Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Contextualising Conversational AI

View through CrossRef
Conversational AI has evolved from simple rule-based systems to sophisticated large language models capable of engaging in complex dialogues. However, despite significant advances in fluency and coherence, these systems often struggle with fundamental aspects of human communication, particularly in how they handle context as a pragmatic factor. This thesis investigates how conversational AI systems can better understand, represent, and respond to the multiple layers of context that shape human dialogue. Through an examination of uncertainty management, perspective integration, and context representation, we explore both the potential and limitations of current approaches to context-aware conversational AI. We begin with a theoretical foundation grounded in Grice's Cooperative Principle, establishing how pragmatic maxims influence current AI implementations. The first research direction explores how conversational AI models handle uncertainty, examining both the expression and consistency of uncertainty across different contexts. Through multilingual experiments and analysis of explanation triggers, we find significant misalignments between models' internal confidence levels and their expressed certainty, particularly in non-English languages where models maintain high confidence despite degraded performance. The second direction investigates how systems incorporate individual perspectives, examining the integration of subjective information, user-specific adaptation mechanisms, and cultural considerations. Research into task-oriented dialogue systems reveals challenges in balancing factual and subjective knowledge, while analysis of multilingual datasets shows that current approaches often preserve Anglo-centric biases rather than representing diverse cultural viewpoints. The final direction examines how conversational AI can be grounded in world and personal contexts through structured representation mechanisms. We explore Graph-based approaches for maintaining dialogue memory and context across interactions, demonstrating promise for both transparency and long-term coherence in conversational systems. The findings show that while conversational AI has made substantial progress, current approaches often fail to capture the nuanced ways humans use context to shape communication, from expressing appropriate uncertainty to adapting responses based on cultural backgrounds. We conclude that context should be treated not as an optional enhancement but as a fundamental component of conversational AI design, requiring research that bridges theoretical understanding of human communication with practical implementation in AI systems.
VU E-Publishing
Title: Contextualising Conversational AI
Description:
Conversational AI has evolved from simple rule-based systems to sophisticated large language models capable of engaging in complex dialogues.
However, despite significant advances in fluency and coherence, these systems often struggle with fundamental aspects of human communication, particularly in how they handle context as a pragmatic factor.
This thesis investigates how conversational AI systems can better understand, represent, and respond to the multiple layers of context that shape human dialogue.
Through an examination of uncertainty management, perspective integration, and context representation, we explore both the potential and limitations of current approaches to context-aware conversational AI.
We begin with a theoretical foundation grounded in Grice's Cooperative Principle, establishing how pragmatic maxims influence current AI implementations.
The first research direction explores how conversational AI models handle uncertainty, examining both the expression and consistency of uncertainty across different contexts.
Through multilingual experiments and analysis of explanation triggers, we find significant misalignments between models' internal confidence levels and their expressed certainty, particularly in non-English languages where models maintain high confidence despite degraded performance.
The second direction investigates how systems incorporate individual perspectives, examining the integration of subjective information, user-specific adaptation mechanisms, and cultural considerations.
Research into task-oriented dialogue systems reveals challenges in balancing factual and subjective knowledge, while analysis of multilingual datasets shows that current approaches often preserve Anglo-centric biases rather than representing diverse cultural viewpoints.
The final direction examines how conversational AI can be grounded in world and personal contexts through structured representation mechanisms.
We explore Graph-based approaches for maintaining dialogue memory and context across interactions, demonstrating promise for both transparency and long-term coherence in conversational systems.
The findings show that while conversational AI has made substantial progress, current approaches often fail to capture the nuanced ways humans use context to shape communication, from expressing appropriate uncertainty to adapting responses based on cultural backgrounds.
We conclude that context should be treated not as an optional enhancement but as a fundamental component of conversational AI design, requiring research that bridges theoretical understanding of human communication with practical implementation in AI systems.

Related Results

State-of-the-art in Open-domain Conversational AI: A Survey
State-of-the-art in Open-domain Conversational AI: A Survey
We survey SoTA open-domain conversational AI models with the purpose of presenting the prevailing challenges that still exist to spur future research. In addition, we provide stati...
State-of-the-Art in Open-Domain Conversational AI: A Survey
State-of-the-Art in Open-Domain Conversational AI: A Survey
We survey SoTA open-domain conversational AI models with the objective of presenting the prevailing challenges that still exist to spur future research. In addition, we provide sta...
CONVERSATIONAL IMPLICATURE OF ARSY AND ARSYA IN YOUTUBE CHANNEL
CONVERSATIONAL IMPLICATURE OF ARSY AND ARSYA IN YOUTUBE CHANNEL
The aims of this study were to describe the kinds of  Conversational Implicarture, to explain the ways of performing implicature  and to describe the contex of implicature by Arsy ...
Conversational Implicatures on Saturday Night Live Talk Show
Conversational Implicatures on Saturday Night Live Talk Show
Conversational implicature seems to be an everlasting concern in pragmatics for its wide-ranging investigation possibility. Applying Gricean’s principles, the present study examine...
CONVERSATION IMPLICATURE OF ARSY AND ARSYA IN YOUTUBE CHANNEL
CONVERSATION IMPLICATURE OF ARSY AND ARSYA IN YOUTUBE CHANNEL
ABSTRACTThe aims of this study were to describe the kinds of  Conversational Implicarture, to explain the ways of performing implicature  and to describe the contex of implicature ...
Semantic Analysis for Conversational Datasets: Improving Their Quality Using Semantic Relationships
Semantic Analysis for Conversational Datasets: Improving Their Quality Using Semantic Relationships
As more and more datasets become available, their utilization in different applications increases in popularity. Their volume and production rate, however, means that their quality...
Conversational Agents for Health and Well-being Across the Life Course: Protocol for an Evidence Map (Preprint)
Conversational Agents for Health and Well-being Across the Life Course: Protocol for an Evidence Map (Preprint)
BACKGROUND Conversational agents, which we defined as computer programs that are designed to simulate two-way human conversation by using language and are p...
Conversational Agents in Healthcare: Design and Implementation
Conversational Agents in Healthcare: Design and Implementation
The integration of conversational agents in healthcare has emerged as a transformative tool for delivering personalized, scalable, and accessible care. These intelligent systems, p...

Back to Top