A Smart Recommendation System for Carrier Shipper Matching Using Multilabel Classification – A Survey

Volume: 10 | Issue: 01 | Year 2024 | Subscription
International Journal of Broadband Cellular Communication
Received Date: 05/20/2024
Acceptance Date: 06/04/2024
Published On: 2024-08-28
First Page: 1
Last Page: 7

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By: Tejashwini N, Varun. E, S G Dhanush Kumar, Aastha Prasad, Sharan. S, and Danush V. S

1-Professor, Department of Computer Science, Sai Vidya Institute of Technology Bengaluru, India
2-Professor, Department of Computer Science, Sai Vidya Institute of Technology Bengaluru, India
3-Students, Department of Computer Science, Sai Vidya Institute of Technology Bengaluru, India
4-Students, Department of Computer Science, Sai Vidya Institute of Technology Bengaluru, India
5-Students, Department of Computer Science, Sai Vidya Institute of Technology Bengaluru, India
6-Students, Department of Computer Science, Sai Vidya Institute of Technology Bengaluru, India

Abstract

Efficient matching between carriers and shippers is crucial in the logistics industry to optimize resource utilization and minimize costs. This paper puts forth a smart recommendation framework dependent on multilabel classification techniques to improve the carrier-shipper matching process. The method makes use of machine learning techniques to predict multiple relevant carrier options for a given shipment request. We present a comprehensive literature review on related works in carrier-shipper matching and multilabel classification methodologies. Our proposed system offers significant improvements over traditional methods by considering multiple factors simultaneously, resulting in more accurate and personalized recommendations. Experimental results demonstrate the effectiveness and feasibility of the proposed approach in enhancing the efficiency and effectiveness of carrier-shipper matching processes.

Keywords: Carrier-Shipper Matching, Multilabel Classification, Recommendation System, Logistics, Machine Learning

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Citation:

How to cite this article: Tejashwini N, Varun. E, S G Dhanush Kumar, Aastha Prasad, Sharan. S, and Danush V. S, A Smart Recommendation System for Carrier Shipper Matching Using Multilabel Classification – A Survey. International Journal of Broadband Cellular Communication. 2024; 10(01): 1-7p.

How to cite this URL: Tejashwini N, Varun. E, S G Dhanush Kumar, Aastha Prasad, Sharan. S, and Danush V. S, A Smart Recommendation System for Carrier Shipper Matching Using Multilabel Classification – A Survey. International Journal of Broadband Cellular Communication. 2024; 10(01): 1-7p. Available from:https://journalspub.com/publication/a-smart-recommendation-system-for-carrier-shipper-matching-using-multilabel-classification-a-survey/

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