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  • We use the trt turkish news data which inside news context and categories belongs to one of the news.

  • Using bert base turkish uncased model, aimed to label the categories to the news.

  • We have 11 separate categories as below;

    ('bilim_teknoloji',

    'dunya', 'egitim',

    'ekonomi',

    'guncel',

    'gundem',

    'kultur_sanat',

    'saglik',

    'spor',

    'turkiye',

    'yasam')

  • We got the validation skor and follow the metric accuracy. The model gave us successfully result.

Training results

Epoch Train Loss Validation Loss accuracy val_accuracy
0 0.739859 0.507217 0.766797 0.828693
1 0.413323 0.474160 0.865625 0.843466
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