This work performs a non-asymptotic analysis of the generalized Lasso under the assumption of sub-exponential data. Our main results continue recent research on the benchmark case of (sub-)Gaussian sample distributions and thereby explore what conclusions are still valid when going beyond. While many statistical features of the generalized Lasso remain unaffected (e.g., consistency), the key difference becomes manifested in the way how the complexity of the hypothesis set is measured. It turns out that the estimation error can be controlled by means of two complexity parameters that arise naturally from a generic-chaining-based proof strategy. The output model can be non-realizable, while the only requirement for the input vector is a gener...
In recent years, extensive research has focused on the $\ell_1$ penalized least squares (Lasso) esti...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
68 pages, 2 figuresThe Lasso is a popular regression method for high-dimensional problems in which t...
This work performs a non-asymptotic analysis of the generalized Lasso under the assumption of sub-ex...
This work performs a non asymptotic analysis of the generalized Lasso under the assumption of sub ex...
The desparsified lasso is a high-dimensional estimation method which provides uniformly valid infere...
Given an unknown signal x0 ϵ ℝn and linear noisy measurements y = Ax0 + σv ϵ ℝm, the generalized equ...
Serially correlated high-dimensional data are prevalent in the big data era. In order to predict and...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
In this paper we develop valid inference for high-dimensional time series. We extend the desparsifie...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
Given an unknown signal x(0) is an element of R-n and linear noisy measurements y = Ax(0) + sigma v ...
In this paper we develop inference for high dimensional linear models, with serially correlated erro...
We consider the problem of estimating an unknown signal x0 from noisy linear observations y = Ax0 + ...
In a general counting process setting, we consider the problem of obtaining a prognostic on the surv...
In recent years, extensive research has focused on the $\ell_1$ penalized least squares (Lasso) esti...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
68 pages, 2 figuresThe Lasso is a popular regression method for high-dimensional problems in which t...
This work performs a non-asymptotic analysis of the generalized Lasso under the assumption of sub-ex...
This work performs a non asymptotic analysis of the generalized Lasso under the assumption of sub ex...
The desparsified lasso is a high-dimensional estimation method which provides uniformly valid infere...
Given an unknown signal x0 ϵ ℝn and linear noisy measurements y = Ax0 + σv ϵ ℝm, the generalized equ...
Serially correlated high-dimensional data are prevalent in the big data era. In order to predict and...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
In this paper we develop valid inference for high-dimensional time series. We extend the desparsifie...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
Given an unknown signal x(0) is an element of R-n and linear noisy measurements y = Ax(0) + sigma v ...
In this paper we develop inference for high dimensional linear models, with serially correlated erro...
We consider the problem of estimating an unknown signal x0 from noisy linear observations y = Ax0 + ...
In a general counting process setting, we consider the problem of obtaining a prognostic on the surv...
In recent years, extensive research has focused on the $\ell_1$ penalized least squares (Lasso) esti...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
68 pages, 2 figuresThe Lasso is a popular regression method for high-dimensional problems in which t...