Dialogue summarization task involves summarizing long conversations while preserving the most salient information. Real-life dialogues often involve naturally occurring variations (e.g., repetitions, hesitations) and existing dialogue summarization models suffer from performance drop on such conversations. In this study, we systematically investigate the impact of such variations on state-of-the-art dialogue summarization models using publicly available datasets. To simulate real-life variations, we introduce two types of perturbations: utterance-level perturbations that modify individual utterances with errors and language variations, and dialogue-level perturbations that add non-informative exchanges (e.g., repetitions, greetings). We con...
We present a system for summarizing transcripts of conversational dialogues based on lexical chaini...
Abstractive dialogue summarization has long been viewed as an important standalone task in natural l...
Despite their widespread adoption, neural conversation models have yet to exhibit natural chat capab...
Factual inconsistencies in generated summaries severely limit the practical applications of abstract...
Missing information is a common issue of dialogue summarization where some information in the refere...
Output length is critical to dialogue summarization systems. The dialogue summary length is determin...
Dialogue summarization is a long-standing task in the field of NLP, and several data sets with dialo...
In this chapter, two empirical pilot studies on the role of politeness in dialogue summarization are...
Despite the recent advances in abstractive text summarization, current summarization models still su...
Abstract dialogue summarization generation has recently attracted considerable research attention, ...
The goal of summarization in natural language processing is to create abridged and informative vers...
Recent works that revealed the vulnerability of dialogue state tracking (DST) models to distribution...
While large language models (LLMs) already achieve strong performance on standard generic summarizat...
Dialogue is an essential part of human communication and cooperation. Existing research mainly focus...
Automatic summarization systems usually are trained and evaluated in a particular domain with fixed ...
We present a system for summarizing transcripts of conversational dialogues based on lexical chaini...
Abstractive dialogue summarization has long been viewed as an important standalone task in natural l...
Despite their widespread adoption, neural conversation models have yet to exhibit natural chat capab...
Factual inconsistencies in generated summaries severely limit the practical applications of abstract...
Missing information is a common issue of dialogue summarization where some information in the refere...
Output length is critical to dialogue summarization systems. The dialogue summary length is determin...
Dialogue summarization is a long-standing task in the field of NLP, and several data sets with dialo...
In this chapter, two empirical pilot studies on the role of politeness in dialogue summarization are...
Despite the recent advances in abstractive text summarization, current summarization models still su...
Abstract dialogue summarization generation has recently attracted considerable research attention, ...
The goal of summarization in natural language processing is to create abridged and informative vers...
Recent works that revealed the vulnerability of dialogue state tracking (DST) models to distribution...
While large language models (LLMs) already achieve strong performance on standard generic summarizat...
Dialogue is an essential part of human communication and cooperation. Existing research mainly focus...
Automatic summarization systems usually are trained and evaluated in a particular domain with fixed ...
We present a system for summarizing transcripts of conversational dialogues based on lexical chaini...
Abstractive dialogue summarization has long been viewed as an important standalone task in natural l...
Despite their widespread adoption, neural conversation models have yet to exhibit natural chat capab...