基于属性学习的零样本图像分类研究
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1.Prioritised experience replay based on sample optimisation
- 关键词:
- ;Agent learning;Average values;Mean values;Optimisations;Sampling method;Training process;Training speed
- Wang, Xuesong;Xiang, Haopeng;Cheng, Yuhu;Yu, Qiang
- 《3rd Asian Conference on Artificial Intelligence Technology, ACAIT 2019》
- 2020年
- July 5, 2019 - July 7, 2019
- Chongqing, China
- 会议
The sample-based prioritised experience replay proposed in this study is aimed at how to select samples to the experience replay, which improves the training speed and increases the reward return. In the traditional deep Q-networks (DQNs), it is subjected to random pickup of samples into the experience replay. However, the effect of each sample is different for the training process of agent. A better sampling method will make the agent training more effective. Therefore, when selecting a sample to the experience replay, the authors first allow the agent to learn randomly through the sample optimisation network, and take the average value returned after each study, so that the mean value is used as a threshold for selecting samples to the experience replay. Second, on the basis of sample optimisation, the authors increase the priority update and use the idea of reward-shaping to give additional reward values to the returns of certain samples, which speeds up the agent training. Compared with traditional DQN and the prioritised experience replay DQN, this study uses OpenAI Gym as platform to improve agent learning efficiency.
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© 2020 Institution of Engineering and Technology. All rights reserved.2.Low Rank Subspace Clustering via Discrete Constraint and Hypergraph Regularization for Tumor Molecular Pattern Discovery
- 关键词:
- Low rank subspace clustering; gene expression data; discrete constraint;hypergraph regularization; Schatten p-norm; tumor clustering;NONNEGATIVE MATRIX FACTORIZATION; GENE-EXPRESSION; DIMENSIONALITYREDUCTION
- Liu, Jian;Cheng, Yuhu;Wang, Xuesong;Cui, Xiaoluo;Kong, Yi;Du, Junping
- 《12th International Conference on Intelligent Computing 》
- 2018年
- AUG 02-05, 2016
- Lanzhou, PEOPLES R CHINA
- 会议
Tumor clustering is a powerful approach for cancer class discovery which is crucial to the effective treatment of cancer. Many traditional clustering methods such as NMF-based models, have been widely used to identify tumors. However, they cannot achieve satisfactory results. Recently, subspace clustering approaches have been proposed to improve the performance by dividing the original space into multiple low-dimensional subspaces. Among them, low rank representation is becoming a popular approach to attain subspace clustering. In this paper, we propose a novel Low Rank Subspace Clustering model via Discrete Constraint and Hypergraph Regularization (DHLRS). The proposed method learns the cluster indicators directly by using discrete constraint, which makes the clustering task simple. For each subspace, we adopt Schatten p-norm to better approximate the low rank constraint. Moreover, Hypergraph Regularization is adopted to infer the complex relationship between genes and intrinsic geometrical structure of gene expression data in each subspace. Finally, the molecular pattern of tumor gene expression data sets is discovered according to the optimized cluster indicators. Experiments on both synthetic data and real tumor gene expression data sets prove the effectiveness of proposed DHLRS.
...3.Spectral-Spatial Feature Extraction for HSI Classification Based on Supervised Hypergraph and Sample Expanded CNN
- 关键词:
- Convolutional neural network (CNN); feature extraction (FE);hyperspectral image (HSI); hypergraph; sample expansion;DIMENSIONALITY REDUCTION; GRAPH; TEMPERATURE; SPARSE
- Kong, Yi;Wang, Xuesong;Cheng, Yuhu
- 《International-Association-for-Pattern-Recognition TC 7 Workshopon Pattern Recognition in Remote Sensing 》
- 2018年
- AUG, 2018
- Beijing, PEOPLES R CHINA
- 会议
Hyperspectral image (HSI) classification remains a challenging problem due to unique characteristics of HSI data (such as numerous bands and strong correlations in the spectral and spatial domains) and small sample size. To address such concerns, we propose a novel spectral-spatial feature extraction method for HSI classification by employing graph embedding and deep learning (DL) models. Since the conventional graph cannot capture the complex manifold relationship of HSI data, and there exist the observations of within-class variation as well as the similarity between different classes in the spectral domain, we construct the supervised within-class/between-class hypergraph (SWBH) to extract the spectral features ofHSI. Since it is difficult for DL models to learn representative features for HSI data when the labeled training samples are limited, we propose the random zero settings to newly generate a large amount of labeled HSI samples for the training of convolutional neural network (CNN). The designed sample expanded CNN (SECNN) is used to extract the HSI spatial features. Thus, the spectral-spatial features of HSI can be learned by integrating the features extracted from SWBH and SECNN, respectively. Experiments on three real HSI datasets demonstrate higher classification accuracy of the proposed SWBH-SECNN method.
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