keyword
https://read.qxmd.com/read/38626418/pure-zro-2-ferroelectric-thin-film-for-nonvolatile-memory-and-neural-network-computing
#21
JOURNAL ARTICLE
Zijian Wang, Zeyu Guan, He Wang, Xiang Zhou, Jiachen Li, Shengchun Shen, Yuewei Yin, Xiaoguang Li
The recent discovery of ferroelectricity in pure ZrO2 has drawn much attention, but the information storage and processing performances of ferroelectric ZrO2 -based nonvolatile devices remain open for further exploration. Here, a ZrO2 (∼8 nm)-based ferroelectric capacitor using RuO2 oxide electrodes is fabricated, and the ferroelectric orthorhombic phase evolution under electric field cycling is studied. A ferroelectric remnant polarization (2 P r ) of >30 μC/cm2 , leakage current density of ∼2...
April 16, 2024: ACS Applied Materials & Interfaces
https://read.qxmd.com/read/38625859/the-limitations-of-automatically-generated-curricula-for-continual-learning
#22
JOURNAL ARTICLE
Anna Kravchenko, Rhodri Cusack
In many applications, artificial neural networks are best trained for a task by following a curriculum, in which simpler concepts are learned before more complex ones. This curriculum can be hand-crafted by the engineer or optimised like other hyperparameters, by evaluating many curricula. However, this is computationally intensive and the hyperparameters are unlikely to generalise to new datasets. An attractive alternative, demonstrated in influential prior works, is that the network could choose its own curriculum by monitoring its learning...
2024: PloS One
https://read.qxmd.com/read/38625778/des-inspired-accelerated-unfolded-linearized-admm-networks-for-inverse-problems
#23
JOURNAL ARTICLE
Weixin An, Yuanyuan Liu, Fanhua Shang, Hongying Liu, Licheng Jiao
Many research works have shown that the traditional alternating direction multiplier methods (ADMMs) can be better understood by continuous-time differential equations (DEs). On the other hand, many unfolded algorithms directly inherit the traditional iterations to build deep networks. Although they achieve superior practical performance and a faster convergence rate than traditional counterparts, there is a lack of clear insight into unfolded network structures. Thus, we attempt to explore the unfolded linearized ADMM (LADMM) from the perspective of DEs, and design more efficient unfolded networks...
April 16, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38625777/new-rnn-algorithms-for-different-time-variant-matrix-inequalities-solving-under-discrete-time-framework
#24
JOURNAL ARTICLE
Yang Shi, Chenling Ding, Shuai Li, Bin Li, Xiaobing Sun
A series of discrete time-variant matrix inequalities is generally regarded as one of the challenging problems in science and engineering fields. As a discrete time-variant problem, the existing solving schemes generally need the theoretical support under the continuous-time framework, and there is no independent solving scheme under the discrete-time framework. The theoretical deficiency of solving scheme greatly limits the theoretical research and practical application of discrete time-variant matrix inequalities...
April 16, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38625776/adaptive-individual-q-learning-a-multiagent-reinforcement-learning-method-for-coordination-optimization
#25
JOURNAL ARTICLE
Zhen Zhang, Dongqing Wang
Multiagent reinforcement learning (MARL) has been extensively applied to coordination optimization for its task distribution and scalability. The goal of the MARL algorithms for coordination optimization is to learn the optimal joint strategy that maximizes the expected cumulative reward of all agents. Some cooperative MARL algorithms exhibit exciting characteristics in empirical studies. However, the majority of the convergence results are confined to repeated games. Moreover, few MARL algorithms consider adaptation to the switched environments such as the alternation between peak hours and off-peak hours of urban traffic flow or an obstacle suddenly appearing on the planned route for the automated guided vehicle...
April 16, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38625095/fast-detection-and-classification-of-microplastics-below-10-%C3%AE-m-using-cnn-with-raman-spectroscopy
#26
JOURNAL ARTICLE
Jeonghyun Lim, Gogyun Shin, Dongha Shin
In light of the growing awareness regarding the ubiquitous presence of microplastics (MPs) in our environment, recent efforts have been made to integrate Artificial Intelligence (AI) technology into MP detection. Among spectroscopic techniques, Raman spectroscopy is preferred for the detection of MP particles measuring less than 10 μm, as it overcomes the diffraction limitations encountered in Fourier transform infrared (FTIR). However, Raman spectroscopy's inherent limitation is its low scattering cross section, which often results in prolonged data collection times during practical sample measurements...
April 16, 2024: Analytical Chemistry
https://read.qxmd.com/read/38623916/biomolecular-adsorption-on-nanomaterials-combining-molecular-simulations-with-machine-learning
#27
JOURNAL ARTICLE
Marzieh Saeedimasine, Roja Rahmani, Alexander P Lyubartsev
Adsorption free energies of 32 small biomolecules (amino acids side chains, fragments of lipids, and sugar molecules) on 33 different nanomaterials, computed by the molecular dynamics - metadynamics methodology, have been analyzed using statistical machine learning approaches. Multiple unsupervised learning algorithms (principal component analysis, agglomerative clustering, and K-means) as well as supervised linear and nonlinear regression algorithms (linear regression, AdaBoost ensemble learning, artificial neural network) have been applied...
