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Heterogeneous clustering via adversarial deep Bayesian generative model
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作者 Xulun YE Jieyu ZHAO 《Frontiers of Computer Science》 SCIE EI CSCD 2023年第3期103-112,共10页
This paper aims to study the deep clustering problem with heterogeneous features and unknown cluster number.To address this issue,a novel deep Bayesian clustering framework is proposed.In particular,a heterogeneous fe... This paper aims to study the deep clustering problem with heterogeneous features and unknown cluster number.To address this issue,a novel deep Bayesian clustering framework is proposed.In particular,a heterogeneous feature metric is first constructed to measure the similarity between different types of features.Then,a feature metric-restricted hierarchical sample generation process is established,in which sample with heterogeneous features is clustered by generating it from a similarity constraint hidden space.When estimating the model parameters and posterior probability,the corresponding variational inference algorithm is derived and implemented.To verify our model capability,we demonstrate our model on the synthetic dataset and show the superiority of the proposed method on some real datasets.Our source code is released on the website:Github.com/yexlwh/Heterogeneousclustering. 展开更多
关键词 dirichlet process heterogeneous clustering generative adversarial network laplacian approximation variational inference
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Cluster Head Selection and Multipath Routing Based Energy Efficient Wireless Sensor Network
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作者 T.Shanmugapriya Dr.K.Kousalya 《Intelligent Automation & Soft Computing》 SCIE 2023年第4期879-894,共16页
The Wireless Sensor Network(WSN)is a network of Sensor Nodes(SN)which adopt radio signals for communication amongst themselves.There is an increase in the prominence of WSN adaptability to emerging applications like t... The Wireless Sensor Network(WSN)is a network of Sensor Nodes(SN)which adopt radio signals for communication amongst themselves.There is an increase in the prominence of WSN adaptability to emerging applications like the Internet of Things(IoT)and Cyber-Physical Systems(CPS).Data secur-ity,detection of faults,management of energy,collection and distribution of data,network protocol,network coverage,mobility of nodes,and network heterogene-ity are some of the issues confronted by WSNs.There is not much published information on issues related to node mobility and management of energy at the time of aggregation of data.Towards the goal of boosting the mobility-based WSNs’network performance and energy,data aggregation protocols such as the presently-used Mobility Low-Energy Adaptive Clustering Hierarchy(LEACH-M)and Energy Efficient Heterogeneous Clustered(EEHC)scheme have been exam-ined in this work.A novel Artificial Bee Colony(ABC)algorithm is proposed in this work for effective election of CHs and multipath routing in WSNs so as to enable effective data transfer to the Base Station(BS)with least energy utilization.There is avoidance of the local optima problem at the time of solution space search in this proposed technique.Experimentations have been conducted on a large WSN network that has issues with mobility of nodes. 展开更多
关键词 Wireless sensor network ROUTING clustering MOBILITY low-energy adaptive clustering hierarchy energy efficient heterogeneous clustered artificial bee colony
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Energy-Efficient Routing Algorithm Based on Small-World Characteristics
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作者 Qian Sun Gongxue Cheng +6 位作者 Xiaoyi Wang Jiping Xu Li Wang Huiyan Zhang Jiabin Yu Ning Cao Ruichao Wang 《Computers, Materials & Continua》 SCIE EI 2021年第11期2749-2759,共11页
Water quality sensor networks are widely used in water resource monitoring.However,due to the fact that the energy of these networks cannot be supplemented in time,it is necessary to study effective routing protocols ... Water quality sensor networks are widely used in water resource monitoring.However,due to the fact that the energy of these networks cannot be supplemented in time,it is necessary to study effective routing protocols to extend their lifecycle.To address the problem of limited resources,a routing optimization algorithm based on a small-world network model is proposed.In this paper,a small-world network model is introduced for water quality sensor networks,in which the short average path and large clustering coefficient of the model are used to construct a super link.A short average path can reduce the network’s energy consumption,and a large coefficient can improve its fault-tolerance ability.However,the energy consumption of the relay nodes near the heterogeneous node is too great,and as such the energy threshold and non-uniform clustering are constructed to improve the lifecycle of the network.Simulation results show that,compared with the low-energy adaptive clustering hierarchy routing algorithm and the best sink location clustering heterogeneous network routing algorithm,the proposed improved routing model can effectively enhance the energy-utilization.The lifecycle of the network can be extended and the data transmission amount can be greatly increased. 展开更多
