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Universal Language Model Fine-Tuning (ULMfit)
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Universal Language Model Fine-Tuning (ULMfit)
Comparining Universal Language Model Fine-Tuning (ULMfit) with other traditional approaches
This method uses single training and architecture.
This method does not require labels or in-domain documents.
Universal Language Model Fine-Tuning Usages
In a project where the tasks vary according to the size of documents, labels, and numbers.
In a task where there is no requirement of pre-processing and feature engineering.
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