Delivery Issues Identification from Customer Feedback Data
- URL: http://arxiv.org/abs/2112.13372v1
- Date: Sun, 26 Dec 2021 12:41:10 GMT
- Title: Delivery Issues Identification from Customer Feedback Data
- Authors: Ankush Chopra, Mahima Arora, Shubham Pandey
- Abstract summary: This paper shows how to find these issues using customer feedback from the text comments and uploaded images.
We used transfer learning for both Text and Image models to minimize the demand for thousands of labeled examples.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Millions of packages are delivered successfully by online and local retail
stores across the world every day. The proper delivery of packages is needed to
ensure high customer satisfaction and repeat purchases. These deliveries suffer
various problems despite the best efforts from the stores. These issues happen
not only due to the large volume and high demand for low turnaround time but
also due to mechanical operations and natural factors. These issues range from
receiving wrong items in the package to delayed shipment to damaged packages
because of mishandling during transportation. Finding solutions to various
delivery issues faced by both sending and receiving parties plays a vital role
in increasing the efficiency of the entire process. This paper shows how to
find these issues using customer feedback from the text comments and uploaded
images. We used transfer learning for both Text and Image models to minimize
the demand for thousands of labeled examples. The results show that the model
can find different issues. Furthermore, it can also be used for tasks like
bottleneck identification, process improvement, automating refunds, etc.
Compared with the existing process, the ensemble of text and image models
proposed in this paper ensures the identification of several types of delivery
issues, which is more suitable for the real-life scenarios of delivery of items
in retail businesses. This method can supply a new idea of issue detection for
the delivery of packages in similar industries.
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