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Born for Auto-Tagging: Faster and better with new objective functions

15 June 2022
Chiung-ju Liu
Huang-Ting Shieh
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Abstract

Keyword extraction is a task of text mining. It is applied to increase search volume in SEO and ads. Implemented in auto-tagging, it makes tagging on a mass scale of online articles and photos efficiently and accurately. BAT is invented for auto-tagging which served as awoo's AI marketing platform (AMP). awoo AMP not only provides service as a customized recommender system but also increases the converting rate in E-commerce. The strength of BAT converges faster and better than other SOTA models, as its 4-layer structure achieves the best F scores at 50 epochs. In other words, it performs better than other models which require deeper layers at 100 epochs. To generate rich and clean tags, awoo creates new objective functions to maintain similar F1{\rm F_1}F1​ scores with cross-entropy while enhancing F2{\rm F_2}F2​ scores simultaneously. To assure the even better performance of F scores awoo revamps the learning rate strategy proposed by Transformer \cite{Transformer} to increase F1{\rm F_1}F1​ and F2{\rm F_2}F2​ scores at the same time.

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