license: mit
widget:
- text: >-
The early effects of our policy tightening are also becoming visible,
especially in sectors like manufacturing and construction that are more
sensitive to interest rate changes.
CentralBankRoBERTa
CentralBankRoBERTA is a large language model. It combines an economic agent classifier that distinguishes five basic macroeconomic agents with a binary sentiment classifier that identifies the emotional content of sentences in central bank communications.
Overview
The SentimentClassifier model is designed to detect whether a given sentence is positive or negative for either households, firms, the financial sector or the government. This model is based on the RoBERTa architecture and has been fine-tuned on a diverse and extensive dataset to provide accurate predictions.
Intended Use
The AudienceClassifier model is intended to be used for the analysis of central bank communications where sentiment analysis is essential.
Performance
- Accuracy: 88%
- F1 Score: 0.88
- Precision: 0.88
- Recall: 0.88
Usage
You can use these models in your own applications by leveraging the Hugging Face Transformers library. Below is a Python code snippet demonstrating how to load and use the AudienceClassifier model:
from transformers import pipeline
# Load the AudienceClassifier model
audience_classifier = pipeline("sentiment-classification", model="Moritz-Pfeifer/CentralBankRoBERTa-sentiment-classifier")
# Perform audience classification
sentinemnt_result = audience_classifier("The early effects of our policy tightening are also becoming visible, especially in sectors like manufacturing and construction that are more sensitive to interest rate changes.")
print("Sentiment Classification:", sentinemnt_result[0]['label'])