Challenge: Equity research reports are crucial resources for investors, but lack professional analysis and the rapid evolution of market events outpaces their update cycles.
Approach: They propose an event-Enhanced automated construction of financial knowledge graph (FinKario) that automatically integrates real-time company fundamentals and market events through prompt-driven extraction guided by professional institutional templates.
Outcome: The proposed model outperforms financial LLMs by 18.81% and institutional strategies by 17.85% on average in backtesting.

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Knowledge-augmented Financial Market Analysis and Report Generation (2024.emnlp-industry)

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Challenge: Existing methods to generate financial market analysis text require extensive financial knowledge and skill of financial analysts.
Approach: They propose a task to generate financial market analysis reports using financial market data using a financial knowledge graph.
Outcome: The proposed framework outperforms large-scale language models and retrieval-augmented baselines in the financial market analysis generation task.
Understanding Structured Financial Data with LLMs: A Case Study on Fraud Detection (2026.acl-long)

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Challenge: Large Language Models (LLMs) are expensive to develop and maintain and require extensive feature engineering to perform.
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XFinBench: Benchmarking LLMs in Complex Financial Problem Solving and Reasoning (2025.findings-acl)

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Challenge: Existing large language models (LLMs) lack advanced capabilities such as temporal reasoning, future forecasting, and numerical modeling.
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A High Precision Pipeline for Financial Knowledge Graph Construction (2020.coling-main)

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Challenge: Knowledge graphs are a standard for structured knowledge representation in the Semantic Web.
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FinRipple: Aligning Large Language Models with Financial Market for Event Ripple Effect Awareness (2025.findings-acl)

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Challenge: Financial markets exhibit complex dynamics where localized events trigger ripple effects across entities.
Approach: They propose a framework that empowers large language models to analyze ripple effects . they use financial theory-guided large-scale reinforcement learning to align LLMs with the market .
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Financial Event Extraction Using Wikipedia-Based Weak Supervision (D19-51)

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Challenge: Existing methods for detecting financial and economic events from text have relied on a knowledge-base of financial events, or corresponding financial figures.
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Harnessing LLMs for Temporal Data - A Study on Explainable Financial Time Series Forecasting (2023.emnlp-industry)

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Challenge: Recent advances in machine learning and artificial intelligence have opened up numerous opportunities and challenges in financial time series forecasting.
Approach: They propose to use Large Language Models for explainable financial time series forecasting to leverage cross-sequence information and extract insights from text and price time series.
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A Graph-Based Method for Unsupervised Knowledge Discovery from Financial Texts (2022.lrec-1)

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Challenge: A financial analyst's work involves manually reviewing lengthy filings and financial news articles in order to extract relevant pieces of information.
Approach: They propose an end-to-end, fully unsupervised method for knowledge discovery from financial texts that integrates existing resources to construct a knowledge graph of companies and related entities.
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QFinZero: A Unified Financial Toolchain for LLM-Based Trading Agents (2026.acl-demo)

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Challenge: Existing trading systems rely on fragmented and task-specific APIs, resulting in inconsistent schemas and limited reproducibility.
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Event-Driven Learning of Systematic Behaviours in Stock Markets (2020.findings-emnlp)

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Challenge: Using financial news, we can predict stock market behaviours by extracting financial events from the news and ranking the importance of the events.
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