MULTI-MODAL TIME SERIES ANALYSIS WITHLARGE MODELS: REPRESENTATION,ADAPTATION, AND APPLICATIONS
The Hong Kong University of Science and Technology (Guangzhou)
数据科学与分析学域
PhD Thesis Proposal Examination
By Miss HAO Jianing
摘要
Time-series data is prevalent across numerous real-world domains, including finance, cli mate, healthcare, and transportation. In practice, time series are often associated with ex ternal multi-modal contexts beyond their temporal dynamics. With the emergence of large models, a critical challenge has arisen: determining appropriate representations for multimodal time-series analysis, especially when adapting large models for effective multimodal integration and diverse downstream tasks. To address this challenge, I systematically explore three progressive studies, each examining different representations (from token to visual representation), adaptation strategies (from prompting to fine-tuning), and downstream applications (from financial narrative visualization generation to interactive data exploration). First, FinFlier represents both time series and text as tokens, enabling LLMs to generate precise text-data binding for financial narrative visualization generation. Second, FinRipple advances the representation by transforming financial time series into embeddings while structuring textual information as time-varying knowledge graphs, effectively capturing complex market interconnections and ripple effects. The
TPE Committee
Chair of Committee: Prof. HUANG Weidong Tony
Prime Supervisor: Prof. ZENG Wei
Co-Supervisor: Prof. ZHANG Guang
Examiner: Prof. TANG Guoming
日期
10 June 2025
时间
15:00:00 - 16:00:00
地点
E1-147 (HKUST-GZ)