SlideShare a Scribd company logo
1 of 18
Download to read offline
Penalized maximum likelihood
estimates of genetic covariance
matrices with shrinkage towards
phenotypic dispersion
Karin Meyer1
, Mark Kirkpatrick2
, Daniel Gianola3
1
Animal Genetics and Breeding Unit, University of New England, Armidale
2
Section of Integrative Biology, University of Texas, Austin
3
University of Wisconsin-Madison, Madison
AAABG 2011
Penalized REML | Introduction
Motivation
Multivariate genetic analyses: more than 2-4 traits
→ desirable!
→ technically increasingly feasible
→ inherently problematic
SAMPLING VARIANCE ↑↑ with no. of traits
K. M. / M. K. / D. G. | | AAABG 2011 2 / 13
Penalized REML | Introduction
Motivation
Multivariate genetic analyses: more than 2-4 traits
→ desirable!
→ technically increasingly feasible
→ inherently problematic
SAMPLING VARIANCE ↑↑ with no. of traits
Measures to alleviate S.V.
large → gigantic data sets
parsimonious models → less parameters than covar.s
estimation → use additional information
Bayesian: Prior
REML: Impose penalty P on likelihood
→ P = f(parameters)
→ designed to reduce S.V.
K. M. / M. K. / D. G. | | AAABG 2011 2 / 13
Penalized REML | Introduction
Penalized REML
Maximize:
log LP = log L − 1
2
ψ P
Tuning factor
Penalty on parameters
Standard, unpenalized REML log likelihood
Objectives:
Introduce new type of P
→ prior: Σ ∼ IW
Compare efficacy of different P
K. M. / M. K. / D. G. | | AAABG 2011 3 / 13
Penalized REML | REML and penalties
Penalties to improve estimates of ΣG
ˆΣP estimated much more accurately than ˆΣG
Idea: ‘Borrow strength’ from ˆΣP
1 Shrink canonical eigenvalues towards their mean
→ ‘bending’ (Hayes & Hill 1981)
Pℓ
λ
∝ i(log λi − ¯λ)2
λi : eig.values of ˆΣ
−1
P
ˆΣG
K. M. / M. K. / D. G. | | AAABG 2011 4 / 13
Penalized REML | REML and penalties
Penalties to improve estimates of ΣG
ˆΣP estimated much more accurately than ˆΣG
Idea: ‘Borrow strength’ from ˆΣP
1 Shrink canonical eigenvalues towards their mean
→ ‘bending’ (Hayes & Hill 1981)
Pℓ
λ
∝ i(log λi − ¯λ)2
λi : eig.values of ˆΣ
−1
P
ˆΣG
2 a) Shrink ˆΣG towards ˆΣP
→ assume ΣG ∼ IW(Σ−1
P
, ψ)
→ obtain penalty as minus log density of IW
PΣ ∝ C log | ˆΣG| + tr ˆΣ−1
G
ˆΣ0
P
b) Shrink ˆRG towards ˆRP
PR ∝ C log |ˆRG| + tr ˆR−1
G
ˆR0
P
K. M. / M. K. / D. G. | | AAABG 2011 4 / 13
Penalized REML | Simulation study
Simulation
Paternal half-sib design: s = 100, n = 10
5 traits, h2
1
≥ . . . ≥ h2
5
, MVN
60 sets of population values
→ vary mean & spread of λi
1000 replicates per case
3 penalties
Pℓ
λ
regress log( ˆλi) towards their mean
PΣ shrink ˆΣG towards ˆΣP
PR shrink ˆRG towards ˆRP
Obtain ˆΣψ
G
and ˆΣψ
E
for values of ψ, range 0 − 1000
K. M. / M. K. / D. G. | | AAABG 2011 5 / 13
Penalized REML | Simulation study
Simulation - cont.
Estimate ψ using population values (V∞)
→ construct MSB & MSW → validation
→ ˆψ maximize log L in valid. data
Evaluate effect of penalty
→ Loss: deviation of ˆΣX from ΣX
L1(ΣX, ˆΣX) = tr(Σ−1
X
ˆΣX) − log |Σ−1
X
ˆΣX| − q
→ Percentage Reduction In Average Loss
PRIAL = 100






