Articles producció científicaGestió d'Empreses

Assessing Chatbot Acceptance in Policyholder's Assistance Through the Integration of Explainable Machine Learning and Importance-Performance Map Analysis

  • Identification data

    Identifier:  imarina:9464921
    Authors:  Gené-Albesa, J; de Andrés-Sánchez, J
    Abstract:
    Companies are increasingly giving more attention to chatbots as an innovative solution to transform the customer service experience, redefining how they interact with users and optimizing their support processes. This study analyzes the acceptance of conversational robots in customer service within the insurance sector, using a conceptual model based on well-known new information systems adoption groundworks that are implemented with a combination of machine learning techniques based on decision trees and so-called importance-performance map analysis (IPMA). The intention to interact with a chatbot is explained by performance expectancy (PE), effort expectancy (EE), social influence (SI), and trust (TR). For the analysis, three machine learning methods are applied: decision tree regression (DTR), random forest (RF), and extreme gradient boosting (XGBoost). While the architecture of DTR provides a highly visual and intuitive explanation of the intention to use chatbots, its generalization through RF and XGBoost enhances the model's explanatory power. The application of Shapley additive explanations (SHAP) to the best-performing model, RF, reveals a hierarchy of relevance among the explanatory variables. We find that TR is the most influential variable. In contrast, PE appears to be the least relevant factor in the acceptance of chatbots. IPMA suggests that SI, TR, and EE all deserve special attention. While the prioritization of TR and EE may be justified by their higher importance, SI stands out as the variable with the lowest performance, indicating the greatest room for improvement. In contrast, PE not only requires less attention, but it may even be reasonable to reallocate efforts away from improving PE in order to enhance the performance of the more critical variables.
  • Others:

    Link to the original source: https://www.mdpi.com/2079-9292/14/16/3266
    APA: Gené-Albesa, J; de Andrés-Sánchez, J (2025). Assessing Chatbot Acceptance in Policyholder's Assistance Through the Integration of Explainable Machine Learning and Importance-Performance Map Analysis. Electronics, 14(16), 3266-. DOI: 10.3390/electronics14163266
    Paper original source: Electronics. 14 (16): 3266-
    Article's DOI: 10.3390/electronics14163266
    Journal publication year: 2025-08-17
    Entity: Universitat Rovira i Virgili
    Paper version: info:eu-repo/semantics/publishedVersion
    Record's date: 2026-02-13
    URV's Author/s: De Andrés Sánchez, Jorge / Gené Albesa, Jaume
    Department: Gestió d'Empreses
    Licence document URL: https://repositori.urv.cat/ca/proteccio-de-dades/
    Publication Type: Journal Publications
    Author, as appears in the article.: Gené-Albesa, J; de Andrés-Sánchez, J
    licence for use: https://creativecommons.org/licenses/by/3.0/es/
    Thematic Areas: Computer networks and communications, Computer science, information systems, Control and systems engineering, Electrical and electronic engineering, Engenharias iv, Engineering, electrical & electronic, Hardware and architecture, Physics, applied, Signal processing
    Author's mail: jaume.gene@urv.cat, jorge.deandres@urv.cat
  • Keywords:

    Chatbots
    Decision tree regression
    Insurance
    Random forest
    Shapley additive explanations (shap
    Shapley additive explanations (shap)
    Technolog
    Trust
    User acceptance
    Xgboost
    Computer Networks and Communications
    Computer Science
    Information Systems
    Control and Systems Engineering
    Electrical and Electronic Engineering
    Engineering
    Electrical & Electronic
    Hardware and Architecture
    Physics
    Applied
    Signal Processing
    Engenharias iv
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