April 16, 2024: Journal of Chemical Information and Modeling
https://read.qxmd.com/read/38623651/a-stage-wise-residual-attention-generation-adversarial-network-for-mandibular-defect-repairing-and-reconstruction
#28
JOURNAL ARTICLE
Chenglan Zhong, Yutao Xiong, Wei Tang, Jixiang Guo
Surgical reconstruction of mandibular defects is a clinical routine manner for the rehabilitation of patients with deformities. The mandible plays a crucial role in maintaining the facial contour and ensuring the speech and mastication functions. The repairing and reconstruction of mandible defects is a significant yet challenging task in oral-maxillofacial surgery. Currently, the mainly available methods are traditional digitalized design methods that suffer from substantial artificial operations, limited applicability and high reconstruction error rates...
April 13, 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38622385/pure-vision-transformer-ct-vit-with-noise2neighbors-interpolation-for-low-dose-ct-image-denoising
#29
JOURNAL ARTICLE
Luella Marcos, Paul Babyn, Javad Alirezaie
Convolutional neural networks (CNN) have been used for a wide variety of deep learning applications, especially in computer vision. For medical image processing, researchers have identified certain challenges associated with CNNs. These challenges encompass the generation of less informative features, limitations in capturing both high and low-frequency information within feature maps, and the computational cost incurred when enhancing receptive fields by deepening the network. Transformers have emerged as an approach aiming to address and overcome these specific limitations of CNNs in the context of medical image analysis...
April 15, 2024: J Imaging Inform Med
https://read.qxmd.com/read/38622153/the-application-of-improved-densenet-algorithm-in-accurate-image-recognition
#30
JOURNAL ARTICLE
Yuntao Hou, Zequan Wu, Xiaohua Cai, Tianyu Zhu
Image recognition technology belongs to an important research field of artificial intelligence. In order to enhance the application value of image recognition technology in the field of computer vision and improve the technical dilemma of image recognition, the research improves the feature reuse method of dense convolutional network. Based on gradient quantization, traditional parallel algorithms have been improved. This improvement allows for independent parameter updates layer by layer, reducing communication time and data volume...
April 15, 2024: Scientific Reports
https://read.qxmd.com/read/38621765/ai-powered-covid-19-forecasting-a-comprehensive-comparison-of-advanced-deep-learning-methods
#31
JOURNAL ARTICLE
Muhammad Usman Tariq, Shuhaida Binti Ismail
OBJECTIVES: The coronavirus disease 2019 (COVID-19) pandemic continues to pose significant challenges to the public health sector, including that of the United Arab Emirates (UAE). The objective of this study was to assess the efficiency and accuracy of various deep-learning models in forecasting COVID-19 cases within the UAE, thereby aiding the nation's public health authorities in informed decision-making. METHODS: This study utilized a comprehensive dataset encompassing confirmed COVID-19 cases, demographic statistics, and socioeconomic indicators...
March 28, 2024: Osong Public Health and Research Perspectives
https://read.qxmd.com/read/38620194/covid-19-symptom-identification-using-deep-learning-and-hardware-emulated-systems
#32
JOURNAL ARTICLE
Rashini Liyanarachchi, Janaka Wijekoon, Manujaya Premathilaka, Samitha Vidhanaarachchi
The COVID-19 pandemic disrupted regular global activities in every possible way. This pandemic, caused by the transmission of the infectious Coronavirus, is characterized by main symptoms such as fever, fatigue, cough, and loss of smell. A current key focus of the scientific community is to develop automated methods that can effectively identify COVID-19 patients and are also adaptable for foreseen future virus outbreaks. To classify COVID-19 suspects, it is required to use contactless automatic measurements of more than one symptom...
June 28, 2023: Engineering Applications of Artificial Intelligence
https://read.qxmd.com/read/38620125/a-new-hybrid-prediction-model-of-covid-19-daily-new-case-data
#33
JOURNAL ARTICLE
Guohui Li, Jin Lu, Kang Chen, Hong Yang
With the emergence of new mutant corona virus disease 2019 (COVID-19) strains such as Delta and Omicron, the number of infected people in various countries has reached a new high. Accurate prediction of the number of infected people is of far-reaching sig Nificance to epidemiological prevention in all countries of the world. In order to improve the prediction accuracy of COVID-19 daily new case data, a new hybrid prediction model of COVID-19 is proposed, which consists of four modules: decomposition, complexity judgment, prediction and error correction...
