Results for 'Backpropagation'

37 found
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  1.  19
    Backpropagation of Spirit: Hegelian Recollection and Human-A.I. Abductive Communities.Rocco Gangle - 2022 - Philosophies 7 (2):36.
    This article examines types of abductive inference in Hegelian philosophy and machine learning from a formal comparative perspective and argues that Robert Brandom’s recent reconstruction of the logic of recollection in Hegel’s Phenomenology of Spirit may be fruitful for anticipating modes of collaborative abductive inference in human/A.I. interactions. Firstly, the argument consists of showing how Brandom’s reading of Hegelian recollection may be understood as a specific type of abductive inference, one in which the past interpretive failures and errors of a (...)
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  2.  22
    Parallel Implementation of Backpropagation Algorithm.R. Szabo & M. Steinmetz - 1996 - Journal of Intelligent Systems 6 (3-4):261-278.
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  3.  11
    Recruitment vs. Backpropagation Learning: An empirical study on re-learning in connectionist networks.Joachim Diederich - 1990 - In G. Dorffner (ed.), Konnektionismus in Artificial Intelligence Und Kognitionsforschung. Berlin: Springer-Verlag. pp. 186--190.
  4.  13
    A Comparison of Backpropagation and ART Via Pattern Recognition.I. Russell, C. Colebourn & P. Vitiello - 1997 - Journal of Intelligent Systems 7 (3-4):285-306.
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  5.  6
    Optimization of Backpropagation Neural Network under the Adaptive Genetic Algorithm.Junxi Zhang & Shiru Qu - 2021 - Complexity 2021:1-9.
    This study is to explore the optimization of the adaptive genetic algorithm in the backpropagation neural network, so as to expand the application of the BPNN model in nonlinear issues. Traffic flow prediction is undertaken as a research case to analyse the performance of the optimized BPNN. Firstly, the advantages and disadvantages of the BPNN and genetic algorithm are analyzed based on their working principles, and the AGA is improved and optimized. Secondly, the optimized AGA is applied to optimize (...)
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  6.  23
    Unsupervised Discovery of Nonlinear Structure Using Contrastive Backpropagation.Geoffrey Hinton, Simon Osindero, Max Welling & Yee-Whye Teh - 2006 - Cognitive Science 30 (4):725-731.
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  7.  9
    An Improved Prediction Model of IGBT Junction Temperature Based on Backpropagation Neural Network and Kalman Filter.Yu Dou - 2021 - Complexity 2021:1-10.
    With the rapid development of emerging technologies such as electric vehicles and high-speed railways, the insulated gate bipolar transistor is becoming increasingly important as the core of the power electronic devices. Therefore, it is imperative to maintain the stability and reliability of IGBT under different circumstances. By predicting the junction temperature of IGBT, the operating condition and aging degree can be roughly evaluated. However, the current predicting approaches such as optical, physical, and electrical methods have various shortcomings. Hence, the (...) neural network can be applied to avoid the difficulties encountered by conventional approaches. In this article, an advanced prediction model is proposed to obtain accurate IGBT junction temperature. This method can be divided into three phases, BP neural network estimation, interpolation, and Kalman filter prediction. First, the validities of the BP neural network and Kalman filter are verified, respectively. Then, the performances of them are compared, and the superiority of the Kalman filter is proved. In the future, the application of neural networks or deep learning in power electronics will create more possibilities. (shrink)
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  8.  6
    Learning in the machine: Random backpropagation and the deep learning channel.Pierre Baldi, Peter Sadowski & Zhiqin Lu - 2018 - Artificial Intelligence 260 (C):1-35.
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  9.  3
    Entrepreneurship Education and Health-Stress Analysis of College Teachers and Students Using Backpropagation Neural Network Model.Leiming Fu & Qi Cheng - 2022 - Frontiers in Psychology 13.
    The purpose is to solve the problem of college students’ employment difficulties. It is the development trend of the times to master the basic psychological pressure state of students and analyze students’ problems by using modern technology and science. First, based on Marxist theory, the theory of entrepreneurship education and the characteristics of teachers and students in colleges are expounded, and the principle and algorithms of Backpropagation Neural Network are introduced. Second, from the perspective of entrepreneurship education and mental (...)
