We show that an interesting class of feed-forward neural networks can be understood as quantitative argumentation frameworks. This connection creates a bridge between research in Formal Argumentation and Machine Learning. We generalize the semantics of feed-forward neural networks to acyclic graphs and study the resulting computational and semantical properties in argumentation graphs. As it turns out, the semantics gives stronger guarantees than existing semantics that have been tailor-made for the argumentation setting. From a machine-learning perspective, the connection does not seem immediately helpful. While it gives intuitive meaning to some feed-forward-neural networks, they remain difficult to understand due to their size and den...
Argumentation mining regards an advanced form of human language understanding by the machine. This i...
Argumentation has proven successful in a number of domains, including multi-agent systems and decisi...
We present an overview of current research on artificial neural networks, emphasizing a statistica...
While neural networks have been successfully used in a number of machine learning applications, logi...
Despite the rapid growth in attention on eXplainable AI (XAI) of late, explanations in the literatur...
Argumentation is a leading principle both foundationally and functionally for agent-oriented computi...
In this paper, we present a learning-based approach to determining acceptance of arguments under sev...
Computational argumentation (CA) has emerged, in recent decades, as a powerful formalism for knowl- ...
In recent years, there have been many attempts to combine XAI with the field of symbolic AI in order...
Formal models of argumentation have been investigated in several areas, from multi-agent systems and...
Deep learning is bringing remarkable contributions to the field of argumentation mining, but the exi...
Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this pa...
We investigate neural techniques for end-to-end computational argumentation mining (AM). We frame AM...
In recent years, there have been many attempts to combine XAI with the field of symbolic AI in order...
peer reviewedThis paper is part of a research program centered around argumentation networks and of...
Argumentation mining regards an advanced form of human language understanding by the machine. This i...
Argumentation has proven successful in a number of domains, including multi-agent systems and decisi...
We present an overview of current research on artificial neural networks, emphasizing a statistica...
While neural networks have been successfully used in a number of machine learning applications, logi...
Despite the rapid growth in attention on eXplainable AI (XAI) of late, explanations in the literatur...
Argumentation is a leading principle both foundationally and functionally for agent-oriented computi...
In this paper, we present a learning-based approach to determining acceptance of arguments under sev...
Computational argumentation (CA) has emerged, in recent decades, as a powerful formalism for knowl- ...
In recent years, there have been many attempts to combine XAI with the field of symbolic AI in order...
Formal models of argumentation have been investigated in several areas, from multi-agent systems and...
Deep learning is bringing remarkable contributions to the field of argumentation mining, but the exi...
Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this pa...
We investigate neural techniques for end-to-end computational argumentation mining (AM). We frame AM...
In recent years, there have been many attempts to combine XAI with the field of symbolic AI in order...
peer reviewedThis paper is part of a research program centered around argumentation networks and of...
Argumentation mining regards an advanced form of human language understanding by the machine. This i...
Argumentation has proven successful in a number of domains, including multi-agent systems and decisi...
We present an overview of current research on artificial neural networks, emphasizing a statistica...