\(\def\loading{......LOADING......Please Wait......} \def\RR{\bf R} \def\real{\mathbb{R}} \def\bold#1{\bf #1} \def\d{\mbox{Cord}} \def\hd{\widehat \mbox{Cord}} \DeclareMathOperator{\cov}{cov} \DeclareMathOperator{\var}{var} \DeclareMathOperator{\cor}{cor} \newcommand{\ac}[1]{\left\{#1\right\}} \DeclareMathOperator{\Ex}{\mathbb{E}} \DeclareMathOperator{\diag}{diag} \newcommand{\bm}[1]{\boldsymbol{#1}} \def\wait{......LOADING......Please Wait......}\)
Covariate Assisted Principal (CAP) Regression for Matrix Outcomes
Xi (Rossi) LUO
The University of Texas
Health Science Center
School of Public Health
Dept of Biostatistics
and Data Science
ABCD Research Group
CMStat, London, UK
December 14, 2019
Funding: NIH R01EB022911; NSF/DMS (BD2K) 1557467
Co-Authors
Yi Zhao
Indiana Univ
Bingkai Wang
Johns Hopkins Biostat
Stewart Mostofsky
Johns Hopkins Medicine
Brian Caffo
Johns Hopkins Biostat
Slides viewable on web:
bit.ly/cmstat19
Statistics/Data Science Focuses
Motivating Example
Brain network connections vary by covariates (e.g. age/sex)
Goal: model how covariates change network connections
$$\textrm{function}(\textbf{graph}) = \textbf{age}\times \beta_1 + \textbf{sex}\times \beta_2 + \cdots $$
Resting-state fMRI Networks
- fMRI measures brain activities over time
- Resting-state: "do nothing" during scanning
- Brain networks constructed using cov/cor matrices of time series
Mathematical Problem
- Given $n$ (semi-)positive matrix outcomes, $\Sigma_i\in \real^{p\times p}$
- Given $n$ corresponding vector covariates, $x_i \in \real^{q}$
- Find function $g(\Sigma_i) = x_i \beta$, $i=1,\dotsc, n$
- In essense, regress positive matrices on vectors
Some Related Problems
- Heterogeneous regression or weighted LS:
- Usually for scalar variance $\sigma_i$, find $g(\sigma_i) = f(x_i)$
- Goal: to improve efficiency, not to interpret $x_i \beta$
- Covariance models Anderson, 73; Pourahmadi, 99; Hoff, Niu, 12; Fox, Dunson, 15; Zou, 17
- Model $\Sigma_i = g(x_i)$, sometimes $n=i=1$
- Goal: better models for $\Sigma_i$
- Multi-group PCA Flury, 84, 88; Boik 02; Hoff 09; Franks, Hoff, 16
- No regression model, cannot handle vector $x_i$
- Goal: find common/uncommon parts of multiple $\Sigma_i$
- Tensor-on-scalar regression Li, Zhang, 17; Sun, Li, 17
- No guarantees for positive matrix outcomes
Massive Edgewise Regressions
- Intuitive method by mostly neuroscientists
- Try $g_{j,k}(\Sigma_i) = \Sigma_{i}[j,k] = x_i \beta$
- Repeat for all $(j,k) \in \{1,\dotsc, p\}^2$ pairs
- Essentially $O(p^2)$ regressions for each connection
- Limitations: multiple testing $O(p^2)$, failure to accout for dependencies between regressions
Our CAP in a Nutshell
$\mbox{PCA}(\Sigma_i) = x_i \beta$
- Essentially, we aim to turn unsupervised PCA to a supervised PCA
- Ours differs from existing PCA methods:
- Supervised PCA Bair et al, 06 models scalar-on-vector
Model
- Find principal direction (PD) $\gamma \in \real^p$, such that:
$$ \log({\gamma}^\top\Sigma_{i}{\gamma})=\beta_{0}+x_{i}^\top{\beta}_{1}, \quad i =1,\dotsc, n$$
Example (p=2): PD1 largest variation but not related to $x$
PCA selects PD1, Ours selects PD2
Advantages
- Scalability: potentially for $p \sim 10^6$ or larger
- Interpretation: covariate assisted PCA