1 −
¯L1(ΣX, ˆΣ
ˆψ
X
)
¯L1(ΣX, ˆΣ0
X
)






K. M. / M. K. / D. G. | | AAABG 2011 6 / 13
penalized
unpenalized
Penalized REML | Results | PRIAL
PRIAL in estimated covariance matrices
Pλ
l
PΣ PR
40
60
80
100
q
q
q
q
q
q
q
Genetic
71.4 70.6 72.3
Pλ
l
PΣ PR
0
20
40
60
80
Residual
43.4 13.3 37.1
Pλ
l
PΣ PR
0
2
4
6
8
q
q
q
qq
q
qq
q
q
q
q
q
Phenotypic
1.2 1.2 2.2
K. M. / M. K. / D. G. | | AAABG 2011 7 / 13
Penalized REML | Results | PRIAL
PRIAL for ˆΣG – 60 individual cases
in order of PRIAL for Pℓ
λ
5K
5L
5J
5D
2K
5H
5F
2F
5E
2L
4F
4K
2H
4L
5I
2D
4H
3K
3F
2E
5C
1D
4D
3L
1C
3H
3D
2J
5G
4J
4E
5B
3E
5A
4I
1G
3C
3A
3B
1E
3G
3J
1F
4A
2I
4C
4B
1K
3I
4G
2C
1B
2G
1H
2B
2A
1L
1J
1A
1I
40
60
80
100
q q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q q
q
q
q q q q q q
q q
q q q
q
q q
q q
q
q
q q
q
q
q
q q
q
q
q
q
q
Penalty
Pλ
l
PΣ PR
K. M. / M. K. / D. G. | | AAABG 2011 8 / 13
Penalized REML | Results | PRIAL
Extension: PRIAL “double” penalties
P so far: improve ˆΣG
“Double”
→ PΣ on ˆΣG & ˆΣE
PR on ˆRG & ˆRE
Pℓ
λ
on log λi &
log(1−λi)
→ 1: joint ψ
2: separate ψ
Pℓ
λ
PΣ PR
ˆΣG G 71 71 72
G+E 1 73 70 73
2 74 73 74
ˆΣE G 43 13 37
G+E 1 62 54 60
2 65 65 63
Little impact on PRIAL for ˆΣG
Can ↑↑ PRIAL for ˆΣE w/out ↓ PRIAL for ˆΣG
Separate ˆψ: extra effort, limited add. improvement
K. M. / M. K. / D. G. | | AAABG 2011 9 / 13
Penalized REML | Results | PRIAL
Summary: PRIAL
Substantial improvements in ˆΣG & ˆΣE feasible
→ Results shown ‘optimistic’ → ˆψ using pop.values
PRIAL heavily influenced by spread of can. eigenvalues
Pℓ
λ
best if λi ≈ ¯λ; overshrink if not
PΣ & PR worst if λi ≈ ¯λ; more robust than Pℓ
λ
if λi ≈ ¯λ
similar canonical eigenvalues unlikely in practice?
New type of P useful
K. M. / M. K. / D. G. | | AAABG 2011 10 / 13
Penalized REML | Results | Bias
Mean estimates of can. eigenvalues
Penalties act differently – illustrated for single case
λi = 0.5, 0.2, 0.15, 0.1, 0.05; ¯λ = 0.2
0
0.2
0.4
λ1 λ3 λ5
q
q
q
q
q
None
q
q
q
q
q
Pλ
l
λ1 λ3 λ5
q
q
q
q
q
PΣ
q
q
q
q
q
q
q
q
q
q
PR
q Pop.value
K. M. / M. K. / D. G. | | AAABG 2011 11 / 13
Penalized REML | Results | Bias
Mean relative bias (in %)
1 2 3 4 5
Can. eigenvalues
None 9 27 17 -20 -79
Pℓ
λ
-4 16 29 58 101
PΣ 8 25 25 39 75
PR 1 16 21 37 57
Heritabilities
None -1 4 5 7 12
Pℓ
λ
-7 5 12 23 45
PΣ 1 10 15 26 44
PR -2 2 5 9 17
K. M. / M. K. / D. G. | | AAABG 2011 12 / 13
Penalized REML | Finale
Conclusions
Can obtain ‘better’ estimates of genetic cov. matrices
→ borrow strength from phenotypic covariance matrix
→ easy to implement by penalty on log L
K. M. / M. K. / D. G. | | AAABG 2011 13 / 13
Penalized REML | Finale
Conclusions
Can obtain ‘better’ estimates of genetic cov. matrices
→ borrow strength from phenotypic covariance matrix
→ easy to implement by penalty on log L
Comparable improvement (PRIAL) from different P
None best overall
PR: Shrinking ˆRG towards ˆRP
less variable
less bias in estimates of genetic parameters
easier to implement than Pℓ
λ
K. M. / M. K. / D. G. | | AAABG 2011 13 / 13
Penalized REML | Finale
Conclusions
Can obtain ‘better’ estimates of genetic cov. matrices
→ borrow strength from phenotypic covariance matrix
→ easy to implement by penalty on log L
Comparable improvement (PRIAL) from different P
None best overall
PR: Shrinking ˆRG towards ˆRP
less variable
less bias in estimates of genetic parameters
easier to implement than Pℓ
λ
Penalized REML recommended!
Small to moderate data sets, ≥ 4 traits
K. M. / M. K. / D. G. | | AAABG 2011 13 / 13
P-REML
part of
everyday
toolkit

