Sishi Xiong


2025

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TeleAI at SemEval-2025 Task 8: Advancing Table Reasoning Framework with Large Language Models
Sishi Xiong | Mengxiang Li | Dakai Wang | Yu Zhao | Jie Zhang | Changzai Pan | Haowei He | Xiangyu Li | Wenhan Chang | Zhongjiang He | Shuangyong Song | Yongxiang Li
Proceedings of the 19th International Workshop on Semantic Evaluation (SemEval-2025)

The paper presents our system developed for SemEval-2025 Task 8, which focuses on table question answering (TQA). The TQA tasks face challenges due to the characteristics of real-world tabular data, such as large size, incomplete column semantics, and entity ambiguity. To address these issues, we propose a large language model (LLM)-powered and programming-based framework, named Flow-of-Table-Reasoning. We introduce the table schema integrating verbalized structure and semantics for query decomposition and programming, enabling a holistic understanding of tables and the ability to process large-size tables. We design a multi-step schema linking plan to derive a focused table schema that retains only information relevant to the query, aiming to eliminate ambiguity and reduce hallucinations. Furthermore, we incorporate reasoning workflow into an iterative thinking architecture, allowing incremental cycles of thinking, reasoning and reflection. Our system achieves first place on both TQA and Lite TQA subtasks.

2024

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Dual Prompt Tuning based Contrastive Learning for Hierarchical Text Classification
Sishi Xiong | Yu Zhao | Jie Zhang | Li Mengxiang | Zhongjiang He | Xuelong Li | Shuangyong Song
Findings of the Association for Computational Linguistics: ACL 2024

Hierarchical text classification aims at categorizing texts into a multi-tiered tree-structured hierarchy of labels. Existing methods pay more attention to capture hierarchy-aware text feature by exploiting explicit parent-child relationships, while interactions between peer labels are rarely taken into account, resulting in severe label confusion within each layer. In this work, we propose a novel Dual Prompt Tuning (DPT) method, which emphasizes identifying discrimination among peer labels by performing contrastive learning on each hierarchical layer. We design an innovative hand-crafted prompt containing slots for both positive and negative label predictions to cooperate with contrastive learning. In addition, we introduce a label hierarchy self-sensing auxiliary task to ensure cross-layer label consistency. Extensive experiments demonstrate that DPT achieves significant improvements and outperforms the current state-of-the-art methods on BGC and RCV1-V2 benchmark datasets.