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  10.  16
    An Improved Image Processing Based on Deep Learning Backpropagation Technique.Yang Gao & Yue Tian - 2022 - Complexity 2022:1-10.
    In terms of image processing, encryption plays the main role in the field of image transmission. Using one algorithm of deep learning, such as neural network backpropagation, increases the performance of encryption by learning the parameters and weights derived from the image itself. The use of more than one layer in the neural network improves the performance of the algorithm. Also, in the process of image encryption, randomness is an important component, especially when used by smart learning methods. Deep (...)
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  11.  6
    Tracing Mechanism of Sports Competition Pressure Based on Backpropagation Neural Network.Huayu Zhao & Shaonan Liu - 2021 - Complexity 2021:1-12.
    Through the overall situation of athletes’ competition pressure, the pressure level of participating athletes can be understood and revealed. Analyzing the sources of stress and influencing factors of athletes can find measures to relieve and reduce stress and provide theoretical reference for the regulation of athletes’ competition pressure. Based on genetic algorithm and neural network theory, this paper proposes a method of tracing the sports competition pressure based on genetic algorithm backpropagation neural network to solve the problem that traditional (...)
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  12.  6
    Porosity Characterization of Thermal Barrier Coatings by Ultrasound with Genetic Algorithm Backpropagation Neural Network.Shuxiao Zhang, Gaolong Lv, Shifeng Guo, Yanhui Zhang & Wei Feng - 2021 - Complexity 2021:1-9.
    Porosity is considered as one of the most important indicators for the characterization of the comprehensive performance of thermal barrier coatings. In this study, the ultrasonic technique and the artificial neural network optimized with the genetic algorithm are combined to develop an intelligent method for automatic detection and accurate prediction of TBCs’s porosity. A series of physical models of plasma-sprayed ZrO2 coating are established with a thickness of 288 μm and porosity varying from 5.71% to 26.59%, and the ultrasonic reflection (...)
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  13.  61
    Where Do Features Come From?Geoffrey Hinton - 2014 - Cognitive Science 38 (6):1078-1101.
    It is possible to learn multiple layers of non-linear features by backpropagating error derivatives through a feedforward neural network. This is a very effective learning procedure when there is a huge amount of labeled training data, but for many learning tasks very few labeled examples are available. In an effort to overcome the need for labeled data, several different generative models were developed that learned interesting features by modeling the higher order statistical structure of a set of input vectors. One (...)
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  14. Content and cluster analysis: Assessing representational similarity in neural systems.Aarre Laakso & Garrison Cottrell - 2000 - Philosophical Psychology 13 (1):47-76.
    If connectionism is to be an adequate theory of mind, we must have a theory of representation for neural networks that allows for individual differences in weighting and architecture while preserving sameness, or at least similarity, of content. In this paper we propose a procedure for measuring sameness of content of neural representations. We argue that the correct way to compare neural representations is through analysis of the distances between neural activations, and we present a method for doing so. We (...)
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  15.  20
    Research on QR image code recognition system based on artificial intelligence algorithm.Pljonkin Anton Pavlovich, Pradeep Kumar Singh, Jianxing Zhu & Lina Huo - 2021 - Journal of Intelligent Systems 30 (1):855-867.
    The QR code recognition often faces the challenges of uneven background fluctuations, inadequate illuminations, and distortions due to the improper image acquisition method. This makes the identification of QR codes difficult, and therefore, to deal with this problem, artificial intelligence-based systems came into existence. To improve the recognition rate of QR image codes, this article adopts an improved adaptive median filter algorithm and a QR code distortion correction method based on backpropagation (BP) neural networks. This combination of artificial intelligence (...)
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  16.  65
    An Improved Artificial Neural Network Model for Effective Diabetes Prediction.Muhammad Mazhar Bukhari, Bader Fahad Alkhamees, Saddam Hussain, Abdu Gumaei, Adel Assiri & Syed Sajid Ullah - 2021 - Complexity 2021:1-10.
