Myroslava Bublyk

Work place: Lviv Polytechnic National University, S. Bandera Street, 12, Lviv, 79013, Ukraine

E-mail: my.bublyk@gmail.com

Website:

Research Interests:

Biography

Myroslava Bublyk received the Ph.D. degree in Physics from Ivan Franko National University of Lviv, Lviv, Ukraine, and the Doctor of Sciences degree in Economics from Lviv Polytechnic National University, Lviv, Ukraine. 
She is currently a Professor at Lviv Polytechnic National University, Lviv, Ukraine. She is the author of more than 400 publications, which have appeared in journals such as Energies, Journal of Open Innovation Technology Market and Complexity, and Advances in Intelligent Systems and Computing. Her primary research focus is the application of modern mathematical tools and the universal capabilities of AI to identify interdependencies at the interdisciplinary nexus of ecology, society, economy, and information technology.
Prof. Bublyk is an Academician of the Academy of Economic Sciences of Ukraine. She serves on the editorial board of Humanities and Social Sciences Letters (indexed in Scopus) and on the editorial and/or review boards of several other scientific journals, including Problems of Quality, Business Inform, and Problems of Economy. Prof. Bublyk‘s publications have a Hirsch index of 18 in the Scopus database.

Author Articles
Predictive Modelling and Factor Analysis of Public Transport Delays in Smart City Using Interpretable Machine Learning

By Yurii Matseliukh Vasyl Lytvyn Zhengbing Hu Myroslava Bublyk

DOI: https://doi.org/10.5815/ijitcs.2025.06.01, Pub. Date: 8 Dec. 2025

Delay prediction in urban public transport systems is a critical task for improving operational efficiency and service reliability. While numerous predictive models exist, understanding the relative importance of contributing factors remains a challenge, with traditional approaches often overestimating the impact of stochastic weather conditions. This study proposes an approach that combines predictive modelling and factor analysis based on interpretable machine learning. An eXtreme Gradient Boosting model was developed using a large dataset of operational and meteorological data from a city with approximately one million inhabitants. The model demonstrated high predictive accuracy, explaining 72% of the variance in delays (Coefficient of Determination R²=0.72). Analysis of the model’s feature importance revealed that operational cycles (seasonal, weekly, daily) and spatial context (routes, stops) are the dominant predictors, collectively accounting for over 52% of the model’s total feature importance. Contrary to common assumptions, weather conditions were identified as a powerful secondary, rather than primary, factor. While their cumulative feature importance was substantial (contributing nearly 45%), the model revealed their impact to be highly contextual: the negative effects of adverse weather were significantly amplified during predictable peak operational hours but were minimal otherwise. This research demonstrates how Explainable Artificial Intelligence methods can transform complex predictive models into practical tools, providing a data-driven basis for shifting from reactive management to proactive, evidence-based planning.

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