Profiling Cryptocurrency Influencers with Few-Shot Learning Using Data Augmentation and ELECTRA
Contributo in Atti di convegno
Data di Pubblicazione:
2023
Abstract:
With this work we propose an application of the ELECTRA Transformer, fine-tuned on two augmented version of the same training dataset. Our team developed the novel framework for taking part at the Profiling Cryptocurrency Influencers with Few-shot Learning task hosted at PAN@CLEF2023. Our proposed strategy consists of an early data augmentation stage followed by a fine-tuning of ELECTRA. At the first stage we augment the original training dataset provided by the organizers using backtranslation. Using this augmented version of the training dataset, we perform a fine tuning of ELECTRA. Finally, using the fine-tuned version of ELECTRA, we inference the labels of the samples provided in the test set. To develop and test our model we used a two-ways validation on the training set. Firstly, we evaluate all the metrics on the augmented training set, and then we evaluate on the original training set. The metrics we considered span from accuracy to Macro F1, to Micro F1, to Recall and Precision. According to the official evaluator, our best submission reached a Macro F1 value equal to 0.3762.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
cryptocurrency influencers; few-shot learning; author profiling; text classification; Twitter; data augmentation; electra
Elenco autori:
Siino, Marco; Tesconi, Maurizio
Link alla scheda completa: