In this paper we describe how predictive models can be positively exploited in abstract argumentation. In particular, we present two main sets of results. On one side, we show that predictive models are effective for performing algorithm selection in order to determine which approach is better to enumerate the preferred extensions of a given argumentation framework. On the other side, we show that predictive models predict significant aspects of the solution to the preferred extensions enumeration problem. By exploiting an extensive set of argumentation framework features— i.e., values that summarise a potentially important property of a framework—the proposed approach is able to provide an accurate prediction about which algorithm would ...
This paper presents a novel framework for structured argumentation, named extend argumentative decis...
This paper seeks to better understand the links between human reasoning and preferred extensions as ...
Abstract argumentation framework (AF) is a unifying framework able to encompass a variety of nonmono...
In this paper we describe how predictive models can be positively exploited in abstract argumentatio...
In this paper we illustrate the design choices that led to the development of ArgSemSAT, the winner ...
Semantics extensions are the outcome of the argumentation reasoning process: enumerating them is gen...
AbstractWe analyse the computational complexity of the recently proposed ideal semantics within both...
Enumerating semantics extensions in abstract argumentation is generally an intractable problem. For ...
In this paper we consider the impact of configuration of abstract argumentation reasoners both when ...
In this paper we investigate the impact of automated configuration techniques on the ArgSemSAT solve...
In this paper we consider the impact of configuration of abstract argumentation reasoners both when ...
We evaluate the state of the art of solvers for hard argumentation problems—the enumeration of prefe...
This paper presents a novel SAT-based approach for the computation of extensions in abstract argume...
In this paper we analyze probabilistic argumentation frameworks (PAFs), defined as an extension of D...
Data-centric AI has proven successful in several domains, but its outputs are often hard to explain....
This paper presents a novel framework for structured argumentation, named extend argumentative decis...
This paper seeks to better understand the links between human reasoning and preferred extensions as ...
Abstract argumentation framework (AF) is a unifying framework able to encompass a variety of nonmono...
In this paper we describe how predictive models can be positively exploited in abstract argumentatio...
In this paper we illustrate the design choices that led to the development of ArgSemSAT, the winner ...
Semantics extensions are the outcome of the argumentation reasoning process: enumerating them is gen...
AbstractWe analyse the computational complexity of the recently proposed ideal semantics within both...
Enumerating semantics extensions in abstract argumentation is generally an intractable problem. For ...
In this paper we consider the impact of configuration of abstract argumentation reasoners both when ...
In this paper we investigate the impact of automated configuration techniques on the ArgSemSAT solve...
In this paper we consider the impact of configuration of abstract argumentation reasoners both when ...
We evaluate the state of the art of solvers for hard argumentation problems—the enumeration of prefe...
This paper presents a novel SAT-based approach for the computation of extensions in abstract argume...
In this paper we analyze probabilistic argumentation frameworks (PAFs), defined as an extension of D...
Data-centric AI has proven successful in several domains, but its outputs are often hard to explain....
This paper presents a novel framework for structured argumentation, named extend argumentative decis...
This paper seeks to better understand the links between human reasoning and preferred extensions as ...
Abstract argumentation framework (AF) is a unifying framework able to encompass a variety of nonmono...