Search Results for author: Rui Ding

Found 14 papers, 2 papers with code

Text2Analysis: A Benchmark of Table Question Answering with Advanced Data Analysis and Unclear Queries

no code implementations21 Dec 2023 Xinyi He, Mengyu Zhou, Xinrun Xu, Xiaojun Ma, Rui Ding, Lun Du, Yan Gao, Ran Jia, Xu Chen, Shi Han, Zejian yuan, Dongmei Zhang

We evaluate five state-of-the-art models using three different metrics and the results show that our benchmark presents introduces considerable challenge in the field of tabular data analysis, paving the way for more advanced research opportunities.

Question Answering

A Partially Observable Deep Multi-Agent Active Inference Framework for Resource Allocation in 6G and Beyond Wireless Communications Networks

no code implementations22 Aug 2023 Fuhui Zhou, Rui Ding, Qihui Wu, Derrick Wing Kwan Ng, Kai-Kit Wong, Naofal Al-Dhahir

Simulation results demonstrate that our proposed framework can significantly improve the sum transmission rate of the secondary network compared to various benchmark schemes.

FRGNN: Mitigating the Impact of Distribution Shift on Graph Neural Networks via Test-Time Feature Reconstruction

no code implementations18 Aug 2023 Rui Ding, Jielong Yang, Feng Ji, Xionghu Zhong, Linbo Xie

To address this challenge, we propose FR-GNN, a general framework for GNNs to conduct feature reconstruction.

Demonstration of InsightPilot: An LLM-Empowered Automated Data Exploration System

no code implementations2 Apr 2023 Pingchuan Ma, Rui Ding, Shuai Wang, Shi Han, Dongmei Zhang

In brief, an IQuery is an abstraction and automation of data analysis operations, which mimics the approach of data analysts and simplifies the exploration process for users.

Language Modelling Large Language Model

f-Betas and Portfolio Optimization with f-Divergence induced Risk Measures

no code implementations1 Feb 2023 Rui Ding

In this paper, we build on using the class of f-divergence induced coherent risk measures for portfolio optimization and derive its necessary optimality conditions formulated in CAPM format.

Portfolio Optimization

Curvature regularization for Non-line-of-sight Imaging from Under-sampled Data

1 code implementation1 Jan 2023 Rui Ding, Juntian Ye, Qifeng Gao, Feihu Xu, Yuping Duan

Non-line-of-sight (NLOS) imaging aims to reconstruct the three-dimensional hidden scenes from the data measured in the line-of-sight, which uses photon time-of-flight information encoded in light after multiple diffuse reflections.

LRIP-Net: Low-Resolution Image Prior based Network for Limited-Angle CT Reconstruction

no code implementations30 Jul 2022 Qifeng Gao, Rui Ding, Linyuan Wang, Bin Xue, Yuping Duan

The noisy incomplete projection data results in the ill-posedness of the inverse problems.

XInsight: eXplainable Data Analysis Through The Lens of Causality

no code implementations26 Jul 2022 Pingchuan Ma, Rui Ding, Shuai Wang, Shi Han, Dongmei Zhang

XInsight is a three-module, end-to-end pipeline designed to extract causal graphs, translate causal primitives into XDA semantics, and quantify the quantitative contribution of each explanation to a data fact.

Decision Making

Data-and-Knowledge Dual-Driven Automatic Modulation Recognition for Wireless Communication Networks

no code implementations30 Jun 2022 Rui Ding, Hao Zhang, Fuhui Zhou, Qihui Wu, Zhu Han

In order to tackle these problems, a novel data-and-knowledge dual-driven automatic modulation classification scheme based on radio frequency machine learning is proposed by exploiting the attribute features of different modulations.

Attribute Automatic Modulation Recognition +1

A Unified and Fast Interpretable Model for Predictive Analytics

no code implementations16 Nov 2021 Yuanyuan Jiang, Rui Ding, Tianchi Qiao, Yunan Zhu, Shi Han, Dongmei Zhang

Predictive analytics is human involved, thus the machine learning model is preferred to be interpretable.

Decision Making

ML4C: Seeing Causality Through Latent Vicinity

1 code implementation NeurIPS 2021 Haoyue Dai, Rui Ding, Yuanyuan Jiang, Shi Han, Dongmei Zhang

Starting from seeing that SCL is not better than random guessing if the learning target is non-identifiable a priori, we propose a two-phase paradigm for SCL by explicitly considering structure identifiability.

A hybrid deep-learning approach for complex biochemical named entity recognition

no code implementations20 Dec 2020 Jian Liu, Lei Gao, Sujie Guo, Rui Ding, Xin Huang, Long Ye, Qinghua Meng, Asef Nazari, Dhananjay Thiruvady

In this approach, the MHATT mechanism aims to improve the recognition accuracy of abbreviations to efficiently deal with the problem of inconsistency in full-text labels.

Attribute Attribute Extraction +4

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