แนวคิดหลัก
Our study introduces a novel two-step approach that leverages Large Language Models (LLMs) to efficiently identify similar data points across diverse, non-free text domains such as tabular and image data.
บทคัดย่อ
This paper presents a novel methodology for identifying similar data points across various non-free text domains, such as tabular and image data, using Large Language Models (LLMs). The approach consists of two key stages:
Stage I - Human-in-the-loop Data Summarization:
- Utilizes LLMs to generate customized data summaries based on user-defined criteria and interests.
- The interactive summarization process reduces data complexity and highlights essential information.
Stage II - Hidden State Extraction:
- Feeds the summarized data through another sophisticated LLM to extract hidden state representations.
- These feature-rich vectors capture the semantic and contextual essence of the data, enabling nuanced similarity analysis.
The authors demonstrate the effectiveness of their method through experiments on image data (MIT Places365 dataset) and tabular data (AMLSim dataset). Key findings include:
Image Data:
- LLMs can summarize image data into concise, informative tags representing functional and aesthetic attributes.
- The model shows promise in identifying similar bathroom scenes but also exhibits some misclassifications, highlighting the need for further refinement.
Tabular Data:
- LLMs can construct comprehensive customer profiles from transactional data, highlighting behaviors indicative of potential money laundering activities.
- The generated tags accurately reflect high-risk factors, suggesting the model's capability in pattern recognition for financial compliance applications.
The paper discusses the limitations of the approach, such as model generalization, interpretability, and computational demands. Future work aims to address these challenges, enhance the methodologies, and further explore the capabilities of LLMs in data analysis across various domains.
สถิติ
"High frequency cross-border transactions"
"Large amounts in different currencies"
"Inconsistent payment formats"
คำพูด
"Our two-step approach involves data point summarization and hidden state extraction."
"By reducing data complexity through summarization before extracting dense, feature-rich representations, our approach offers a scalable and efficient solution for analyzing large datasets."
"Empowers domain experts without deep technical backgrounds, enabling them to leverage advanced data analysis techniques for informed decision-making."