Investigator

Raji Balasubramanian

Professor of Biostatistics · University of Massachusetts Amherst, Biostatistics and Epidemiology

Research Interests

RBRaji Balasubraman…
Papers(1)
SpiderLearner: An ens…
Collaborators(1)
Katherine H. Shutta
Institutions(1)
University Of Massach…

Papers

SpiderLearner: An ensemble approach to Gaussian graphical model estimation

Abstract Gaussian graphical models (GGMs) are a popular form of network model in which nodes represent features in multivariate normal data and edges reflect conditional dependencies between these features. GGM estimation is an active area of research. Currently available tools for GGM estimation require investigators to make several choices regarding algorithms, scoring criteria, and tuning parameters. An estimated GGM may be highly sensitive to these choices, and the accuracy of each method can vary based on structural characteristics of the network such as topology, degree distribution, and density. Because these characteristics are a priori unknown, it is not straightforward to establish universal guidelines for choosing a GGM estimation method. We address this problem by introducing SpiderLearner, an ensemble method that constructs a consensus network from multiple estimated GGMs. Given a set of candidate methods, SpiderLearner estimates the optimal convex combination of results from each method using a likelihood‐based loss function. ‐fold cross‐validation is applied in this process, reducing the risk of overfitting. In simulations, SpiderLearner performs better than or comparably to the best candidate methods according to a variety of metrics, including relative Frobenius norm and out‐of‐sample likelihood. We apply SpiderLearner to publicly available ovarian cancer gene expression data including 2013 participants from 13 diverse studies, demonstrating our tool's potential to identify biomarkers of complex disease. SpiderLearner is implemented as flexible, extensible, open‐source code in the R package ensembleGGM at https://github.com/katehoffshutta/ensembleGGM .

94Works
1Papers
1Collaborators
Breast NeoplasmsOvarian NeoplasmsCoronary DiseaseCardiovascular Diseases

Positions

2021–

Professor of Biostatistics

University of Massachusetts Amherst · Biostatistics and Epidemiology

2022–

Associate Chair

University of Massachusetts Amherst · Biostatistics and Epidemiology

2014–

Associate Professor

University of Massachusetts Amherst · Biostatistics and Epidemiology

2008–

Assistant Professor

University of Massachusetts Amherst · Biostatistics and Epidemiology

2004–

Director

BG Medicine (United States) · Biostatistics

2002–

Research Associate

Harvard University · Department of Biostatistics

Education

2002

Sc.D.

Harvard University · Biostatistics

1996

BA

Mount Holyoke College · Mathematics and Statistics