关键词 Water quality sensor networks small-world characteristics clustering routing protocol heterogeneous clustering
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Joint Design of Clustering and In-cluster Data Route for Heterogeneous Wireless Sensor Networks 被引量:1
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作者 Liang Xue Ying Liu +2 位作者 Zhi-Qun Gu Zhi-Hua Li Xin-Ping Guan 《International Journal of Automation and computing》 EI CSCD 2017年第6期637-649,共13页
A heterogeneous wireless sensor network comprises a number of inexpensive energy constrained wireless sensor nodes which collect data from the sensing environment and transmit them toward the improved cluster head in ... A heterogeneous wireless sensor network comprises a number of inexpensive energy constrained wireless sensor nodes which collect data from the sensing environment and transmit them toward the improved cluster head in a coordinated way. Employing clustering techniques in such networks can achieve balanced energy consumption of member nodes and prolong the network lifetimes.In classical clustering techniques, clustering and in-cluster data routes are usually separated into independent operations. Although separate considerations of these two issues simplify the system design, it is often the non-optimal lifetime expectancy for wireless sensor networks. This paper proposes an integral framework that integrates these two correlated items in an interactive entirety. For that,we develop the clustering problems using nonlinear programming. Evolution process of clustering is provided in simulations. Results show that our joint-design proposal reaches the near optimal match between member nodes and cluster heads. 展开更多
关键词 heterogeneous wireless sensor networks clustering technique in-cluster data routes integral framework network lifetimes
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Self-assembled multifunctional nanotheranostics against circulating tumor clusters in metastatic breast cancer
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作者 Ramya Dhandapani Swaminathan Sethuraman +1 位作者 Uma Maheswari Krishnan Anuradha Subramanian 《Acta Pharmaceutica Sinica B》 SCIE CAS CSCD 2023年第4期1711-1725,共15页
Circulating tumor clusters(CTC)disseminating from the primary tumor are responsible for secondary tumor formation where the conventional treatments such as chemotherapy and radiotherapy does not prevent the metastasis... Circulating tumor clusters(CTC)disseminating from the primary tumor are responsible for secondary tumor formation where the conventional treatments such as chemotherapy and radiotherapy does not prevent the metastasis at locally advanced stage of breast cancer.In this study,a smart nanotheranostic system has been developed to track and eliminate the CTCs before it can colonize at a new site,which would reduce metastatic progression and increase the five-year survival rate of the breast cancer patients.Targeted multiresponsive(magnetic hyperthermia and pH)nanomicelles incorporated with NIR fluorescent superparamagnetic iron oxide nanoparticles were developed based on self-assembly for dual modal imaging and dual toxicity for spontaneous killing of CTCs in blood stream.A heterogenous tumor clusters model was developed to mimic the CTCs isolated from breast cancer patients.The nanotheranostic system was further evaluated for the targeting property,drug release kinetics,hyperthermia and cytotoxicity against developed CTC model in vitro.In vivo model in BALB/c mice equivalent to stageⅢandⅣhuman metastatic breast cancer was developed to evaluate the biodistribution and therapeutic efficacy of micellar nanotheranostic system.Reduced CTCs in blood stream and low distant organ metastasis after treatment with the nanotheranostic system demonstrates its potential to capture and kill the CTCs that minimize the secondary tumor formation at distant sites. 展开更多
关键词 Self-assembly Hybrid nanotheranostic system Circulating tumor clusters Advanced breast cancer Cancer stem cells Heterogenous clusters SPIONs NIR Metastasis CD44
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An Efficient Parallel Solution Framework for the Linear Solution of Large Systems on PC Clusters
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作者 Ozgur Kurc Semih Ozmen 《Tsinghua Science and Technology》 SCIE EI CAS 2008年第S1期65-70,共6页
