@article{article_1673090, title={Daily Product Purchase Predictions with E-commerce Recommendations Using a Continual Learning Neural Network System}, journal={Computer Science}, volume={10}, pages={144–152}, year={2025}, DOI={10.53070/bbd.1673090}, author={Osegi, Emmanuel Ndidi and Igbudu, Kingsley Ezebunwo and Okwu, Hachikaru Ngozi}, keywords={ANN, E-commerce, Continual Learning, Prediction, Recommender System}, abstract={In this research paper, we propose an intelligent recommender system suitable for E-commerce transactions. The system employs an emerging ANN method called the Hierarchical Temporal Memory (HTM) for continuous predictive recommendation. The results considering open source data obtained from an online store were reported considering the adjustments of HTM columns parameter. The findings of the result indicate that higher columns will lead to enhanced performance with > 95% classification accuracy obtained at a set column size of 1000units. The proposed HTM-ANN is expected to be a promising alternative to existing feed-forward ANNs for real-time E-commerce applications.}, number={2}, publisher={Ali KARCI}