June 26, 2023: Engineering Applications of Artificial Intelligence
https://read.qxmd.com/read/38619964/disentangling-modality-and-posture-factors-memory-attention-and-orthogonal-decomposition-for-visible-infrared-person-re-identification
#34
JOURNAL ARTICLE
Zefeng Lu, Ronghao Lin, Haifeng Hu
Striving to match the person identities between visible (VIS) and near-infrared (NIR) images, VIS-NIR reidentification (Re-ID) has attracted increasing attention due to its wide applications in low-light scenes. However, owing to the modality and pose discrepancies exhibited in heterogeneous images, the extracted representations inevitably comprise various modality and posture factors, impacting the matching of cross-modality person identity. To solve the problem, we propose a disentangling modality and posture factors (DMPFs) model to disentangle modality and posture factors by fusing the information of features memory and pedestrian skeleton...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38619963/ngde-a-niching-based-gradient-directed-evolution-algorithm-for-nonconvex-optimization
#35
JOURNAL ARTICLE
Qi Yu, Xijun Liang, Mengzhen Li, Ling Jian
Nonconvex optimization issues are prevalent in machine learning and data science. While gradient-based optimization algorithms can rapidly converge and are dimension-independent, they may, unfortunately, fall into local optimal solutions or saddle points. In contrast, evolutionary algorithms (EAs) gradually adapt the population of solutions to explore global optimal solutions. However, this approach requires substantial computational resources to perform numerous fitness function evaluations, which poses challenges for high-dimensional optimization in particular...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38619962/multidimensional-refinement-graph-convolutional-network-with-robust-decouple-loss-for-fine-grained-skeleton-based-action-recognition
#36
JOURNAL ARTICLE
Sheng-Lan Liu, Yu-Ning Ding, Jin-Rong Zhang, Kai-Yuan Liu, Si-Fan Zhang, Fei-Long Wang, Gao Huang
Graph convolutional networks (GCNs) have been widely used in skeleton-based action recognition. However, existing approaches are limited in fine-grained action recognition due to the similarity of interclass data. Moreover, the noisy data from pose extraction increase the challenge of fine-grained recognition. In this work, we propose a flexible attention block called channel-variable spatial-temporal attention (CVSTA) to enhance the discriminative power of spatial-temporal joints and obtain a more compact intraclass feature distribution...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38619961/boosting-on-policy-actor-critic-with-shallow-updates-in-critic
#37
JOURNAL ARTICLE
Luntong Li, Yuanheng Zhu
Deep reinforcement learning (DRL) benefits from the representation power of deep neural networks (NNs), to approximate the value function and policy in the learning process. Batch reinforcement learning (BRL) benefits from stable training and data efficiency with fixed representation and enjoys solid theoretical analysis. This work proposes least-squares deep policy gradient (LSDPG), a hybrid approach that combines least-squares reinforcement learning (RL) with online DRL to achieve the best of both worlds...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38619960/on-practical-robust-reinforcement-learning-adjacent-uncertainty-set-and-double-agent-algorithm
#38
JOURNAL ARTICLE
Ukjo Hwang, Songnam Hong
Robust reinforcement learning (RRL) aims to seek a robust policy by optimizing the worst case performance over an uncertainty set. This set contains some perturbed Markov decision processes (MDPs) from a nominal MDP (N-MDP) that generate samples for training, which reflects some potential mismatches between the training simulator (i.e., N-MDP) and real-world settings (i.e., the testing environments). Unfortunately, existing RRL algorithms are only applied to the tabular setting and it is still an open problem to extend them into more general continuous state space...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38619959/efficient-and-stable-unsupervised-feature-selection-based-on-novel-structured-graph-and-data-discrepancy-learning
#39
JOURNAL ARTICLE
Pei Huang, Zhaoming Kong, Limin Wang, Xuming Han, Xiaowei Yang
Unsupervised feature selection is an important tool in data mining, machine learning, and pattern recognition. Although data labels are often missing, the number of data classes can be known and exploited in many scenarios. Therefore, a structured graph, whose number of connected components is identical to the number of data classes, has been proposed and is frequently applied in unsupervised feature selection. However, methods based on the structured graph learning face two problems. First, their structured graphs are not always guaranteed to maintain the same number of connected components as the data classes with existing optimization algorithms...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38619958/reduced-complexity-algorithms-for-tessarine-neural-networks
#40
JOURNAL ARTICLE
Aleksandr Cariow, Galina Cariowa
The brief presents the results of synthesizing efficient algorithms for implementing the basic data-processing macro operations used in tessarine-valued neural networks. These macro operations primarily include the macro operation of multiplication of two tessarines: the macro operation of calculating the inner product of two tessarine-valued vectors and the macro operation of multiple multiplications of one tessarine by the set of different tessarines. When synthesizing the discussed algorithms, we use the fact that tessarine multiplications can be interpreted as matrix-vector products...
April 15, 2024: IEEE Transactions on Neural Networks and Learning Systems
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