2025 7th International Congress on Human-Computer Interaction, Optimization and Robotic Applications (ICHORA), Ankara, Turkey, 23 - 24 May 2025, pp.1-6, (Full Text)
Travel Time Estimation (TTE) is a challenging problem that necessitates
the use of advanced and adaptable Machine Learning (ML) models for
accurate resolution. Its significance lies in the pervasive need for
precise predictions of travel durations, as individuals increasingly
rely on such information to efficiently manage their time in the context
of their busy daily schedules. In this context, a novel ensemble
machine learning model is proposed to address the TTE problem. The model
is developed using the publicly available New York City taxi trip
dataset, which serves as a comprehensive benchmark for building and
evaluating ML models for TTE. To construct the proposed ensemble model,
multiple ML algorithms are combined to leverage their complementary
strengths. Additionally, Principal Component Analysis (PCA) and
Truncated Singular Value Decomposition (TSVD) are individually employed
as noise reduction techniques within the ensemble framework to enhance
its robustness. The resulting ensemble models demonstrate superior
performance, effectively improving overall prediction accuracy.