We consider the problem of generating randomized control sequences for complex networked systems typically actuated by human agents. Our approach leverages a concept known as control improvisation, which is based on a combination of data-driven learning and controller synthesis from formal specifications. We learn from existing data a generative model (for instance, an explicit-duration hidden Markov model, or EDHMM) and then supervise this model in order to guarantee that the generated sequences satisfy some desirable specifications given in Probabilistic Computation Tree Logic (PCTL). We present an implementation of our approach and apply it to the problem of mimicking the use of lighting appliances in a residential unit, with potential a...
Formal Methods for Control Synthesis offer theoretically sound approaches to safety critical control...
Programming by Demonstration (PbD) offers a user-friendly way of skill transfer from human to robot....
Abstract — We consider the synthesis of control policies for probabilistic systems, modeled by Marko...
We consider the problem of generating randomized control sequences for complex networked systems typ...
We consider the problem of generating randomized control sequences for complex networked systems typ...
Algorithmic Improvisation, also called control improvisation or controlled improvisation, is a new f...
We formalize and analyze a new problem in formal language theory termed control improvisation. Given...
The increasing use of autonomy for safety-critical tasks, from operating power grids to driving cars...
Abstract — We propose a human-supervised control synthesis method for a stochastic Dubins vehicle su...
Abstract — In this paper, we present a method for optimal control synthesis of a plant that interact...
We present a model-free reinforcement learning algorithm to synthesize control policies that maximiz...
This paper focuses on the so called controller synthesis problem, which addresses the question of ho...
Probabilistic model checking is a technique employed for verifying the correctness of computer syst...
Probabilistic model checking is a technique employed for verifying the correctness of computer syste...
We present a model-free reinforcement learning algorithm to synthesize control policies that maximiz...
Formal Methods for Control Synthesis offer theoretically sound approaches to safety critical control...
Programming by Demonstration (PbD) offers a user-friendly way of skill transfer from human to robot....
Abstract — We consider the synthesis of control policies for probabilistic systems, modeled by Marko...
We consider the problem of generating randomized control sequences for complex networked systems typ...
We consider the problem of generating randomized control sequences for complex networked systems typ...
Algorithmic Improvisation, also called control improvisation or controlled improvisation, is a new f...
We formalize and analyze a new problem in formal language theory termed control improvisation. Given...
The increasing use of autonomy for safety-critical tasks, from operating power grids to driving cars...
Abstract — We propose a human-supervised control synthesis method for a stochastic Dubins vehicle su...
Abstract — In this paper, we present a method for optimal control synthesis of a plant that interact...
We present a model-free reinforcement learning algorithm to synthesize control policies that maximiz...
This paper focuses on the so called controller synthesis problem, which addresses the question of ho...
Probabilistic model checking is a technique employed for verifying the correctness of computer syst...
Probabilistic model checking is a technique employed for verifying the correctness of computer syste...
We present a model-free reinforcement learning algorithm to synthesize control policies that maximiz...
Formal Methods for Control Synthesis offer theoretically sound approaches to safety critical control...
Programming by Demonstration (PbD) offers a user-friendly way of skill transfer from human to robot....
Abstract — We consider the synthesis of control policies for probabilistic systems, modeled by Marko...