De grootste kennisbank van het HBO

Inspiratie op jouw vakgebied

Vrij toegankelijk

Deel deze publicatie

User-Adaptive Personalized Chatbots for Conversational Information Seeking Tasks

Closed access

User-Adaptive Personalized Chatbots for Conversational Information Seeking Tasks

Closed access

Samenvatting

A chatbot’s design affects how customers perceive its competence and usefulness, both significant predictors of technology acceptance. The preferred design principles vary with the customer’s emotional state and personality, making it unrealistic to come up with a static design that serves everyone. I propose a user-adaptive personalized chatbot framework where the most suitable conversational design cues are decided interactively. The framework is composed of multiple components, each one providing valuable information on how to modify the conversation style of the bot. Components include mechanisms such as a sentiment tracker for active feedback, and a retriever to check previous conversations for finding similar interactions. After receiving the context from the components, the chatbot actively adapts its conversation style for matching the customer’s emotional needs. With this framework, my goal is to create a truly personalized experience for customers, thus increasing the adoption of chatbots as customer support agents for information-seeking tasks.

Toon meer
Organisatie
Gepubliceerd in2025 ACM SIGIR Conference on Human Information Interaction and Retrieval Melbourne, Australia, AUS
Datum2025-04-29
Type
DOI10.1145/3698204.3716483
TaalEngels

Op de HBO Kennisbank vind je publicaties van 26 hogescholen

De grootste kennisbank van het HBO

Inspiratie op jouw vakgebied

Vrij toegankelijk