    Data analytics, machine intelligence, and other cognitive algorithms have been employed in predicting various types of diseases in health care. The revolution of artificial neural networks in the medical discipline emerged for data-driven applications, particularly in the healthcare domain. It ranges from diagnosis of various diseases, medical image processing, decision support system, and disease prediction. The intention of conducting the research is to ascertain the impact of parameters on diabetes data to predict whether a particular patient has a disease or (...)
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  17.  57
    Learned Categorical Perception in Neural Nets: Implications for Symbol Grounding.Stevan Harnad & Stephen J. Hanson - unknown
    After people learn to sort objects into categories they see them differently. Members of the same category look more alike and members of different categories look more different. This phenomenon of within-category compression and between-category separation in similarity space is called categorical perception (CP). It is exhibited by human subjects, animals and neural net models. In backpropagation nets trained first to auto-associate 12 stimuli varying along a onedimensional continuum and then to sort them into 3 categories, CP arises as (...)
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  18.  14
    On the Impact of Interpretability Methods in Active Image Augmentation Method.Flávio Arthur Oliveira Santos, Cleber Zanchettin, Leonardo Nogueira Matos & Paulo Novais - 2022 - Logic Journal of the IGPL 30 (4):611-621.
    Robustness is a significant constraint in machine learning models. The performance of the algorithms must not deteriorate when training and testing with slightly different data. Deep neural network models achieve awe-inspiring results in a wide range of applications of computer vision. Still, in the presence of noise or region occlusion, some models exhibit inaccurate performance even with data handled in training. Besides, some experiments suggest deep learning models sometimes use incorrect parts of the input information to perform inference. Active image (...)
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  19. Connectionism reconsidered: Minds, machines and models.Istvan S. N. Berkeley - 1998
    In this paper the issue of drawing inferences about biological cognitive systems on the basis of connectionist simulations is addressed. In particular, the justification of inferences based on connectionist models trained using the backpropagation learning algorithm is examined. First it is noted that a justification commonly found in the philosophical literature is inapplicable. Then some general issues are raised about the relationships between models and biological systems. A way of conceiving the role of hidden units in connectionist networks is (...)
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  20.  3
    English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints.Haifan Du & Haiwen Duan - 2021 - Complexity 2021:1-11.
    This paper combines domestic and international research results to analyze and study the difference between the attribute features of English phrase speech and noise to enhance the short-time energy, which is used to improve the threshold judgment sensitivity; noise addition to the discrepancy data set is used to enhance the recognition robustness. The backpropagation algorithm is improved to constrain the range of weight variation, avoid oscillation phenomenon, and shorten the training time. In the real English phrase sound recognition system, (...)
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  21.  3
    An Improved Particle Swarm Optimization-Powered Adaptive Classification and Migration Visualization for Music Style.Xiahan Liu - 2021 - Complexity 2021:1-10.
    Based on the adaptive particle swarm algorithm and error backpropagation neural network, this paper proposes methods for different styles of music classification and migration visualization. This method has the advantages of simple structure, mature algorithm, and accurate optimization. It can find better network weights and thresholds so that particles can jump out of the local optimal solutions previously searched and search in a larger space. The global search uses the gradient method to accelerate the optimization and control the real-time (...)
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  22.  8
    Use of BP Neural Networks to Determine China’s Regional CO2 Emission Quota.Yawei Qi, Wenxiang Peng, Ran Yan & Guangping Rao - 2021 - Complexity 2021:1-14.
    China declared a long-term commitment at the United Nations General Assembly in 2020 to reduce CO2 emissions. This announcement has been described by Reuters as “the most important climate change commitment in years.” The allocation of China’s provincial CO2 emission quotas is crucial for building a unified national carbon market, which is an important policy tool necessary to achieve carbon emissions reduction. In the present research, we used historical quota data of China’s carbon emission trading policy pilot areas from 2014 (...)
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  23.  10
    Benchmark Pashto Handwritten Character Dataset and Pashto Object Character Recognition (OCR) Using Deep Neural Network with Rule Activation Function.Imran Uddin, Dzati A. Ramli, Abdullah Khan, Javed Iqbal Bangash, Nosheen Fayyaz, Asfandyar Khan & Mahwish Kundi - 2021 - Complexity 2021:1-16.