In this paper, a parallel solution framework for the linear static analysis of large structures on PC clusters is presented. The framework consists of two main steps: data preparation and parallel solution. The parall... In this paper, a parallel solution framework for the linear static analysis of large structures on PC clusters is presented. The framework consists of two main steps: data preparation and parallel solution. The parallel solution is performed by a substructure based method with direct solvers. The aim of the data preparation step is to create the best possible substructures so that the parallel solution time is minimized. An actual structural model was solved utilizing both homogeneous and heterogeneous PC clusters to illustrate the performance and applicability of the presented framework. 展开更多
关键词 SUBSTRUCTURE parallel solution heterogeneous clusters homogeneous clusters workload bal-ancing partitioning repartitioning
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Meta-Path-Based Search and Mining in Heterogeneous Information Networks 被引量:13
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作者 Yizhou Sun Jiawei Han 《Tsinghua Science and Technology》 SCIE EI CAS 2013年第4期329-338,共10页
Information networks that can be extracted from many domains are widely studied recently. Different functions for mining these networks are proposed and developed, such as ranking, community detection, and link predic... Information networks that can be extracted from many domains are widely studied recently. Different functions for mining these networks are proposed and developed, such as ranking, community detection, and link prediction. Most existing network studies are on homogeneous networks, where nodes and links are assumed from one single type. In reality, however, heterogeneous information networks can better model the real-world systems, which are typically semi-structured and typed, following a network schema. In order to mine these heterogeneous information networks directly, we propose to explore the meta structure of the information network, i.e., the network schema. The concepts of meta-paths are proposed to systematically capture numerous semantic relationships across multiple types of objects, which are defined as a path over the graph of network schema. Meta-paths can provide guidance for search and mining of the network and help analyze and understand the semantic meaning of the objects and relations in the network. Under this framework, similarity search and other mining tasks such as relationship prediction and clustering can be addressed by systematic exploration of the network meta structure. Moreover, with user's guidance or feedback, we can select the best meta-path or their weighted combination for a specific mining task. 展开更多
关键词 heterogeneous information network meta-path similarity search relationship prediction user-guided clustering
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A Fuzzy Neural Network Based Dynamic Data Allocation Model on Heterogeneous Multi-GPUs for Large-scale Computations
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作者 Chao-Long Zhang Yuan-Ping Xu +3 位作者 Zhi-Jie Xu Jia He Jing Wang Jian-Hua Adu 《International Journal of Automation and computing》 EI CSCD 2018年第2期181-193,共13页
The parallel computation capabilities of modern graphics processing units (GPUs) have attracted increasing attention from researchers and engineers who have been conducting high computational throughput studies. How... The parallel computation capabilities of modern graphics processing units (GPUs) have attracted increasing attention from researchers and engineers who have been conducting high computational throughput studies. However, current single GPU based engineering solutions are often struggling to fulfill their real-time requirements. Thus, the multi-GPU-based approach has become a popular and cost-effective choice for tackling the demands. In those cases, the computational load balancing over multiple GPU "nodes" is often the key and bottleneck that affect the quality and performance of the real=time system. The existing load balancing approaches are mainly based on the assumption that all GPU nodes in the same computer framework are of equal computational performance, which is often not the case due to cluster design and other legacy issues. This paper presents a novel dynamic load balancing (DLB) model for rapid data division and allocation on heterogeneous GPU nodes based on an innovative fuzzy neural network (FNN). In this research, a 5-state parameter feedback mechanism defining the overall cluster and node performance is proposed. The corresponding FNN-based DLB model will be capable of monitoring and predicting individual node performance under different workload scenarios. A real=time adaptive scheduler has been devised to reorganize the data inputs to each node when necessary to maintain their runtime computational performance. The devised model has been implemented on two dimensional (2D) discrete wavelet transform (DWT) applications for evaluation. Experiment results show that this DLB model enables a high computational throughput while ensuring real=time and precision requirements from complex computational tasks. 展开更多
关键词 heterogeneous GPU cluster dynamic load balancing fuzzy neural network adaptive scheduler discrete wavelet trans-form.
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