Mimicking Behaviors in Separated Domains

05/18/2022
by   Giuseppe De Giacomo, et al.
0

Devising a strategy to make a system mimicking behaviors from another system is a problem that naturally arises in many areas of Computer Science. In this work, we interpret this problem in the context of intelligent agents, from the perspective of LTLf, a formalism commonly used in AI for expressing finite-trace properties. Our model consists of two separated dynamic domains, D_A and D_B, and an LTLf specification that formalizes the notion of mimicking by mapping properties on behaviors (traces) of D_A into properties on behaviors of D_B. The goal is to synthesize a strategy that step-by-step maps every behavior of D_A into a behavior of D_B so that the specification is met. We consider several forms of mapping specifications, ranging from simple ones to full LTLf, and for each we study synthesis algorithms and computational properties.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/23/2020

LTLf Synthesis on Probabilistic Systems

Many systems are naturally modeled as Markov Decision Processes (MDPs), ...
research
03/08/2022

Runtime Enforcement of Hyperproperties

An enforcement mechanism monitors a reactive system for undesired behavi...
research
01/15/2023

Understanding Online Behaviors through a Temporal Lens

Timestamps in digital traces include significant detailed information on...
research
04/11/2023

Habits and goals in synergy: a variational Bayesian framework for behavior

How to behave efficiently and flexibly is a central problem for understa...
research
12/17/2019

LTLf Synthesis with Fairness and Stability Assumptions

In synthesis, assumptions are constraints on the environment that rule o...
research
08/31/2018

Finite LTL Synthesis with Environment Assumptions and Quality Measures

In this paper, we investigate the problem of synthesizing strategies for...
research
07/05/2017

Information-gain computation

Despite large incentives, ecorrectness in software remains an elusive go...

Please sign up or login with your details

Forgot password? Click here to reset