    In the area of machine learning, different techniques are used to train machines and perform different tasks like computer vision, data analysis, natural language processing, and speech recognition. Computer vision is one of the main branches where machine learning and deep learning techniques are being applied. Optical character recognition is the ability of a machine to recognize the character of a language. Pashto is one of the most ancient and historical languages of the world, spoken in Afghanistan and Pakistan. OCR (...)
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  24.  14
    The Role of Negative Information in Distributional Semantic Learning.Brendan T. Johns, Douglas J. K. Mewhort & Michael N. Jones - 2019 - Cognitive Science 43 (5):e12730.
    Distributional models of semantics learn word meanings from contextual co‐occurrence patterns across a large sample of natural language. Early models, such as LSA and HAL (Landauer & Dumais, 1997; Lund & Burgess, 1996), counted co‐occurrence events; later models, such as BEAGLE (Jones & Mewhort, 2007), replaced counting co‐occurrences with vector accumulation. All of these models learned from positive information only: Words that occur together within a context become related to each other. A recent class of distributional models, referred to as (...)
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  25.  63
    On the spuriousness of the symbolic/subsymbolic distinction.Marin S. Marinov - 1993 - Minds and Machines 3 (3):253-70.
    The article criticises the attempt to establish connectionism as an alternative theory of human cognitive architecture through the introduction of thesymbolic/subsymbolic distinction (Smolensky, 1988). The reasons for the introduction of this distinction are discussed and found to be unconvincing. It is shown that thebrittleness problem has been solved for a large class ofsymbolic learning systems, e.g. the class oftop-down induction of decision-trees (TDIDT) learning systems. Also, the process of articulating expert knowledge in rules seems quite practical for many important domains, (...)
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  26.  10
    The Spiral Discovery Network as an Automated General-Purpose Optimization Tool.Adam B. Csapo - 2018 - Complexity 2018:1-8.
    The Spiral Discovery Method was originally proposed as a cognitive artifact for dealing with black-box models that are dependent on multiple inputs with nonlinear and/or multiplicative interaction effects. Besides directly helping to identify functional patterns in such systems, SDM also simplifies their control through its characteristic spiral structure. In this paper, a neural network-based formulation of SDM is proposed together with a set of automatic update rules that makes it suitable for both semiautomated and automated forms of optimization. The behavior (...)
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  27.  10
    Economic Structure Analysis Based on Neural Network and Bionic Algorithm.Yanjun Dai & Lin Su - 2021 - Complexity 2021:1-11.
    In this article, an in-depth study and analysis of economic structure are carried out using a neural network fusion release algorithm. The method system defines the weight space and structure space of neural networks from the perspective of optimization theory, proposes a bionic optimization algorithm under the weight space and structure space, and establishes a neuroevolutionary method with shallow neural network and deep neural network as the research objects. In the shallow neuroevolutionary, the improved genetic algorithm based on elite heuristic (...)
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  28.  8
    Model Predictive Control of Nonlinear System Based on GA-RBP Neural Network and Improved Gradient Descent Method.Youming Wang & Didi Qing - 2021 - Complexity 2021:1-14.
    A model predictive control method based on recursive backpropagation neural network and genetic algorithm is proposed for a class of nonlinear systems with time delays and uncertainties. In the offline modeling stage, a multistep-ahead predictor with GA-RBP neural network is designed, where GA-BP neural network is used as a one-step prediction model and GA is employed to train the initial weights and bias of the BP neural network. The incorporation of GA into RBP can reduce the possibility of the (...)
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  29.  9
    Application of Compound Control Method Based on WOA in Micropositioning Stage of SICM.Huiting Wen, Xiaolong Lu, Shiping Zhao, Xiaoyu Liu, Yang Yang & Song Leng - 2021 - Complexity 2021:1-10.
    Positioning accuracy of micropositioning stage in scanning ion conductance microscopy is the key to obtain high-precision scanning model. Most piezoelectric ceramic micromotion platforms are used for that, and hysteresis characteristics are the main reason for the nonlinear characteristics of piezoelectric ceramics and the influence on the control accuracy. In order to solve this problem, backpropagation algorithm based on whale optimization algorithm is used to model the hysteresis, which is directly used as a feedforward controller to compensate the hysteresis effect, (...)