- Turn unsupervised PCA into supervised
- Sensitivity: target those covariate-related variations
- Applicability: other big data problems besides fMRI
Method
- MLE with constraints:
$$\scriptsize \begin{eqnarray}\label{eq:obj_func}
\underset{\boldsymbol{\beta},\boldsymbol{\gamma}}{\text{minimize}} && \ell(\boldsymbol{\beta},\boldsymbol{\gamma}) := \frac{1}{2}\sum_{i=1}^{n}(x_{i}^\top\boldsymbol{\beta}) \cdot T_{i} +\frac{1}{2}\sum_{i=1}^{n}\boldsymbol{\gamma}^\top \Sigma_{i}\boldsymbol{\gamma} \cdot \exp(-x_{i}^\top\boldsymbol{\beta}) , \nonumber \\
\text{such that} && \boldsymbol{\gamma}^\top H \boldsymbol{\gamma}=1
\end{eqnarray}$$
- Two obvious constriants:
- C1: $H = I$
- C2: $H = n^{-1} (\Sigma_1 + \cdots + \Sigma_n) $
Choice of $H$
Proposition: When (C1) $H=\boldsymbol{\mathrm{I}}$ in the optimization problem, for any fixed $\boldsymbol{\beta}$, the solution of $\boldsymbol{\gamma}$ is the eigenvector corresponding to the minimum eigenvalue of matrix
$$ \sum_{i=1}^{n}\frac{\Sigma_{i}}{\exp(x_{i}^\top\boldsymbol{\beta})} $$
Will focus on the constraint (C2)
Algoirthm
- Iteratively update $\beta$ and then $\gamma$
- Prove explicit updates
- Extension to multiple $\gamma$:
- After finding $\gamma^{(1)}$, we will update $\Sigma_i$ by removing its effect
- Search for the next PD $\gamma^{(k)}$, $k=2, \dotsc$
- Impose the orthogonal constraints such that $\gamma^{k}$ is orthogonal to all $\gamma^{(t)}$ for $t\lt k$
Theory for $\beta$
Theorem:
Assume $\sum_{i=1}^{n}x_{i}x_{i}^\top/n\rightarrow Q$ as $n\rightarrow\infty$. Let $T=\min_{i}T_{i}$, $M_{n}=\sum_{i=1}^{n}T_{i}$, under the true $\boldsymbol{\gamma}$, we have
\begin{equation}
\sqrt{M_{n}}\left(\hat{\boldsymbol{\beta}}-\boldsymbol{\beta}\right)\overset{\mathcal{D}}{\longrightarrow}\mathcal{N}\left(\boldsymbol{\mathrm{0}},2 Q^{-1}\right),\quad \text{as } n,T\rightarrow\infty,
\end{equation}
where $\hat{\boldsymbol{\beta}}$ is the maximum likelihood estimator when the true $\boldsymbol{\gamma}$ is known.
Theory for $\gamma$
Theorem:
Assume $\Sigma_{i}=\Gamma\Lambda_{i}\Gamma^\top$, where $\Gamma=(\boldsymbol{\gamma}_{1},\dots,\boldsymbol{\gamma}_{p})$ is an orthogonal matrix and $\Lambda_{i}=\mathrm{diag}\{\lambda_{i1},\dots,\lambda_{ip}\}$ with $\lambda_{ik}\neq\lambda_{il}$ ($k\neq l$), for at least one $i\in\{1,\dots,n\}$. There exists $k\in\{1,\dots,p\}$ such that for $\forall~i\in\{1,\dots,n\}$, $\boldsymbol{\gamma}_{k}^\top\Sigma_{i}\boldsymbol{\gamma}_{k}=\exp(x_{i}^\top\boldsymbol{\beta})$. Let $\hat{\boldsymbol{\gamma}}$ be the maximum likelihood estimator of $\boldsymbol{\gamma}_{k}$ in Flury, 84. Then assuming that the assumptions are satisfied, $\hat{ \boldsymbol{\beta}}$ from our algorithm is $\sqrt{M_{n}}$-consistent estimator of $\boldsymbol{\beta}$.
PCA and common PCA do not find the first principal direction, because they don't model covariates
Regression Coefficients
Age
Sex
Age*Sex
No statistical significant changes were found by massive edgewise regression
Brain Map of $\gamma$
Discussion
- Regress matrices on vectors
- Method to identify covariate-related directions
- Theorectical justification
- Paper: Biostatistics (to appear, preprint at DOI: 10.1101/425033)
- R pkg: cap
Thank you!
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