--- language: "hr" tags: - text-classification - hate-speech widget: - text: "Potpredsjednik Vlade i ministar branitelja Tomo Medved komentirao je Vladine planove za zakonsku zabranu pozdrava 'za dom spremni'." --- # bcms-bertic-frenk-hate Text classification model based on [`classla/bcms-bertic`](https://huggingface.co/classla/bcms-bertic) and fine-tuned on the [FRENK dataset](https://www.clarin.si/repository/xmlui/handle/11356/1433) comprising of LGBT and migrant hatespeech. Only the Croatian subset of the data was used for fine-tuning and the dataset has been relabeled for binary classification (offensive or acceptable). ## Fine-tuning hyperparameters Fine-tuning was performed with `simpletransformers`. Beforehand a brief hyperparameter optimisation was performed and the presumed optimal hyperparameters are: ```python model_args = { "num_train_epochs": 12, "learning_rate": 1e-5, "train_batch_size": 74} ``` ## Performance The same pipeline was run with two other transformer models and `fasttext` for comparison. Accuracy and macro F1 score were recorded for each of the 6 fine-tuning sessions and post festum analyzed. | model | average accuracy | average macro F1 | |----------------------------|------------------|------------------| | bcms-bertic-frenk-hate | 0.8313 | 0.8219 | | EMBEDDIA/crosloengual-bert | 0.8054 | 0.796 | | xlm-roberta-base | 0.7175 | 0.7049 | | fasttext | 0.771 | 0.754 | From recorded accuracies and macro F1 scores p-values were also calculated: Comparison with `crosloengual-bert`: | test | accuracy p-value | macro F1 p-value | |----------------|------------------|------------------| | Wilcoxon | 0.00781 | 0.00781 | | Mann Whithney | 0.00108 | 0.00108 | | Student t-test | 2.43e-10 | 1.27e-10 | Comparison with `xlm-roberta-base`: | test | accuracy p-value | macro F1 p-value | |----------------|------------------|------------------| | Wilcoxon | 0.00781 | 0.00781 | | Mann Whithney | 0.00107 | 0.00108 | | Student t-test | 4.83e-11 | 5.61e-11 | ## Use examples ```python from simpletransformers.classification import ClassificationModel model = ClassificationModel( "bert", "5roop/bcms-bertic-frenk-hate", use_cuda=True, ) predictions, logit_output = model.predict(['Ne odbacujem da će RH primiti još migranata iz Afganistana, no neće biti novog vala', "Potpredsjednik Vlade i ministar branitelja Tomo Medved komentirao je Vladine planove za zakonsku zabranu pozdrava 'za dom spremni' "]) predictions ### Output: ### array([0, 0]) ``` ## Citation If you use the model, please cite the following paper on which the original model is based: ``` @inproceedings{ljubesic-lauc-2021-bertic, title = "{BERT}i{\'c} - The Transformer Language Model for {B}osnian, {C}roatian, {M}ontenegrin and {S}erbian", author = "Ljube{\v{s}}i{\'c}, Nikola and Lauc, Davor", booktitle = "Proceedings of the 8th Workshop on Balto-Slavic Natural Language Processing", month = apr, year = "2021", address = "Kiyv, Ukraine", publisher = "Association for Computational Linguistics", url = "https://www.aclweb.org/anthology/2021.bsnlp-1.5", pages = "37--42", } ``` and the dataset used for fine-tuning: ``` @misc{ljubešić2019frenk, title={The FRENK Datasets of Socially Unacceptable Discourse in Slovene and English}, author={Nikola Ljubešić and Darja Fišer and Tomaž Erjavec}, year={2019}, eprint={1906.02045}, archivePrefix={arXiv}, primaryClass={cs.CL}, url={https://arxiv.org/abs/1906.02045} } ```