paper_id uint32 0 5.29k | title stringlengths 14 183 | authors listlengths 1 36 | abstract large_stringlengths 246 3.59k | type stringclasses 3
values | arxiv_id stringlengths 10 10 ⌀ | github stringclasses 641
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values | space_ids listlengths 0 3 | model_ids listlengths 0 12 | dataset_ids listlengths 0 6 | embedding listlengths 768 768 |
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0 | Feature-aware Modulation for Learning from Temporal Tabular Data | [
"Haorun Cai",
"Han-Jia Ye"
] | While tabular machine learning has achieved remarkable success, temporal distribution shifts pose significant challenges in real-world deployment, as the relationships between features and labels continuously evolve. Static models assume fixed mappings to ensure generalization, whereas adaptive models may overfit to tr... | poster | null | null | null | [] | [] | [] | [
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1 | Multimodal Tabular Reasoning with Privileged Structured Information | [
"Jun-Peng Jiang",
"Yu Xia",
"Hai-Long Sun",
"Shiyin Lu",
"Qingguo Chen",
"Weihua Luo",
"Kaifu Zhang",
"De-Chuan Zhan",
"Han-Jia Ye"
] | Tabular reasoning involves multi-step information extraction and logical inference over tabular data. While recent advances have leveraged large language models (LLMs) for reasoning over structured tables, such high-quality textual representations are often unavailable in real-world settings, where tables typically app... | poster | 2506.04088 | null | null | [] | [] | [] | [
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2 | Hawk: Leveraging Spatial Context for Faster Autoregressive Text-to-Image Generation | [
"Zhi-Kai Chen",
"Jun-Peng Jiang",
"Han-Jia Ye",
"De-Chuan Zhan"
] | Autoregressive (AR) image generation models can produce high-fidelity images but often struggle with slow inference due to their token-by-token, sequential decoding. Speculative decoding, which employs a draft model to approximate the AR model’s output, offers a promising way to reduce inference time. While this techni... | poster | null | null | null | [] | [] | [] | [
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3 | AVR: Active Visual Reasoning for Multimodal Large Language Models in Physical Environments | [
"Weijie Zhou",
"Xuantang Xiong",
"Yi Peng",
"Manli Tao",
"Chaoyang Zhao",
"Honghui Dong",
"Ming Tang",
"Jinqiao Wang"
] | Visual reasoning in multimodal large language models (MLLMs) has primarily been studied in static, fully observable settings, limiting their effectiveness in real-world environments where information is often incomplete due to occlusion or limited field of view. Humans, in contrast, actively explore and interact with t... | poster | null | null | null | [] | [] | [] | [
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4 | StelLA: Subspace Learning in Low-rank Adaptation using Stiefel Manifold | [
"Zhizhong Li",
"Sina Sajadmanesh",
"Jingtao Li",
"Lingjuan Lyu"
] | Low-rank adaptation (LoRA) has been widely adopted as a parameter-efficient technique for fine-tuning large-scale pre-trained models. However, it still lags behind full fine-tuning in performance, partly due to its insufficient exploitation of the geometric structure underlying low-rank manifolds. In this paper, we int... | spotlight | 2510.01938 | null | null | [] | [] | [] | [
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5 | Continuous Subspace Optimization for Continual Learning | [
"Quan Cheng",
"Yuanyu Wan",
"Lingyu Wu",
"Chenping Hou",
"Lijun Zhang"
] | Continual learning aims to learn multiple tasks sequentially while preserving prior knowledge, but faces the challenge of catastrophic forgetting when acquiring new knowledge. Recently, approaches leveraging pre-trained models have gained increasing popularity to mitigate this issue, due to the strong generalization ab... | poster | 2505.11816 | null | null | [] | [] | [] | [
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6 | Point or Line? Using Line-based Representation for Panoptic Symbol Spotting in CAD Drawings | [
"Xingguang Wei",
"Haomin Wang",
"Shenglong Ye",
"Ruifeng Luo",
"Zhang",
"Lixin Gu",
"Jifeng Dai",
"Yu Qiao",
"Wenhai Wang",
"Hongjie Zhang"
] | We study the task of panoptic symbol spotting, which involves identifying both individual instances of countable \textit{things} and the semantic regions of uncountable \textit{stuff} in computer-aided design (CAD) drawings composed of vector graphical primitives.Existing methods typically rely on image rasterization, ... | poster | 2505.23395 | null | null | [] | [] | [] | [
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7 | HeroFilter: Adaptive Spectral Graph Filter for Varying Heterophilic Relations | [
"Shuaicheng Zhang",
"Haohui Wang",
"Junhong Lin",
"Xiaojie Guo",
"Yada Zhu",
"Si Zhang",
"Dongqi Fu",
"Dawei Zhou"
] | Graph heterophily, where connected nodes have different labels, has attracted significant interest recently. Most existing works adopt a simplified approach - using low-pass filters for homophilic graphs and high-pass filters for heterophilic graphs. However, we discover that the relationship between graph heterophily ... | poster | 2510.10864 | null | null | [] | [] | [] | [
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8 | Learning to Plan Like the Human Brain via Visuospatial Perception and Semantic-Episodic Synergistic Decision-Making | [
"Tianyuan Jia",
"Ziyu Li",
"Qing Li",
"Xiuxing Li",
"Xiang Li",
"Chen Wei",
"Li Yao",
"Xia Wu"
] | Motion planning in high-dimensional continuous spaces remains challenging due to complex environments and computational constraints. Although learning-based planners, especially graph neural network (GNN)-based, have significantly improved planning performance, they still struggle with inaccurate graph construction and... | poster | null | null | null | [] | [] | [] | [
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9 | Cognitive Predictive Processing: A Human-like Framework for Adaptive Exploration in Open-World Reinforcement Learning | [
"boheng liu",
"Ziyu Li",
"Chenghua Duan",
"YuTian Liu",
"Zhuo Wang",
"Xiuxing Li",
"Qing Li",
"Xia Wu"
] | Open-world reinforcement learning challenges agents to develop intelligent behavior in vast exploration spaces. Recent approaches like LS-Imagine have advanced the field by extending imagination horizons through jumpy state transitions, yet remain limited by fixed exploration mechanisms and static jump thresholds that ... | poster | null | null | null | [] | [] | [] | [
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10 | FlexWorld: Progressively Expanding 3D Scenes for Flexible-View Exploration | [
"Luxi Chen",
"Zihan Zhou",
"Min Zhao",
"Yikai Wang",
"Ge Zhang",
"Wenhao Huang",
"Hao Sun",
"Ji-Rong Wen",
"Chongxuan LI"
] | Generating flexible-view 3D scenes, including 360° rotation and zooming, from single images is challenging due to a lack of 3D data. To this end, we introduce FlexWorld, a novel framework that progressively constructs a persistent 3D Gaussian splatting representation by synthesizing and integrating new 3D content. To h... | poster | null | null | null | [] | [] | [] | [
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0.... |
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