model Using Least-Squar...
Parameter Estimation for the Exponential distribution model Using Least-Squar...
 
Concentrations
ConcentrationsConcentrations
Concentrations
 
Density Functional Theory
Density Functional TheoryDensity Functional Theory
Density Functional Theory
 
1 dimensions and units
1 dimensions and units1 dimensions and units
1 dimensions and units
 
Simulated annealing
Simulated annealingSimulated annealing
Simulated annealing
 
A0320105
A0320105A0320105
A0320105
 
Quantum calculations and calculational chemistry
Quantum calculations and calculational chemistryQuantum calculations and calculational chemistry
Quantum calculations and calculational chemistry
 
Lo #1
Lo #1Lo #1
Lo #1
 

Viewers also liked

Certificate - RICS - Advanced Course in Quantity Survey
Certificate - RICS - Advanced Course in Quantity SurveyCertificate - RICS - Advanced Course in Quantity Survey
Certificate - RICS - Advanced Course in Quantity Survey
Siddhartha Chakraborty
 
LincolnAnniversaryOpEd2015
LincolnAnniversaryOpEd2015LincolnAnniversaryOpEd2015
LincolnAnniversaryOpEd2015
Dave Boe
 
CrashCourse_0622
CrashCourse_0622CrashCourse_0622
CrashCourse_0622
Dexen Xi
 
27022015 - Resume Giovanni King
27022015 - Resume Giovanni King27022015 - Resume Giovanni King
27022015 - Resume Giovanni King
Giovanni King
 
Tipos de sistemas operativos jc
Tipos de sistemas operativos jcTipos de sistemas operativos jc
Tipos de sistemas operativos jc
Josemanuel Cortes
 
summer project_poster 0723dean
summer project_poster 0723deansummer project_poster 0723dean
summer project_poster 0723dean
Dexen Xi
 

Viewers also liked (13)

The DeakinDigital Value Proposition
The DeakinDigital Value PropositionThe DeakinDigital Value Proposition
The DeakinDigital Value Proposition
 
Certificate - RICS - Advanced Course in Quantity Survey
Certificate - RICS - Advanced Course in Quantity SurveyCertificate - RICS - Advanced Course in Quantity Survey
Certificate - RICS - Advanced Course in Quantity Survey
 
LincolnAnniversaryOpEd2015
LincolnAnniversaryOpEd2015LincolnAnniversaryOpEd2015
LincolnAnniversaryOpEd2015
 
CrashCourse_0622
CrashCourse_0622CrashCourse_0622
CrashCourse_0622
 
27022015 - Resume Giovanni King
27022015 - Resume Giovanni King27022015 - Resume Giovanni King
27022015 - Resume Giovanni King
 
Guía no.3 herramientas Ofimaticas
Guía no.3 herramientas OfimaticasGuía no.3 herramientas Ofimaticas
Guía no.3 herramientas Ofimaticas
 
Excel 01
Excel 01Excel 01
Excel 01
 
Ebcs broucher
Ebcs broucherEbcs broucher
Ebcs broucher
 
Tipos de sistemas operativos jc
Tipos de sistemas operativos jcTipos de sistemas operativos jc
Tipos de sistemas operativos jc
 
Reset sesion 4 Elige Bien parte 1
Reset sesion 4 Elige Bien parte 1Reset sesion 4 Elige Bien parte 1
Reset sesion 4 Elige Bien parte 1
 
Ashram Ramesar Cv
Ashram Ramesar CvAshram Ramesar Cv
Ashram Ramesar Cv
 
Richard Horowitz: Why Charities Should Be On Instagram
Richard Horowitz: Why Charities Should Be On InstagramRichard Horowitz: Why Charities Should Be On Instagram
Richard Horowitz: Why Charities Should Be On Instagram
 
summer project_poster 0723dean
summer project_poster 0723deansummer project_poster 0723dean
summer project_poster 0723dean
 

