In this work, we study and extend algorithms for Sparse Regression and Causal Inference problems. Both the problems are fundamental in the area of Data Science. The goal of regression problem is to nd out the \best" relationship between an output variable and input variables, given samples of the input and output values. We consider sparse regression under a high-dimensional linear model with strongly correlated variables, situations which cannot be handled well using many existing model selection algorithms. We study the performance of the popular feature selection algorithms such as LASSO, Elastic Net, BoLasso, Clustered Lasso as well as Projected Gradient Descent algorithms under this setting in terms of their running time, stability an...
© 2015, © American Statistical Association, Institute of Mathematical Statistics, and Interface Foun...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
In this paper, we review state-of-the-art methods for feature selection in statistics with an applic...
In high-dimensional vector autoregressive (VAR) models, it is natural to have large number of predic...
Vector autoregressive (VAR) models constitute a powerful and well studied tool to analyze multivari...
Temporal data such as time series data and longitudinal data are pervasive across almost all human e...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
We consider estimation in a high-dimensional linear model with strongly corre-lated variables. We pr...
This paper proposes a novel methodology to detect Granger causality in mean in vector autoregressive...
In this thesis, several methods are proposed to construct sparse models in different situations with...
The thesis introduces structured machine learning regressions for high-dimensional time series data ...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
© 2015, © American Statistical Association, Institute of Mathematical Statistics, and Interface Foun...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
In this paper, we review state-of-the-art methods for feature selection in statistics with an applic...
In high-dimensional vector autoregressive (VAR) models, it is natural to have large number of predic...
Vector autoregressive (VAR) models constitute a powerful and well studied tool to analyze multivari...
Temporal data such as time series data and longitudinal data are pervasive across almost all human e...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
We consider estimation in a high-dimensional linear model with strongly corre-lated variables. We pr...
This paper proposes a novel methodology to detect Granger causality in mean in vector autoregressive...
In this thesis, several methods are proposed to construct sparse models in different situations with...
The thesis introduces structured machine learning regressions for high-dimensional time series data ...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
© 2015, © American Statistical Association, Institute of Mathematical Statistics, and Interface Foun...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
In this paper, we review state-of-the-art methods for feature selection in statistics with an applic...