Full Text Available

Note: Clicking the button above will open the full text document at the original institutional repository in a new window.

Characterising user engagement of parents with the Aurora chatbot

Chatbots have the potential to enhance everyday life by providing information, customer support, personal assistance, and more across various sectors, making them versatile tools for modern living. In childcare, they have the potential to provide parents with relevant and acceptable childcare inform...

Full description

Saved in:
Bibliographic Details
Main Author: Liebetrau, Diana Rangel Lopes de Campos
Other Authors: Densmore, Melissa
Format: Thesis
Language:English
Published: Department of Computer Science 2025
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867613146586284032
access_status_str Open Access
author Liebetrau, Diana Rangel Lopes de Campos
author2 Densmore, Melissa
author_browse Densmore, Melissa
Liebetrau, Diana Rangel Lopes de Campos
author_facet Densmore, Melissa
Liebetrau, Diana Rangel Lopes de Campos
author_sort Liebetrau, Diana Rangel Lopes de Campos
collection Thesis
description Chatbots have the potential to enhance everyday life by providing information, customer support, personal assistance, and more across various sectors, making them versatile tools for modern living. In childcare, they have the potential to provide parents with relevant and acceptable childcare information. This potential arises from the growing disparity between the abundance of childcare information available and parents' ability to access information tailored to their specific needs [5]. Aurora, a rule-based Facebook Messenger chatbot, was developed to support parents and caregivers in caring for their children by providing accessible and comprehensible childcare information, targeted for Portuguese-speaking parents [6]. This research analysed the Aurora chatbot's chatlogs dating back to October 2018 up until September 2021 to scrutinise the interaction dynamics between Aurora and its users. Through this research, the objective is to delineate user engagement patterns, identify topics discussed, highlight topics outside the chatbot's knowledge domain, and assess the dynamics and quality of the conversations. The methodology used to achieve this objective encompassed text pre-processing, engagement metric extraction, topic analysis, content analysis, and sentiment analysis. The analysis of 1043 Aurora chatlogs indicated that only 718 (69%) users actively interacted with the system. These interactions predominantly occurred during lunchtime and late at night. The data showed that approximately 80% of conversations centred around baby sleep, 13% pertained to breastfeeding, and 7% focused on healthcare topics. While Aurora responded appropriately to in-domain questions, challenges arose when users' questions contained multiple topics, such as questions about the ability to breastfeed while taking certain medicines. User feedback was positive, with an average star rating of 4.37/5 (continuous scale), despite the modest sentiment score of 0.119 in the rating comments. The research classified users into four groups, based on paid and free subscriptions, each highlighting specific engagement patterns. Users who had the paid subscription showed a 243% increase in interactions and a 162% increase in extended use of the chatbot. These insights serve as guidance for Aurora's next iteration, highlighting the importance of recognising different user types and refining areas of shortfall. Additionally, this research contributes to expanding the scholarly corpus on how parents interact with chatbots.
format Thesis
id oai:open.uct.ac.za:11427/40836
institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:31:30.019Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2025
publishDateRange 2025
publishDateSort 2025
publisher Department of Computer Science
publisherStr Department of Computer Science
record_format dspace
source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/40836 Characterising user engagement of parents with the Aurora chatbot Liebetrau, Diana Rangel Lopes de Campos Densmore, Melissa Nunes, Francisco Information Technology Chatbots have the potential to enhance everyday life by providing information, customer support, personal assistance, and more across various sectors, making them versatile tools for modern living. In childcare, they have the potential to provide parents with relevant and acceptable childcare information. This potential arises from the growing disparity between the abundance of childcare information available and parents' ability to access information tailored to their specific needs [5]. Aurora, a rule-based Facebook Messenger chatbot, was developed to support parents and caregivers in caring for their children by providing accessible and comprehensible childcare information, targeted for Portuguese-speaking parents [6]. This research analysed the Aurora chatbot's chatlogs dating back to October 2018 up until September 2021 to scrutinise the interaction dynamics between Aurora and its users. Through this research, the objective is to delineate user engagement patterns, identify topics discussed, highlight topics outside the chatbot's knowledge domain, and assess the dynamics and quality of the conversations. The methodology used to achieve this objective encompassed text pre-processing, engagement metric extraction, topic analysis, content analysis, and sentiment analysis. The analysis of 1043 Aurora chatlogs indicated that only 718 (69%) users actively interacted with the system. These interactions predominantly occurred during lunchtime and late at night. The data showed that approximately 80% of conversations centred around baby sleep, 13% pertained to breastfeeding, and 7% focused on healthcare topics. While Aurora responded appropriately to in-domain questions, challenges arose when users' questions contained multiple topics, such as questions about the ability to breastfeed while taking certain medicines. User feedback was positive, with an average star rating of 4.37/5 (continuous scale), despite the modest sentiment score of 0.119 in the rating comments. The research classified users into four groups, based on paid and free subscriptions, each highlighting specific engagement patterns. Users who had the paid subscription showed a 243% increase in interactions and a 162% increase in extended use of the chatbot. These insights serve as guidance for Aurora's next iteration, highlighting the importance of recognising different user types and refining areas of shortfall. Additionally, this research contributes to expanding the scholarly corpus on how parents interact with chatbots. 2025-01-27T11:31:45Z 2025-01-27T11:31:45Z 2024 2025-01-27T11:29:16Z Thesis / Dissertation Masters MSc http://hdl.handle.net/11427/40836 eng application/pdf Department of Computer Science Faculty of Science University of Cape Town
spellingShingle Information Technology
Liebetrau, Diana Rangel Lopes de Campos
Characterising user engagement of parents with the Aurora chatbot
thesis_degree_str Master's
title Characterising user engagement of parents with the Aurora chatbot
title_full Characterising user engagement of parents with the Aurora chatbot
title_fullStr Characterising user engagement of parents with the Aurora chatbot
title_full_unstemmed Characterising user engagement of parents with the Aurora chatbot
title_short Characterising user engagement of parents with the Aurora chatbot
title_sort characterising user engagement of parents with the aurora chatbot
topic Information Technology
url http://hdl.handle.net/11427/40836
work_keys_str_mv AT liebetraudianarangellopesdecampos characterisinguserengagementofparentswiththeaurorachatbot