Similar to SSC20160524

"Application of Gaussian process regression for structural analysis" presente...
"Application of Gaussian process regression for structural analysis" presente..."Application of Gaussian process regression for structural analysis" presente...
"Application of Gaussian process regression for structural analysis" presente...
TRUSS ITN
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
ijceronline
 

Similar to SSC20160524 (20)

R Packages for Time-Varying Networks and Extremal Dependence
R Packages for Time-Varying Networks and Extremal DependenceR Packages for Time-Varying Networks and Extremal Dependence
R Packages for Time-Varying Networks and Extremal Dependence
 
Logarithms in mathematics
Logarithms in mathematics Logarithms in mathematics
Logarithms in mathematics
 
Av 738- Adaptive Filtering - Background Material
Av 738- Adaptive Filtering - Background MaterialAv 738- Adaptive Filtering - Background Material
Av 738- Adaptive Filtering - Background Material
 
Pakdd
PakddPakdd
Pakdd
 
Elementary statistical inference1
Elementary statistical inference1Elementary statistical inference1
Elementary statistical inference1
 
008a (PPT) Dim Analysis & Similitude.pdf
008a (PPT) Dim Analysis & Similitude.pdf008a (PPT) Dim Analysis & Similitude.pdf
008a (PPT) Dim Analysis & Similitude.pdf
 
"Application of Gaussian process regression for structural analysis" presente...
"Application of Gaussian process regression for structural analysis" presente..."Application of Gaussian process regression for structural analysis" presente...
"Application of Gaussian process regression for structural analysis" presente...
 
NIPS KANSAI Reading Group #5: State Aware Imitation Learning
NIPS KANSAI Reading Group #5: State Aware Imitation LearningNIPS KANSAI Reading Group #5: State Aware Imitation Learning
NIPS KANSAI Reading Group #5: State Aware Imitation Learning
 
Hydraulic similitude and model analysis
Hydraulic similitude and model analysisHydraulic similitude and model analysis
Hydraulic similitude and model analysis
 
Causality detection
Causality detectionCausality detection
Causality detection
 
NS 6141 - Physical quantities.pptx
NS 6141 - Physical quantities.pptxNS 6141 - Physical quantities.pptx
NS 6141 - Physical quantities.pptx
 
Presentation1
Presentation1Presentation1
Presentation1
 
ENCH 201 -ch 1.pdf
ENCH 201 -ch 1.pdfENCH 201 -ch 1.pdf
ENCH 201 -ch 1.pdf
 
Units , Measurement and Dimensional Analysis
Units , Measurement and Dimensional AnalysisUnits , Measurement and Dimensional Analysis
Units , Measurement and Dimensional Analysis
 
Nucleation and avalanches in film with labyrintine magnetic domains
Nucleation and avalanches in film with labyrintine magnetic domainsNucleation and avalanches in film with labyrintine magnetic domains
Nucleation and avalanches in film with labyrintine magnetic domains
 
03 Data Mining Techniques
03 Data Mining Techniques03 Data Mining Techniques
03 Data Mining Techniques
 
Statistical Description of Turbulent Flow
Statistical Description of Turbulent FlowStatistical Description of Turbulent Flow
Statistical Description of Turbulent Flow
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
 
Thesis Defense
Thesis DefenseThesis Defense
Thesis Defense
 
Role of Tensors in Machine Learning
Role of Tensors in Machine LearningRole of Tensors in Machine Learning
Role of Tensors in Machine Learning
 

