--- language: tr --- # Turkish News Text Classification Turkish text classification model obtained by fine-tuning the Turkish bert model (dbmdz/bert-base-turkish-cased) # Dataset Dataset consists of 11 classes were obtained from https://www.trthaber.com/. The model was created using the most distinctive 6 classes. Dataset can be accessed at https://github.com/gurkan08/datasets/tree/master/trt_11_category. label_dict = { 'LABEL_0': 'ekonomi', 'LABEL_1': 'spor', 'LABEL_2': 'saglik', 'LABEL_3': 'kultur_sanat', 'LABEL_4': 'bilim_teknoloji', 'LABEL_5': 'egitim' } 70% of the data were used for training and 30% for testing. train f1-weighted score = %97 test f1-weighted score = %94 # Usage from transformers import pipeline, AutoTokenizer, AutoModelForSequenceClassification tokenizer = AutoTokenizer.from_pretrained("gurkan08/bert-turkish-text-classification") model = AutoModelForSequenceClassification.from_pretrained("gurkan08/bert-turkish-text-classification") nlp = pipeline("sentiment-analysis", model=model, tokenizer=tokenizer) text = ["Süper Lig'in 6. haftasında Sivasspor ile Çaykur Rizespor karşı karşıya geldi...", "Son 24 saatte 69 kişi Kovid-19 nedeniyle yaşamını yitirdi, 1573 kişi iyileşti"] out = nlp(text) label_dict = { 'LABEL_0': 'ekonomi', 'LABEL_1': 'spor', 'LABEL_2': 'saglik', 'LABEL_3': 'kultur_sanat', 'LABEL_4': 'bilim_teknoloji', 'LABEL_5': 'egitim' } results = [] for result in out: result['label'] = label_dict[result['label']] results.append(result) print(results) # > [{'label': 'spor', 'score': 0.9992026090621948}, {'label': 'saglik', 'score': 0.9972177147865295}]