🧠 Prediction Phrase Extractor (NER)

This is a fine-tuned Named Entity Recognition (NER) model that extracts stock prediction phrases from Turkish financial tweets. These prediction phrases are later passed into a sentiment classifier for further analysis.

🧾 Example predictions:

  • "will reach 70 TL"
  • "to moon soon"
  • "drop to 50 in 2 weeks"

🧠 Model Details

  • Developed by: damlakonur
  • Model type: BERT fine-tuned for token-classification
  • Language(s): Turkish
  • Finetuned from: bert-base-cased
  • Entity type: Tahmin (prediction phrase)
  • License: MIT

πŸš€ How to Use

from transformers import pipeline

model = pipeline(
    "token-classification",
    model="your-username/prediction-text-ner-bist30",
    aggregation_strategy="simple"
)

model("EREGL will reach 45 TL in June.")
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