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Detecting premature departure in online text-based counseling using logic-based pattern matching

BACKGROUND: More so than face-to-face counseling, users of online text-based services might drop out from a session before establishing a clear closure or expressing the intention to leave. Such premature departure may be indicative of heightened risk or dissatisfaction with the service or counselor...

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Autores principales: Xu, Yucan, Chan, Christian S., Tsang, Christy, Cheung, Florence, Chan, Evangeline, Fung, Jerry, Chow, James, He, Lihong, Xu, Zhongzhi, Yip, Paul S.F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8632835/
https://www.ncbi.nlm.nih.gov/pubmed/34877263
http://dx.doi.org/10.1016/j.invent.2021.100486
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author Xu, Yucan
Chan, Christian S.
Tsang, Christy
Cheung, Florence
Chan, Evangeline
Fung, Jerry
Chow, James
He, Lihong
Xu, Zhongzhi
Yip, Paul S.F.
author_facet Xu, Yucan
Chan, Christian S.
Tsang, Christy
Cheung, Florence
Chan, Evangeline
Fung, Jerry
Chow, James
He, Lihong
Xu, Zhongzhi
Yip, Paul S.F.
author_sort Xu, Yucan
collection PubMed
description BACKGROUND: More so than face-to-face counseling, users of online text-based services might drop out from a session before establishing a clear closure or expressing the intention to leave. Such premature departure may be indicative of heightened risk or dissatisfaction with the service or counselor. However, there is no systematic way to identify this understudied phenomenon. PURPOSE: This study has two objectives. First, we developed a set of rules and used logic-based pattern matching techniques to systematically identify premature departures in an online text-based counseling service. Second, we validated the importance of premature departure by examining its association with user satisfaction. We hypothesized that the users who rated the session as less helpful were more likely to have departed prematurely. METHOD: We developed and tested a classification model using a sample of 575 human-annotated sessions from an online text-based counseling platform. We used 80% of the dataset to train and develop the model and 20% of the dataset to evaluate the model performance. We further applied the model to the full dataset (34,821 sessions). We compared user satisfaction between premature departure and completed sessions based on data from a post-session survey. RESULTS: The resulting model achieved 97% and 92% F1 score in detecting premature departure cases in the training and test sets, respectively, suggesting it is highly consistent with the judgment of human coders. When applied to the full dataset, the model classified 15,150 (43.5%) sessions as premature departure and the remaining 19,671 (56.5%) as completed sessions. Completed cases (15.2%) were more likely to fill the post-chat survey than premature departure cases (4.0%). Premature departure was significantly associated with lower perceived helpfulness and effectiveness in distress reduction. CONCLUSIONS: The model is the first that systematically and accurately identifies premature departure in online text-based counseling. It can be readily modified and transferred to other contexts for the purpose of risk mitigation and service evaluation and improvement.
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spelling pubmed-86328352021-12-06 Detecting premature departure in online text-based counseling using logic-based pattern matching Xu, Yucan Chan, Christian S. Tsang, Christy Cheung, Florence Chan, Evangeline Fung, Jerry Chow, James He, Lihong Xu, Zhongzhi Yip, Paul S.F. Internet Interv Full length Article BACKGROUND: More so than face-to-face counseling, users of online text-based services might drop out from a session before establishing a clear closure or expressing the intention to leave. Such premature departure may be indicative of heightened risk or dissatisfaction with the service or counselor. However, there is no systematic way to identify this understudied phenomenon. PURPOSE: This study has two objectives. First, we developed a set of rules and used logic-based pattern matching techniques to systematically identify premature departures in an online text-based counseling service. Second, we validated the importance of premature departure by examining its association with user satisfaction. We hypothesized that the users who rated the session as less helpful were more likely to have departed prematurely. METHOD: We developed and tested a classification model using a sample of 575 human-annotated sessions from an online text-based counseling platform. We used 80% of the dataset to train and develop the model and 20% of the dataset to evaluate the model performance. We further applied the model to the full dataset (34,821 sessions). We compared user satisfaction between premature departure and completed sessions based on data from a post-session survey. RESULTS: The resulting model achieved 97% and 92% F1 score in detecting premature departure cases in the training and test sets, respectively, suggesting it is highly consistent with the judgment of human coders. When applied to the full dataset, the model classified 15,150 (43.5%) sessions as premature departure and the remaining 19,671 (56.5%) as completed sessions. Completed cases (15.2%) were more likely to fill the post-chat survey than premature departure cases (4.0%). Premature departure was significantly associated with lower perceived helpfulness and effectiveness in distress reduction. CONCLUSIONS: The model is the first that systematically and accurately identifies premature departure in online text-based counseling. It can be readily modified and transferred to other contexts for the purpose of risk mitigation and service evaluation and improvement. Elsevier 2021-11-23 /pmc/articles/PMC8632835/ /pubmed/34877263 http://dx.doi.org/10.1016/j.invent.2021.100486 Text en © 2021 The Authors. Published by Elsevier B.V. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Full length Article
Xu, Yucan
Chan, Christian S.
Tsang, Christy
Cheung, Florence
Chan, Evangeline
Fung, Jerry
Chow, James
He, Lihong
Xu, Zhongzhi
Yip, Paul S.F.
Detecting premature departure in online text-based counseling using logic-based pattern matching
title Detecting premature departure in online text-based counseling using logic-based pattern matching
title_full Detecting premature departure in online text-based counseling using logic-based pattern matching
title_fullStr Detecting premature departure in online text-based counseling using logic-based pattern matching
title_full_unstemmed Detecting premature departure in online text-based counseling using logic-based pattern matching
title_short Detecting premature departure in online text-based counseling using logic-based pattern matching
title_sort detecting premature departure in online text-based counseling using logic-based pattern matching
topic Full length Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8632835/
https://www.ncbi.nlm.nih.gov/pubmed/34877263
http://dx.doi.org/10.1016/j.invent.2021.100486
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