The quantity of data available to scientists in all disciplines is increasing at an exponential rate, yet the insight necessary to distill data into scientific knowledge must still be supplied by human experts. This widening gap between data and insight can be bridged with data-driven modeling, in which computational methods shift much of the work in creating models from humans to computers. Traditional approaches to data-driven modeling require that the form of the model be fixed in advance, which requires substantial human effort and limits the complexity of problems that can be addressed. In contrast, a newer approach to automated modeling based on evolutionary computation (EC) removes such restrictions on the form of models. This free-f...
Mathematical models can be used to meet many of the challenges and opportunities offered by modern b...
Abstract. Systems biology is the ever-growing field of integrating molecular knowledge about biologi...
This dissertation describes how to improve automated design and evolution in computers using the str...
Many physical systems of interest to scientists and engineers can be modeled using a partial differe...
Supporting the evolutionary modeling process of dynamic biochemical networks based on sampled in viv...
Although recent enthousiasm has emerged for Systems Biology, it is of major importance to identify t...
thesisSynthetic biology is an engineering discipline in which biological components are assembled to...
On the level of the spiking activity, the integrate-and-fire neuron is one of the most commonly used...
This book describes a user-friendly, evolutionary algorithms-based framework for estimating data-dri...
Neuro-inspired models and systems have great potential for applications in unconventional computing....
Background: Evolution has led to the development of biological networks that are shaped by environme...
Systems Biology aims at elucidating the high-level functions of the cell from their biochemical basi...
<div><p>Network representations of biological systems are widespread and reconstructing unknown netw...
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
It has become commonly accepted that systems approaches to biology are of outstanding importance to ...
Mathematical models can be used to meet many of the challenges and opportunities offered by modern b...
Abstract. Systems biology is the ever-growing field of integrating molecular knowledge about biologi...
This dissertation describes how to improve automated design and evolution in computers using the str...
Many physical systems of interest to scientists and engineers can be modeled using a partial differe...
Supporting the evolutionary modeling process of dynamic biochemical networks based on sampled in viv...
Although recent enthousiasm has emerged for Systems Biology, it is of major importance to identify t...
thesisSynthetic biology is an engineering discipline in which biological components are assembled to...
On the level of the spiking activity, the integrate-and-fire neuron is one of the most commonly used...
This book describes a user-friendly, evolutionary algorithms-based framework for estimating data-dri...
Neuro-inspired models and systems have great potential for applications in unconventional computing....
Background: Evolution has led to the development of biological networks that are shaped by environme...
Systems Biology aims at elucidating the high-level functions of the cell from their biochemical basi...
<div><p>Network representations of biological systems are widespread and reconstructing unknown netw...
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
It has become commonly accepted that systems approaches to biology are of outstanding importance to ...
Mathematical models can be used to meet many of the challenges and opportunities offered by modern b...
Abstract. Systems biology is the ever-growing field of integrating molecular knowledge about biologi...
This dissertation describes how to improve automated design and evolution in computers using the str...