The focus of this paper is on how to design evolutionary algorithms (EAs) for solving stochastic dynamic optimization problems online, i.e. as time goes by. For a proper design, the EA must not only be capable of tracking shifting optima, it must also take into account the future consequences of the evolved decisions or actions. A previous framework describes how to build such EAs in the case of non-stochastic problems. Most real-world problems however are stochastic. In this paper we show how this framework can be extended to properly tackle stochasticity. We point out how this naturally leads to evolving strategies rather than explicit decisions. We formalize our approach in a new framework. The new framework and the various sources of pr...
Evolutionary Algorithms (EAs) are population-based, stochastic search algorithms that mimic natural ...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...
The focus of this paper is on how to design evolutionary algorithms (EAs) for solving stochastic dyn...
The focus of this paper is on how to design evolutionaryalgorithms (EAs) for solving stochastic dyna...
Inventory management (IM) is an important area in logistics. The goal is to manage the inventory of ...
In this chapter we focus on the importance of the use of learning and anticipation in (online) dynam...
Many real-world optimization problems occur in environments that change dynamically or involve stoch...
Optimizing decision problems under uncertainty can be done using a vari-ety of solution methods. Sof...
In this paper, we propose an estimation of distribution algorithm based on an inexpensive Gaussian m...
What will be tomorrow's big cities objectives and challenges? Most of the operational problems from ...
The aim of the talk is to discuss the role of stochastic optimization techniques in designing learni...
The vehicle routing problem with stochastic demand (VRPSD) is a well known NP-hard problem. The unch...
This paper considers online stochastic scheduling problems where time constraints severely limit th...
In this thesis we study planning problems in the area of routing and scheduling by means of mathemat...
Evolutionary Algorithms (EAs) are population-based, stochastic search algorithms that mimic natural ...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...
The focus of this paper is on how to design evolutionary algorithms (EAs) for solving stochastic dyn...
The focus of this paper is on how to design evolutionaryalgorithms (EAs) for solving stochastic dyna...
Inventory management (IM) is an important area in logistics. The goal is to manage the inventory of ...
In this chapter we focus on the importance of the use of learning and anticipation in (online) dynam...
Many real-world optimization problems occur in environments that change dynamically or involve stoch...
Optimizing decision problems under uncertainty can be done using a vari-ety of solution methods. Sof...
In this paper, we propose an estimation of distribution algorithm based on an inexpensive Gaussian m...
What will be tomorrow's big cities objectives and challenges? Most of the operational problems from ...
The aim of the talk is to discuss the role of stochastic optimization techniques in designing learni...
The vehicle routing problem with stochastic demand (VRPSD) is a well known NP-hard problem. The unch...
This paper considers online stochastic scheduling problems where time constraints severely limit th...
In this thesis we study planning problems in the area of routing and scheduling by means of mathemat...
Evolutionary Algorithms (EAs) are population-based, stochastic search algorithms that mimic natural ...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...