Unveiling the Power of Self-Attention for Shipping Cost Prediction: References

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14 Jun 2024

Authors:

(1) P Aditya Sreekar, Amazon and these authors contributed equally to this work {sreekarp@amazon.com};

(2) Sahil Verm, Amazon and these authors contributed equally to this work {vrsahil@amazon.com;}

(3) Varun Madhavan, Indian Institute of Technology, Kharagpur. Work done during internship at Amazon {varunmadhavan@iitkgp.ac.in};

(4) Abhishek Persad, Amazon {persadap@amazon.com}.

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