In this paper we give a general framework for isotone optimization. First we discuss a generalized version of the pool-adjacent-violators algorithm (PAVA) to minimize a separable convex function with simple chain constraints. Besides of general convex functions we extend existing PAVA implementations in terms of observation weights, approaches for tie handling, and responses from repeated measurement designs. Since isotone optimization problems can be formulated as convex programming problems with linear constraints we the develop a primal active set method to solve such problem. This methodology is applied on specific loss functions relevant in statistics. Both approaches are implemented in the R package isotone
AbstractThe isotonic median regression problem arises from statistics. An algorithm, the PAV algorit...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
The convex ordered setproblem is to minimize j=1 C(xj) subject to < x1 2 < 3 <... < xn &...
In this paper we give a general framework for isotone optimization. First we discuss a generalized v...
Isotone optimization is formulated as a convex programming problem with simple linear constraints. A...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
Description Contains two main functions: one for solving general isotone regression problems using t...
Monotonicity is often a fundamental assumption involved in the modeling of a number of real-world ap...
Efficient coding and improvements in the execution order of the up-and-down-blocks algorithm for mon...
Monotonic (isotonic) regression is a powerful tool used for solving a wide range of important applie...
This thesis will treat the subject of constrained statistical inference and will have its focus on i...
Cover title.Includes bibliographical references (p. 22).by Ravindra K. Ahuja, James B. Orlin
International audienceWe consider the minimization of submodular functions subject to ordering const...
For a given sequence of numbers, we want to find a monotonically increasing sequence of the same len...
Monotonic (isotonic) Regression (MR) is a powerful tool used for solving a wide range of important a...
AbstractThe isotonic median regression problem arises from statistics. An algorithm, the PAV algorit...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
The convex ordered setproblem is to minimize j=1 C(xj) subject to < x1 2 < 3 <... < xn &...
In this paper we give a general framework for isotone optimization. First we discuss a generalized v...
Isotone optimization is formulated as a convex programming problem with simple linear constraints. A...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
Description Contains two main functions: one for solving general isotone regression problems using t...
Monotonicity is often a fundamental assumption involved in the modeling of a number of real-world ap...
Efficient coding and improvements in the execution order of the up-and-down-blocks algorithm for mon...
Monotonic (isotonic) regression is a powerful tool used for solving a wide range of important applie...
This thesis will treat the subject of constrained statistical inference and will have its focus on i...
Cover title.Includes bibliographical references (p. 22).by Ravindra K. Ahuja, James B. Orlin
International audienceWe consider the minimization of submodular functions subject to ordering const...
For a given sequence of numbers, we want to find a monotonically increasing sequence of the same len...
Monotonic (isotonic) Regression (MR) is a powerful tool used for solving a wide range of important a...
AbstractThe isotonic median regression problem arises from statistics. An algorithm, the PAV algorit...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
The convex ordered setproblem is to minimize j=1 C(xj) subject to < x1 2 < 3 <... < xn &...