More Related Content

Viewers also liked

คัพเค้ก
คัพเค้กคัพเค้ก
คัพเค้กcnfook 11
 
Hai bisogno di un ufficio?
Hai bisogno di un ufficio?Hai bisogno di un ufficio?
Hai bisogno di un ufficio?INOFFICE ROMA
 
Linked In Services training across the EU
Linked In Services training across the EULinked In Services training across the EU
Linked In Services training across the EUNeo Flouri
 
Special and Diverse Population-Migrant
Special and Diverse Population-MigrantSpecial and Diverse Population-Migrant
Special and Diverse Population-MigrantFelicia Torres
 
มาเลือกสีผมให้เข้ากับสีผิวกันเถอะ
มาเลือกสีผมให้เข้ากับสีผิวกันเถอะมาเลือกสีผมให้เข้ากับสีผิวกันเถอะ
มาเลือกสีผมให้เข้ากับสีผิวกันเถอะkataisimmma
 

Viewers also liked (8)

Survey
SurveySurvey
Survey
 
คัพเค้ก
คัพเค้กคัพเค้ก
คัพเค้ก
 
Hai bisogno di un ufficio?
Hai bisogno di un ufficio?Hai bisogno di un ufficio?
Hai bisogno di un ufficio?
 
ISA 2015
ISA  2015 ISA  2015
ISA 2015
 
Linked In Services training across the EU
Linked In Services training across the EULinked In Services training across the EU
Linked In Services training across the EU
 
Special and Diverse Population-Migrant
Special and Diverse Population-MigrantSpecial and Diverse Population-Migrant
Special and Diverse Population-Migrant
 
มาเลือกสีผมให้เข้ากับสีผิวกันเถอะ
มาเลือกสีผมให้เข้ากับสีผิวกันเถอะมาเลือกสีผมให้เข้ากับสีผิวกันเถอะ
มาเลือกสีผมให้เข้ากับสีผิวกันเถอะ
 
wk2assign
wk2assignwk2assign
wk2assign
 

Recently uploaded

Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral AnalysisRaman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral AnalysisDiwakar Mishra
 
Natural Polymer Based Nanomaterials
Natural Polymer Based NanomaterialsNatural Polymer Based Nanomaterials
Natural Polymer Based NanomaterialsAArockiyaNisha
 
Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...
Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...
Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...anilsa9823
 
G9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptG9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptMAESTRELLAMesa2
 
Botany 4th semester file By Sumit Kumar yadav.pdf
Botany 4th semester file By Sumit Kumar yadav.pdfBotany 4th semester file By Sumit Kumar yadav.pdf
Botany 4th semester file By Sumit Kumar yadav.pdfSumit Kumar yadav
 
GFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxGFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxAleenaTreesaSaji
 
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡anilsa9823
 
Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.
Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.
Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.aasikanpl
 
Bentham & Hooker's Classification. along with the merits and demerits of the ...
Bentham & Hooker's Classification. along with the merits and demerits of the ...Bentham & Hooker's Classification. along with the merits and demerits of the ...
Bentham & Hooker's Classification. along with the merits and demerits of the ...Nistarini College, Purulia (W.B) India
 
Types of different blotting techniques.pptx
Types of different blotting techniques.pptxTypes of different blotting techniques.pptx
Types of different blotting techniques.pptxkhadijarafiq2012
 
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Lokesh Kothari
 
Stunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCR
Stunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCRStunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCR
Stunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCRDelhi Call girls
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Sérgio Sacani
 
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bNightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bSérgio Sacani
 
Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )aarthirajkumar25
 
Animal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptxAnimal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptxUmerFayaz5
 
A relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfA relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfnehabiju2046
 
Orientation, design and principles of polyhouse
Orientation, design and principles of polyhouseOrientation, design and principles of polyhouse
Orientation, design and principles of polyhousejana861314
 
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...Sérgio Sacani
 

Recently uploaded (20)

Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral AnalysisRaman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
 
Natural Polymer Based Nanomaterials
Natural Polymer Based NanomaterialsNatural Polymer Based Nanomaterials
Natural Polymer Based Nanomaterials
 
Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...
Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...
Lucknow 💋 Russian Call Girls Lucknow Finest Escorts Service 8923113531 Availa...
 
G9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptG9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.ppt
 
Botany 4th semester file By Sumit Kumar yadav.pdf
Botany 4th semester file By Sumit Kumar yadav.pdfBotany 4th semester file By Sumit Kumar yadav.pdf
Botany 4th semester file By Sumit Kumar yadav.pdf
 
GFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxGFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptx
 
Engler and Prantl system of classification in plant taxonomy
Engler and Prantl system of classification in plant taxonomyEngler and Prantl system of classification in plant taxonomy
Engler and Prantl system of classification in plant taxonomy
 
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
 
Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.
Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.
Call Girls in Munirka Delhi 💯Call Us 🔝9953322196🔝 💯Escort.
 
Bentham & Hooker's Classification. along with the merits and demerits of the ...
Bentham & Hooker's Classification. along with the merits and demerits of the ...Bentham & Hooker's Classification. along with the merits and demerits of the ...
Bentham & Hooker's Classification. along with the merits and demerits of the ...
 
Types of different blotting techniques.pptx
Types of different blotting techniques.pptxTypes of different blotting techniques.pptx
Types of different blotting techniques.pptx
 
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
 
Stunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCR
Stunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCRStunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCR
Stunning ➥8448380779▻ Call Girls In Panchshil Enclave Delhi NCR
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
 
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bNightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
 
Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )
 
Animal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptxAnimal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptx
 
A relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfA relative description on Sonoporation.pdf
A relative description on Sonoporation.pdf
 
Orientation, design and principles of polyhouse
Orientation, design and principles of polyhouseOrientation, design and principles of polyhouse
Orientation, design and principles of polyhouse
 
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
 

Penalized maximum likelihood estimates of genetic covariance matrices with shrinkage towards phenotypic dispersion

