International audienceWe consider the minimization of submodular functions subject to ordering constraints. We show that this optimization problem can be cast as a convex optimization problem on a space of uni-dimensional measures, with ordering constraints corresponding to first-order stochastic dominance. We propose new discretization schemes that lead to simple and efficient algorithms based on zero-th, first, or higher order oracles; these algorithms also lead to improvements without isotonic constraints. Finally, our experiments show that non-convex loss functions can be much more robust to outliers for isotonic regression, while still leading to an efficient optimization problem
Isotonic regression, the problem of finding values that best fit given observations and conform to s...
Isotone optimization is formulated as a convex programming problem with simple linear constraints. A...
In this paper we give a general framework for isotone optimization. First we discuss a generalized v...
International audienceWe consider the minimization of submodular functions subject to ordering const...
The convex ordered setproblem is to minimize j=1 C(xj) subject to < x1 2 < 3 <... < xn &...
An isotonic regression truncated by confining its domain to a union of its level sets is the isotoni...
An isotonic regression truncated by confining its domain to a union of its level sets is the isotoni...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
We provide algorithms for isotonic regression minimizing $L_0$ error (Hamming distance). This is als...
This paper gives algorithms for determining isotonic regressions for weighted data at a set of point...
International audienceIn this paper, we study fundamental problems of maximizing DR-submodular conti...
International audienceMany real-world problems can often be cast as the optimization of DR-submodula...
Cover title.Includes bibliographical references (p. 22).by Ravindra K. Ahuja, James B. Orlin
<div><p>We present a new computational and statistical approach for fitting isotonic models under co...
We revisit isotonic regression on linear orders, the problem of fitting monotonic functions to best ...
Isotonic regression, the problem of finding values that best fit given observations and conform to s...
Isotone optimization is formulated as a convex programming problem with simple linear constraints. A...
In this paper we give a general framework for isotone optimization. First we discuss a generalized v...
International audienceWe consider the minimization of submodular functions subject to ordering const...
The convex ordered setproblem is to minimize j=1 C(xj) subject to < x1 2 < 3 <... < xn &...
An isotonic regression truncated by confining its domain to a union of its level sets is the isotoni...
An isotonic regression truncated by confining its domain to a union of its level sets is the isotoni...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
We provide algorithms for isotonic regression minimizing $L_0$ error (Hamming distance). This is als...
This paper gives algorithms for determining isotonic regressions for weighted data at a set of point...
International audienceIn this paper, we study fundamental problems of maximizing DR-submodular conti...
International audienceMany real-world problems can often be cast as the optimization of DR-submodula...
Cover title.Includes bibliographical references (p. 22).by Ravindra K. Ahuja, James B. Orlin
<div><p>We present a new computational and statistical approach for fitting isotonic models under co...
We revisit isotonic regression on linear orders, the problem of fitting monotonic functions to best ...
Isotonic regression, the problem of finding values that best fit given observations and conform to s...
Isotone optimization is formulated as a convex programming problem with simple linear constraints. A...
In this paper we give a general framework for isotone optimization. First we discuss a generalized v...