Dear all,
we are glad to present to you a new BERT-based model for Sentiment Analysis ( 
for Italian ), trained and benchmarked on multiple domains! 

The model has been jointly optimized and fine-tuned on multiple domains such as 
product reviews, social media comments and financial news. 
The model has achieved better performance than fine-tuning it in isolation on 
every single dataset, reaching state-of-the-art results in the majority of the 
datasets that we used. 

To get and use the model please, follow the instructions available here: 
https://sisl.disi.unitn.it/itfn-corpus/ 
<https://sisl.disi.unitn.it/itfn-corpus/> or 
you can go directly to the official GitLab repo: 
https://gitlab.com/sislab/multi-source-multi-domain-sentiment-analysis-with-bert-based-models
 
<https://gitlab.com/sislab/multi-source-multi-domain-sentiment-analysis-with-bert-based-models>

The related paper will be presented at LREC 2022 conference. 
The paper is titled as "Multi-source Multi-domain Sentiment Analysis with 
BERT-based Models" and it is available here 
<http://www.lrec-conf.org/proceedings/lrec2022/pdf/2022.lrec-1.62.pdf>.

Best Regards
----
Prof. Dr.-Ing. Giuseppe Riccardi
Founder and Director of the Signals and Interactive Systems Lab
Department of the Department of Computer Science and Engineering Department
University of Trento 




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