  • 1. Penalized maximum likelihood estimates of genetic covariance matrices with shrinkage towards phenotypic dispersion Karin Meyer1 , Mark Kirkpatrick2 , Daniel Gianola3 1 Animal Genetics and Breeding Unit, University of New England, Armidale 2 Section of Integrative Biology, University of Texas, Austin 3 University of Wisconsin-Madison, Madison AAABG 2011
  • 2. Penalized REML | Introduction Motivation Multivariate genetic analyses: more than 2-4 traits → desirable! → technically increasingly feasible → inherently problematic SAMPLING VARIANCE ↑↑ with no. of traits K. M. / M. K. / D. G. | | AAABG 2011 2 / 13
  • 3. Penalized REML | Introduction Motivation Multivariate genetic analyses: more than 2-4 traits → desirable! → technically increasingly feasible → inherently problematic SAMPLING VARIANCE ↑↑ with no. of traits Measures to alleviate S.V. large → gigantic data sets parsimonious models → less parameters than covar.s estimation → use additional information Bayesian: Prior REML: Impose penalty P on likelihood → P = f(parameters) → designed to reduce S.V. K. M. / M. K. / D. G. | | AAABG 2011 2 / 13
  • 4. Penalized REML | Introduction Penalized REML Maximize: log LP = log L − 1 2 ψ P Tuning factor Penalty on parameters Standard, unpenalized REML log likelihood Objectives: Introduce new type of P → prior: Σ ∼ IW Compare efficacy of different P K. M. / M. K. / D. G. | | AAABG 2011 3 / 13
  • 5. Penalized REML | REML and penalties Penalties to improve estimates of ΣG ˆΣP estimated much more accurately than ˆΣG Idea: ‘Borrow strength’ from ˆΣP 1 Shrink canonical eigenvalues towards their mean → ‘bending’ (Hayes & Hill 1981) Pℓ λ ∝ i(log λi − ¯λ)2 λi : eig.values of ˆΣ −1 P ˆΣG K. M. / M. K. / D. G. | | AAABG 2011 4 / 13
  • 6. Penalized REML | REML and penalties Penalties to improve estimates of ΣG ˆΣP estimated much more accurately than ˆΣG Idea: ‘Borrow strength’ from ˆΣP 1 Shrink canonical eigenvalues towards their mean → ‘bending’ (Hayes & Hill 1981) Pℓ λ ∝ i(log λi − ¯λ)2 λi : eig.values of ˆΣ −1 P ˆΣG 2 a) Shrink ˆΣG towards ˆΣP → assume ΣG ∼ IW(Σ−1 P , ψ) → obtain penalty as minus log density of IW PΣ ∝ C log | ˆΣG| + tr ˆΣ−1 G ˆΣ0 P b) Shrink ˆRG towards ˆRP PR ∝ C log |ˆRG| + tr ˆR−1 G ˆR0 P K. M. / M. K. / D. G. | | AAABG 2011 4 / 13
  • 7. Penalized REML | Simulation study Simulation Paternal half-sib design: s = 100, n = 10 5 traits, h2 1 ≥ . . . ≥ h2 5 , MVN 60 sets of population values → vary mean & spread of λi 1000 replicates per case 3 penalties Pℓ λ regress log( ˆλi) towards their mean PΣ shrink ˆΣG towards ˆΣP PR shrink ˆRG towards ˆRP Obtain ˆΣψ G and ˆΣψ E for values of ψ, range 0 − 1000 K. M. / M. K. / D. G. | | AAABG 2011 5 / 13
  • 8. Penalized REML | Simulation study Simulation - cont. Estimate ψ using population values (V∞) → construct MSB & MSW → validation → ˆψ maximize log L in valid. data Evaluate effect of penalty → Loss: deviation of ˆΣX from ΣX L1(ΣX, ˆΣX) = tr(Σ−1 X ˆΣX) − log |Σ−1 X ˆΣX| − q → Percentage Reduction In Average Loss PRIAL = 100       1 − ¯L1(ΣX, ˆΣ ˆψ X ) ¯L1(ΣX, ˆΣ0 X )       K. M. / M. K. / D. G. | | AAABG 2011 6 / 13 penalized unpenalized