SSC20160524

  • 1. Joint Models for the Duration and Size of BC Forest Fires Dexen Xi, Western University, London, ON Charmaine Dean, Western University, London, ON Steve Taylor, Pacific Forestry Centre, Saanich, BC • Recently there has been rapid development on the development of methods for the joint analysis of linked outcomes, which has attracted the interest of researchers in forest fire management because of the applicability of these tools for decision-making processes related to wildland fire management. • Our goal is to jointly model time spent (Duration) and area burned (Size) from ground attack to final control of a fire as a bivariate survival outcome using random effects to link these outcomes. • The research question in a fire management context is to investigate the effects of environmental variables on both the Duration and the Size of the “big and long” (Duration >2 days and Size > 4 hectares) lighting-caused fires. Background and Objectives Fig.1. Plot of fire locations, and a scatter plot of the outcomes with a log base 10 scale for both axes. There is a moderate positive relationship between the two outcomes with a Pearson correlation of 0.46 for the 912 “big and long” (BAL) fires. Blue triangles are fires considered to be ended by rain (accumulated > 12mm precipitation in 5 days). Fig.2. Trajectories for the Drought Code (DC) and the Duff Moisture Code (DMC) of 100 randomly selected BAL fires through their burn days. The two indices represent the state of the fuel available for combustion. Their values rise as the fire danger increases. The trajectories demonstrate a positive linear trend, with sharp jumps to a lower value at certain days, for some trajectories. Acknowledgments • Historical government records from 1953 to 2000 are obtained from about 200 provincial BC Wildfire Service and 50 Environment Canada stations in BC Fire Data Preliminary Analysis • Survival (time-to-event, lifetime, life history, reliability) data: The time from an origin to the occurrence of some event • Survivor function: 𝑆 𝑡 = 𝑃 𝑇 ≥ 𝑡 o Non-parametric: 𝑆 𝑡 = # of observation ≥𝑡 𝑛 (where there is no censoring) o Parametric: 𝑇 ~ Parametric familiy • Let 𝑇𝑖𝑘, 𝑘 = 𝐷, 𝑆 be respectively the Duration and the Size outcome. We model them separately through a log-location-scale model, or sometimes called, accelerated failure time (AFT) model: log 𝑇𝑖𝑘 = 𝜇 𝑘 + 𝛽 𝑘 𝑇 𝑥𝑖 + 𝜎 𝑘 𝜀𝑖𝑘 • where • the baseline density functions, 𝑓0 𝜀𝑖𝑘 , are chosen to be Normal(0, 1) • 𝑥𝑖 = 1 if fire 𝑖 is ended by rain, 𝑥𝑖 = 0 otherwise. 𝛽 𝑘 is the corresponding coefficient • 𝜇 𝑘 and 𝜎 𝑘 are the overall location and scale parameters • Let 𝜽 𝒌 = 𝜇 𝑘, 𝛽 𝑘, 𝜎 𝑘 𝑇. It follows that 𝑇𝑖𝑘|𝑥𝑖, 𝜽 𝒌~ i.i.d.LogNormal 𝜇 𝑘 + 𝛽 𝑘 𝑇 𝑥𝑖, 𝜎 𝑘 2 Reference links for picture used: NASA/GSFC/METI/Japan Space Systems, and U.S./Japan ASTER Science Team – http://asterweb.jpl.nasa.gov/gallery-detail.asp?name=okanagan https://en.wikipedia.org/wiki/Fossil_record_of_fire#/media/File:Deerfire_high_res_edit.jpg https://pixabay.com/en/british-columbia-canada-barkervillie-1155230/ Fig.3. The non-parametric (NP) and the parametric estimates of the survival functions of the outcomes with a log base 10 scaling for the x-axis. The rain effect translates the quantiles of the survival functions by a constant amount, which supports the using of the AFT model. The Log-Normal distribution seems to fit well. LRT: Likelihood ratio test statistic corresponding to test for significance of the covariate effect. Joint Together, Joint With The Giants • If we want to estimate the two survival models simultaneously, we need to account for the dependence between the two outcomes by conditioning on a latent variable. • We can treat the responses from an individual fire as a cluster of two outcomes, and link the two survival models using a random effect, similar to the use of a frailty for linking multiple individuals in the same cluster. • Furthermore, this framework is similar to that used for joint modeling of longitudinal and survival data. • The use of the lognormal distribution for the outcome also enables a direct comparison with a marginal approach where copulas are used to study the joint distribution of the outcomes. Joint Models • For instance, expand the previous model: log 𝑇𝑖𝑘 = 𝜇 𝑘 + 𝛽 𝑘 𝑇 𝑥𝑖 + 𝑏𝑖 + 𝜎 𝑘 𝜀𝑖𝑘 • where • 𝑏𝒊 ~ i.i.d.Normal 0, 𝜎𝑏 2 be the shared frailty • Let 𝜽 𝒌 = 𝜇 𝑘, 𝛽 𝑘, 𝜎 𝑘, 𝑏𝒊 𝑇. It follows that 𝑇𝑖𝑘|𝑥𝑖, 𝜽 𝒌~ i.i.d.LogNormal 𝜇 𝑘 + 𝛽 𝑘 𝑇 𝑥𝑖 + 𝑏𝒊, 𝜎 𝑘 2 • To perform the estimation under a Bayesian paradigm using Gibbs Sampling in JAGS, we initially assume naive priors. Parameter estimates and model diagnostics for 𝜎𝑏 2 are displayed below. • For future work, one can model the trajectories of the time-varying covariates and include its information as random effects in the survival models. For instance: log 𝑇𝑖𝑘 = 𝜇 𝑘 + 𝜷 𝑘 𝑇 𝒙𝑖 + 𝜶 𝑘 𝑇 𝒄1𝑖 + 𝑏𝑖 + 𝜎 𝑘 𝜀𝑖𝑘 𝒛𝑖 𝑡 = 𝒄0𝑖 + 𝒄1𝑖 𝑡 + 𝝃𝑖 • where • 𝒙𝒊 = (𝑥𝑖1, … , 𝑥𝑖𝑃) 𝑇 is a vector of 𝑃 time-constant covariates. • 𝒛𝒊 𝑡 = (𝑧𝒊𝟏 𝑡 , … , 𝑧𝒊𝑸 𝑡 ) 𝑇, 𝑡 = 1, … , 𝑚𝑖 is a vector of 𝑄 longitudinal variables • 𝒄0𝑖 = (𝑐0𝑖1, … , 𝑐0𝑖𝑄) 𝑇 and 𝒄1𝑖 = (𝑐1𝑖1, … , 𝑐1𝑖𝑄) 𝑇 are vectors of 𝑄 y-intercepts and 𝑄 slopes of the longitudinal model for 𝒛𝒊 𝑡 . • 𝜷 𝑘 𝑇 = (𝛽 𝑘1, … , 𝛽 𝑘𝑃) are the corresponding coefficients of 𝒙𝒊 • 𝜶 𝑘 𝑇 = (𝛼 𝑘1, … , 𝛼 𝑘𝑄) are the corresponding coefficients of 𝒄𝑖 • 𝝃𝑖 = (𝜉𝒊𝟏, … , 𝜉𝒊𝑸) 𝑇 where 𝜉𝒊𝒒 ~i.i.d.Normal 0, 𝜎𝜉 2 is the error term for the longitudinal model Fig.4. Selected JAGS output, with 3 chains, number of adapts = 10000, burn-in = 5000 and sample = 100000/3. The 95% credible interval for 𝜎𝑏 does not contain 0, which suggests that the frailty is significant and its variance does explain variability in each outcome. Parameter 95% Credible Interval 𝜇 𝐷 1.97 2.09 𝜇 𝑆 4.38 4.66 𝛽 𝐷 0.02 0.34 𝛽𝑆 -0.47 0.25 𝜎 𝐷 0.02 0.21 𝜎𝑆 1.69 1.85 𝜎𝑏 0.83 0.91 The authors acknowledge the assistance and support of the Pacific Forestry Centre in conducting this research. Support also provided by the Natural Sciences and Engineering Research of Council and the Ontario Provincial Government. Thanks to Steve Taylor of the Pacific Forestry Centre for very helpful discussions.