Food Delivery Time Prediction in Indian Cities Using Machine Learning Models
Journal:
arXiv
Published Date:
Mar 19, 2025
Abstract
Accurate prediction of food delivery times significantly impacts customer
satisfaction, operational efficiency, and profitability in food delivery
services. However, existing studies primarily utilize static historical data
and often overlook dynamic, real-time contextual factors crucial for precise
prediction, particularly in densely populated Indian cities. This research
addresses these gaps by integrating real-time contextual variables such as
traffic density, weather conditions, local events, and geospatial data
(restaurant and delivery location coordinates) into predictive models. We
systematically compare various machine learning algorithms, including Linear
Regression, Decision Trees, Bagging, Random Forest, XGBoost, and LightGBM, on a
comprehensive food delivery dataset specific to Indian urban contexts. Rigorous
data preprocessing and feature selection significantly enhanced model
performance. Experimental results demonstrate that the LightGBM model achieves
superior predictive accuracy, with an R2 score of 0.76 and Mean Squared Error
(MSE) of 20.59, outperforming traditional baseline approaches. Our study thus
provides actionable insights for improving logistics strategies in complex
urban environments. The complete methodology and code are publicly available
for reproducibility and further research.