  • 9. Penalized REML | Results | PRIAL PRIAL in estimated covariance matrices Pλ l PΣ PR 40 60 80 100 q q q q q q q Genetic 71.4 70.6 72.3 Pλ l PΣ PR 0 20 40 60 80 Residual 43.4 13.3 37.1 Pλ l PΣ PR 0 2 4 6 8 q q q qq q qq q q q q q Phenotypic 1.2 1.2 2.2 K. M. / M. K. / D. G. | | AAABG 2011 7 / 13
  • 10. Penalized REML | Results | PRIAL PRIAL for ˆΣG – 60 individual cases in order of PRIAL for Pℓ λ 5K 5L 5J 5D 2K 5H 5F 2F 5E 2L 4F 4K 2H 4L 5I 2D 4H 3K 3F 2E 5C 1D 4D 3L 1C 3H 3D 2J 5G 4J 4E 5B 3E 5A 4I 1G 3C 3A 3B 1E 3G 3J 1F 4A 2I 4C 4B 1K 3I 4G 2C 1B 2G 1H 2B 2A 1L 1J 1A 1I 40 60 80 100 q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q Penalty Pλ l PΣ PR K. M. / M. K. / D. G. | | AAABG 2011 8 / 13
  • 11. Penalized REML | Results | PRIAL Extension: PRIAL “double” penalties P so far: improve ˆΣG “Double” → PΣ on ˆΣG & ˆΣE PR on ˆRG & ˆRE Pℓ λ on log λi & log(1−λi) → 1: joint ψ 2: separate ψ Pℓ λ PΣ PR ˆΣG G 71 71 72 G+E 1 73 70 73 2 74 73 74 ˆΣE G 43 13 37 G+E 1 62 54 60 2 65 65 63 Little impact on PRIAL for ˆΣG Can ↑↑ PRIAL for ˆΣE w/out ↓ PRIAL for ˆΣG Separate ˆψ: extra effort, limited add. improvement K. M. / M. K. / D. G. | | AAABG 2011 9 / 13
  • 12. Penalized REML | Results | PRIAL Summary: PRIAL Substantial improvements in ˆΣG & ˆΣE feasible → Results shown ‘optimistic’ → ˆψ using pop.values PRIAL heavily influenced by spread of can. eigenvalues Pℓ λ best if λi ≈ ¯λ; overshrink if not PΣ & PR worst if λi ≈ ¯λ; more robust than Pℓ λ if λi ≈ ¯λ similar canonical eigenvalues unlikely in practice? New type of P useful K. M. / M. K. / D. G. | | AAABG 2011 10 / 13
  • 13. Penalized REML | Results | Bias Mean estimates of can. eigenvalues Penalties act differently – illustrated for single case λi = 0.5, 0.2, 0.15, 0.1, 0.05; ¯λ = 0.2 0 0.2 0.4 λ1 λ3 λ5 q q q q q None q q q q q Pλ l λ1 λ3 λ5 q q q q q PΣ q q q q q q q q q q PR q Pop.value K. M. / M. K. / D. G. | | AAABG 2011 11 / 13
  • 14. Penalized REML | Results | Bias Mean relative bias (in %) 1 2 3 4 5 Can. eigenvalues None 9 27 17 -20 -79 Pℓ λ -4 16 29 58 101 PΣ 8 25 25 39 75 PR 1 16 21 37 57 Heritabilities None -1 4 5 7 12 Pℓ λ -7 5 12 23 45 PΣ 1 10 15 26 44 PR -2 2 5 9 17 K. M. / M. K. / D. G. | | AAABG 2011 12 / 13
  • 15. Penalized REML | Finale Conclusions Can obtain ‘better’ estimates of genetic cov. matrices → borrow strength from phenotypic covariance matrix → easy to implement by penalty on log L K. M. / M. K. / D. G. | | AAABG 2011 13 / 13
  • 16. Penalized REML | Finale Conclusions Can obtain ‘better’ estimates of genetic cov. matrices → borrow strength from phenotypic covariance matrix → easy to implement by penalty on log L Comparable improvement (PRIAL) from different P None best overall PR: Shrinking ˆRG towards ˆRP less variable less bias in estimates of genetic parameters easier to implement than Pℓ λ K. M. / M. K. / D. G. | | AAABG 2011 13 / 13
  • 17. Penalized REML | Finale Conclusions Can obtain ‘better’ estimates of genetic cov. matrices → borrow strength from phenotypic covariance matrix → easy to implement by penalty on log L Comparable improvement (PRIAL) from different P None best overall PR: Shrinking ˆRG towards ˆRP less variable less bias in estimates of genetic parameters easier to implement than Pℓ λ Penalized REML recommended! Small to moderate data sets, ≥ 4 traits K. M. / M. K. / D. G. | | AAABG 2011 13 / 13