咨询与建议

限定检索结果

文献类型

  • 221 篇 期刊文献
  • 172 篇 会议

馆藏范围

  • 393 篇 电子文献
  • 0 种 纸本馆藏

日期分布

学科分类号

  • 246 篇 工学
    • 196 篇 计算机科学与技术...
    • 168 篇 软件工程
    • 39 篇 信息与通信工程
    • 37 篇 控制科学与工程
    • 32 篇 生物工程
    • 25 篇 光学工程
    • 22 篇 生物医学工程(可授...
    • 14 篇 电气工程
    • 13 篇 化学工程与技术
    • 11 篇 机械工程
    • 11 篇 电子科学与技术(可...
    • 7 篇 安全科学与工程
    • 6 篇 力学(可授工学、理...
    • 6 篇 材料科学与工程(可...
    • 6 篇 土木工程
    • 5 篇 仪器科学与技术
  • 134 篇 理学
    • 89 篇 数学
    • 37 篇 生物学
    • 36 篇 统计学(可授理学、...
    • 24 篇 系统科学
    • 22 篇 物理学
    • 13 篇 化学
  • 46 篇 管理学
    • 29 篇 图书情报与档案管...
    • 19 篇 管理科学与工程(可...
    • 7 篇 工商管理
  • 12 篇 医学
    • 12 篇 临床医学
    • 10 篇 基础医学(可授医学...
    • 9 篇 药学(可授医学、理...
  • 5 篇 法学
    • 5 篇 社会学
  • 4 篇 教育学
    • 4 篇 教育学
  • 3 篇 经济学
  • 2 篇 文学
  • 2 篇 军事学
  • 1 篇 农学
  • 1 篇 艺术学

主题

  • 32 篇 pattern analysis
  • 30 篇 machine intellig...
  • 20 篇 neural networks
  • 18 篇 laboratories
  • 18 篇 machine learning
  • 15 篇 design engineeri...
  • 15 篇 system analysis ...
  • 13 篇 semantics
  • 12 篇 pattern recognit...
  • 11 篇 training
  • 10 篇 computational li...
  • 9 篇 image segmentati...
  • 9 篇 contrastive lear...
  • 9 篇 feature extracti...
  • 8 篇 learning
  • 8 篇 humans
  • 7 篇 object detection
  • 7 篇 reinforcement le...
  • 7 篇 convergence
  • 6 篇 neurons

机构

  • 80 篇 miit key laborat...
  • 66 篇 college of compu...
  • 27 篇 college of compu...
  • 19 篇 guangdong key la...
  • 18 篇 department of el...
  • 18 篇 department of el...
  • 17 篇 key laboratory o...
  • 16 篇 miit key laborat...
  • 14 篇 gaoling school o...
  • 14 篇 beijing key labo...
  • 13 篇 miit key laborat...
  • 11 篇 collaborative in...
  • 11 篇 school of comput...
  • 10 篇 department of st...
  • 9 篇 tsinghua univers...
  • 9 篇 school of data a...
  • 9 篇 pattern analysis...
  • 8 篇 pattern analysis...
  • 8 篇 college of compu...
  • 7 篇 pattern recognit...

作者

  • 47 篇 chen songcan
  • 23 篇 li piji
  • 23 篇 huang sheng-jun
  • 21 篇 ghojogh benyamin
  • 21 篇 karray fakhri
  • 21 篇 crowley mark
  • 18 篇 huang feihu
  • 18 篇 zhang daoqiang
  • 16 篇 sheng-jun huang
  • 16 篇 liang dong
  • 15 篇 m. kamel
  • 15 篇 ghodsi ali
  • 15 篇 songcan chen
  • 13 篇 zhou jie
  • 13 篇 lin yankai
  • 11 篇 tan xiaoyang
  • 9 篇 geng chuanxing
  • 9 篇 wang xinrui
  • 9 篇 daoqiang zhang
  • 8 篇 li peng

语言

  • 377 篇 英文
  • 14 篇 其他
  • 5 篇 中文
检索条件"机构=Key Laboratory of Pattern Analysis and Machine Intelligence"
393 条 记 录,以下是41-50 订阅
排序:
Robust AUC maximization for classification with pairwise confidence comparisons
收藏 引用
Frontiers of Computer Science 2024年 第4期18卷 73-83页
作者: Haochen SHI Mingkun XIE Shengjun HUANG College of Computer Science and Technology Nanjing University of Aeronautics and AstronauticsNanjing 211106China College of Electronic and Information Engineering Nanjing University of Aeronautics and AstronauticsNanjing 211106China MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Nanjing 211106China
Supervised learning often requires a large number of labeled examples,which has become a critical bottleneck in the case that manual annotating the class labels is *** mitigate this issue,a new framework called pairwi... 详细信息
来源: 评论
Detecting differential transcript usage across multiple conditions for RNA-seq data based on the smoothed LDA model
收藏 引用
Frontiers of Computer Science 2021年 第3期15卷 217-219页
作者: Jing LI Xuejun LIU Daoqiang ZHANG College of Computer Science and Technology Nanjing University of Aeronautics and AstronauticsMIIT Key Laboratory of Pattern Analysis and Machine IntelligenceNanjing 211106China Collaborative Innovation Center of Novel Software Technology and Industrialization Nanjing 210023China
1 Introduction and main contributions Differential transcript usage(DTU),which refers to the event that the relative transcript abundance within a gene changes between *** detect DTU,various methods have been proposed... 详细信息
来源: 评论
Sign-aware Perturbations Regression
Sign-aware Perturbations Regression
收藏 引用
2021 SIAM International Conference on Data Mining, SDM 2021
作者: Li, Zhongnian Zhang, Tao Shao, Wei Chen, Songcan Zhang, Daoqiang MIIT Key Laboratory of Pattern Analysis and Machine Intelligence College of Computer Science and Technology Nanjing University of Aeronautics and Astronautics Nanjing China
This paper presents the first study on Sign-aware Perturbations Regression (SaPR), where the observed response variables contain the aware sign (negative or positive) perturbations. In order to predict the non-perturb...
来源: 评论
Medical Report Generation Based on Segment-Enhanced Contrastive Representation Learning  12th
Medical Report Generation Based on Segment-Enhanced Contras...
收藏 引用
12th National CCF Conference on Natural Language Processing and Chinese Computing, NLPCC 2023
作者: Zhao, Ruoqing Wang, Xi Dai, Hongliang Gao, Pan Li, Piji College of Computer Science and Technology Nanjing University of Aeronautics and Astronautics MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Nanjing China
Automated radiology report generation has the potential to improve radiology reporting and alleviate the workload of radiologists. However, the medical report generation task poses unique challenges due to the limited... 详细信息
来源: 评论
Adaptive Joint Attention with Reinforcement Training for Convolutional Image Caption  1st
Adaptive Joint Attention with Reinforcement Training for C...
收藏 引用
1st International Workshop on Human Brain and Artificial intelligence, HBAI 2019, held in conjunction with the 28th International Joint Conference on Artificial intelligence, IJCAI 2019
作者: Chen, Ruoyu Li, Zhongnian Zhang, Daoqiang College of Computer Science and Technology MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Nanjing University of Aeronautics and Astronautics Nanjing China
A convolutional decoder for image caption has proven to be easier to train than the Long Short Term Memory (LSTM) decoder [2]. However, previous convolutional image captioning methods are not good at capture the relat... 详细信息
来源: 评论
Graph Hyperalignment for Multi-subject fMRI Functional Alignment  1
收藏 引用
1st International Workshop on Graph Learning in Medical Imaging, GLMI 2019 held in conjunction with the 22nd International Conference on Medical Image Computing and Computer-Assisted Intervention, MICCAI 2019
作者: Li, Weida Chen, Fang Zhang, Daoqiang College of Computer Science and Technology MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Nanjing University of Aeronautics and Astronautics Nanjing China
In fMRI analysis, the scientist seeks to aggregate multi-subject fMRI data so that inferences shared across subjects can be achieved. The challenge is to eliminate the variability of anatomical structure and functiona... 详细信息
来源: 评论
DYKOR - A METHOD FOR GENERATING THE CONTENT OF EXPLANATIONS IN KNOWLEDGE SYSTEMS
收藏 引用
KNOWLEDGE-BASED SYSTEMS 1994年 第3期7卷 177-188页
作者: LOPEZSUAREZ, A KAMEL, M Pattern Analysis and Machine Intelligence Laboratory Department of Systems Design Engineering University of Waterloo Waterloo Ontario Canada N2L 3G1
The paper presents a methodology for improving the organization of knowledge bases and demonstrates its application for generating the content of explanations. The DyKOr (Dynamic Knowledge Organization) method combine... 详细信息
来源: 评论
Boundary Data Augmentation for Offline Reinforcement Learning
收藏 引用
ZTE Communications 2023年 第3期21卷 29-36页
作者: SHEN Jiahao JIANG Ke TAN Xiaoyang College of Computer Science and Technology Nanjing University of Aeronautics and AstronauticsNanjing 211106China MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Nanjing 211106China
Offline reinforcement learning(ORL)aims to learn a rational agent purely from behavior data without any online *** of the major challenges encountered in ORL is the problem of distribution shift,i.e.,the mismatch betw... 详细信息
来源: 评论
uChecker: Masked Pretrained Language Models as Unsupervised Chinese Spelling Checkers  29
uChecker: Masked Pretrained Language Models as Unsupervised ...
收藏 引用
29th International Conference on Computational Linguistics, COLING 2022
作者: Li, Piji College of Computer Science and Technology Nanjing University of Aeronautics Astronautics MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Jiangsu Nanjing China
The task of Chinese Spelling Check (CSC) is aiming to detect and correct spelling errors that can be found in the text. While manually annotating a high-quality dataset is expensive and time-consuming, thus the scale ... 详细信息
来源: 评论
A Multi-Scale Multi-Hop Graph Convolution Network for Predicting Fluid intelligence via Functional Connectivity
A Multi-Scale Multi-Hop Graph Convolution Network for Predic...
收藏 引用
2022 IEEE International Conference on Bioinformatics and Biomedicine, BIBM 2022
作者: Wen, Xuyun Cao, Qumei Zhang, Daoqiang Nanjing University of Aeronautics and Astronautics Nanjing College of Computer Science and Technology MIIT Key Laboratory of Pattern Analysis and Machine Intelligence Jiangsu China
Predicting fluid intelligence via neuroimaging data is important to understand neural mechanisms underlying diverse complex cognitive tasks in human brain. Functional connectivity (FC) reflects interactions among brai... 详细信息
来源: 评论