KB국민은행에서 제공하는 경제/금융 도메인에 특화된 한국어 ALBERT 모델
-
Updated
Oct 7, 2021 - Python
KB국민은행에서 제공하는 경제/금융 도메인에 특화된 한국어 ALBERT 모델
A symbolic benchmark for verifiable chain-of-thought financial reasoning. Includes executable templates, 58 topics across 12 domains, and ChainEval metrics.
Research on all kind of NLP in market forecasting, expert estimation, etc.
Interaction-centric behavioral modeling for earnings calls using multimodal neural fusion, text-audio divergence, and Q&A interaction dynamics.
🎯 Fine-tuning LLMs using LlamaFactory for financial intent understanding | Evaluating open-source models on OpenFinData benchmark | Full implementation with multiple models (Qwen2.5/ChatGLM3/Baichuan2/Llama3)
7-signal financial text classifier for Reddit posts and market news — sentiment, directionality, quality, sarcasm, relevance, sector rotation. Free tier, no credit card.
An open-source sell-side analyst that never sleeps. Screens stocks, runs DCF + reverse DCF, extracts earnings call signals, and ships an institutional-grade research note ;automatically.
AI-powered crypto sentiment analysis platform with real-time news monitoring, dual VADER/FinBERT models, FastAPI backend, Next.js dashboard, and Flutter mobile app.
Competition entry: end-to-end OfficeQA pipeline for Sentient Arena — retrieval, ledger extraction, and LLM reasoning over 10k+ financial documents
NLP pipeline that detects linguistic deception in earnings calls using FinBERT, sentence-BERT Q&A evasion scoring, and XGBoost trained on SEC restatement history.
Resource-efficient LLM distillation: Improving sustainability and reducing computational costs of Large Language Models in financial analytics through knowledge distillation.
Thinking-aware baselines & low-data LoRA/QLoRA post-training on FinQA — a controlled Qwen3-4B vs Qwen3-8B numerical-reasoning study.
Curated papers and datasets for large language models in finance
Living Literature Review on Memestock identification using NLP
This repository contains code for fine-tuning a BERT-based model for financial sentiment analysis. The project uses the Financial PhraseBank dataset to train a model that can classify financial texts as positive, neutral, or negative.
Regime-based evaluation framework for financial NLP stability. Implements chronological cross-validation, semantic drift quantification via Jensen-Shannon divergence, and multi-faceted robustness profiling. Replicates Sun et al.'s (2025) methodology with modular, auditable Python codebase.
QLoRA fine-tuned Llama 3.1 8B for structured extraction from SEC EDGAR filings — financial NLP, chunking, and document understanding
Fine-grained transformer ABSA with financial and clinical domain adaptation
Comparative study of FinBERT, Local LLM, and RAG-enhanced approaches for financial sentiment classification on FinancialPhraseBank
A structured evaluation pipeline for LLM-generated outputs in financial supervision contexts. Combines PRA-aligned prompts, thread-type detection, and metric-level meta-review to assess relevance, justification, and actionability across 50+ regulatory and conversational metrics.
Add a description, image, and links to the financial-nlp topic page so that developers can more easily learn about it.
To associate your repository with the financial-nlp topic, visit your repo's landing page and select "manage topics."