metadata
library_name: transformers
license: mit
language:
- en
tags:
- chronologically consistent
- modernbert
- glue
pipeline_tag: fill-mask
inference: false
ChronoBERT
Model Description
ChronoBERT is a series high-performance chronologically consistent large language models (LLM) designed to eliminate lookahead bias and training leakage while maintain good language understanding in time-sensitive applications. The model is pretrained on diverse, high-quality, open-source, and timestamped text to maintain chronological consistency.
All models in the series achieve GLUE benchmark scores that surpass standard BERT. This approach preserves the integrity of historical analysis and enables more reliable economic and financial modeling.
- Developed by: Songrun He, Linying Lv, Asaf Manela, Jimmy Wu
- Model type: Transformer-based bidirectional encoder (ModernBERT architecture)
- Language(s) (NLP): English
- License: MIT License
Model Sources
- Paper: "Chronologically Consistent Large Language Models" (He, Lv, Manela, Wu, 2025)
How to Get Started with the Model
The model is compatible with the transformers
library starting from v4.48.0:
pip install -U transformers>=4.48.0
pip install flash-attn
Here is an example code of using the model:
from transformers import AutoTokenizer, AutoModel
device = 'cuda:0'
tokenizer = AutoTokenizer.from_pretrained("manelalab/chrono-bert-v1-19991231")
model = AutoModel.from_pretrained("manelalab/chrono-bert-v1-19991231").to(device)
text = "Obviously, the time continuum has been disrupted, creating a new temporal event sequence resulting in this alternate reality. -- Dr. Brown, Back to the Future Part II"
inputs = tokenizer(text, return_tensors="pt").to(device)
outputs = model(**inputs)
Training Details
Training Data
- Pretraining corpus: Our initial model chrono-bert-v1-19991231 is pretrained on 460 billion tokens of pre-2000, diverse, high-quality, and open-source text data to ensure no leakage of data afterwards.
- Incremental updates: Yearly updates from 2000 to 2024 with an additional 65 billion tokens of timestamped text.
Training Procedure
- Architecture: ModernBERT-based model with rotary embeddings and flash attention.
- Objective: Masked token prediction.
Evaluation
Testing Data, Factors & Metrics
- Language understanding: Evaluated on GLUE benchmark tasks.
- Financial forecasting: Evaluated using return prediction task based on Dow Jones Newswire data.
- Comparison models: ChronoBERT was benchmarked against BERT, FinBERT, StoriesLM-v1-1963, and Llama 3.1.
Results
- GLUE Score: chrono-bert-v1-19991231 and chrono-bert-v1-20241231 achieved GLUE score of 84.71 and 85.54 respectively, outperforming BERT (84.52).
- Stock return predictions: During the sample from 2008-01 to 2023-07, chrono-bert-v1-realtime achieves a long-short portfolio Sharpe ratio of 4.80, outperforming BERT, FinBERT, and StoriesLM-v1-1963, and comparable to Llama 3.1 8B (4.90).
Citation
@article{He2025ChronoBERT,
title={Chronologically Consistent Large Language Models},
author={He, Songrun and Lv, Linying and Manela, Asaf and Wu, Jimmy},
journal={Working Paper},
year={2025}
}
Model Card Authors
- Songrun He (Washington University in St. Louis, [email protected])
- Linying Lv (Washington University in St. Louis, [email protected])
- Asaf Manela (Washington University in St. Louis, [email protected])
- Jimmy Wu (Washington University in St. Louis, [email protected])