Despite their widespread adoption, neural conversation models have yet to exhibit natural chat capabilities with humans. In this research, we examine user utterances as causes and generated responses as effects, recognizing that changes in a cause should produce a different effect. To further explore this concept, we have compiled and expanded upon a new dataset called CausalDialogue through crowd-sourcing. This dataset includes multiple cause-effect pairs within a directed acyclic graph (DAG) structure. Our analysis reveals that traditional loss functions struggle to effectively incorporate the DAG structure, leading us to propose a causality-enhanced method called Exponential Maximum Average Treatment Effect (ExMATE) to enhance the impact...
oai:dad.uni-bielefeld.de:article/3698In this paper, we construct and train end-to-end neural network...
Despite important progress, conversational systems often generate dialogues that sound unnatural to ...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...
Despite their widespread adoption, neural conversation models have yet to exhibit natural chat capab...
Our investigation into the Affective Reasoning in Conversation (ARC) task highlights the challenge o...
In this paper, we conduct the first study on spurious correlations for open-domain response generati...
This study addresses the speech enhancement (SE) task within the causal inference paradigm by modeli...
A fundamental goal of scientific research is to learn about causal relationships. However, despite i...
This thesis mainly studies the causality in natural language processing. Understanding causality is ...
Implicit knowledge, such as common sense, is key to fluid human conversations. Current neural respon...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
Current approaches to empathetic response generation typically encode the entire dialogue history di...
Target-guided response generation enables dialogue systems to smoothly transition a conversation fro...
In this chapter, we outline the range of argument forms involving causation that can be found in eve...
Current open-domain conversational models can easily be made to talk in inadequate ways. Online lear...
oai:dad.uni-bielefeld.de:article/3698In this paper, we construct and train end-to-end neural network...
Despite important progress, conversational systems often generate dialogues that sound unnatural to ...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...
Despite their widespread adoption, neural conversation models have yet to exhibit natural chat capab...
Our investigation into the Affective Reasoning in Conversation (ARC) task highlights the challenge o...
In this paper, we conduct the first study on spurious correlations for open-domain response generati...
This study addresses the speech enhancement (SE) task within the causal inference paradigm by modeli...
A fundamental goal of scientific research is to learn about causal relationships. However, despite i...
This thesis mainly studies the causality in natural language processing. Understanding causality is ...
Implicit knowledge, such as common sense, is key to fluid human conversations. Current neural respon...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
Current approaches to empathetic response generation typically encode the entire dialogue history di...
Target-guided response generation enables dialogue systems to smoothly transition a conversation fro...
In this chapter, we outline the range of argument forms involving causation that can be found in eve...
Current open-domain conversational models can easily be made to talk in inadequate ways. Online lear...
oai:dad.uni-bielefeld.de:article/3698In this paper, we construct and train end-to-end neural network...
Despite important progress, conversational systems often generate dialogues that sound unnatural to ...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...