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  30.  45
    Multiscale Modeling of Gene–Behavior Associations in an Artificial Neural Network Model of Cognitive Development.Michael S. C. Thomas, Neil A. Forrester & Angelica Ronald - 2016 - Cognitive Science 40 (1):51-99.
    In the multidisciplinary field of developmental cognitive neuroscience, statistical associations between levels of description play an increasingly important role. One example of such associations is the observation of correlations between relatively common gene variants and individual differences in behavior. It is perhaps surprising that such associations can be detected despite the remoteness of these levels of description, and the fact that behavior is the outcome of an extended developmental process involving interaction of the whole organism with a variable environment. Given (...)
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  31.  12
    A 4D Trajectory Prediction Model Based on the BP Neural Network.Lan Ma, Shan Tian & Zhi-Jun Wu - 2019 - Journal of Intelligent Systems 29 (1):1545-1557.
    To solve the problem that traditional trajectory prediction methods cannot meet the requirements of high-precision, multi-dimensional and real-time prediction, a 4D trajectory prediction model based on the backpropagation (BP) neural network was studied. First, the hierarchical clustering algorithm and the k-means clustering algorithm were adopted to analyze the total flight time. Then, cubic spline interpolation was used to interpolate the flight position to extract the main trajectory feature. The 4D trajectory prediction model was based on the BP neural network. (...)
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  32. Beyond simple rule extraction: The extraction of planning knowledge from reinforcement learners.Ron Sun - unknown
    Abstra,ct— This paper will discuss learning in hybrid models that goes beyond simple rule extraction from backpropagation networks. Although simple rule extraction has received a lot of research attention, to further develop hybrid learning models that include both symbolic and subsymbolic knowledge and that learn autonomously, it is necessary to study autonomous learning of both subsymbolic and symbolic knowledge in integrated architectures. This paper will describe knowledge extraction from neural reinforcement learning. It includes two approaches towards extracting plan knowledge: (...)
     
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  33.  5
    The Structure of Mental Elasticity Education for Children in Plight Using Deep Learning.Xuanlu Sun & Xiaoyang Yang - 2022 - Frontiers in Psychology 12.
    The purpose is to solve the problem that the current research on the impact of the microstructure of mental elasticity and its constituent factors on the development of the mental elasticity of children is not comprehensive, and the traditional artificial analysis method of mental problems has strong subjectivity and low accuracy. First, the structural equation model is used to study the microstructure of poor children's mental elasticity, and to explore the structural relationship and functional path between the mental elasticity of (...)
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  34.  7
    Exploration of Social Benefits for Tourism Performing Arts Industrialization in Culture–Tourism Integration Based on Deep Learning and Artificial Intelligence Technology.Ruizhi Zhang - 2021 - Frontiers in Psychology 12.
    As a product of the tourism performing arts industry in culture–tourism integration development, to develop a featured culture–tourism town is a new trend for tourism development in the new era. To analyze the social benefit of the culture–tourism industry, in this study, an artificial intelligence model for social benefit evaluation is constructed based on backpropagation neural network and fuzzy comprehensive analysis, with Yiyang Town taken as an example. The criterion layer in the model includes three indexes, and the index (...)
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  35.  14
    Interval Prediction Method for Solar Radiation Based on Kernel Density Estimation and Machine Learning.Meiyan Zhao, Yuhu Zhang, Tao Hu & Peng Wang - 2022 - Complexity 2022:1-13.
    Precise global solar radiation data are indispensable to the design, planning, operation, and management of solar radiation utilization equipment. Some examples prove that the uncertainty of the prediction of solar radiation provides more value than deterministic ones in the management of power systems. This study appraises the potential of random forest, V-support vector regression, and a resilient backpropagation artificial neural network for daily global solar radiation point prediction from average relative humidity, daily average temperature, and daily sunshine duration. To (...)
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  36.  10
    Selecting the Best Routing Traffic for Packets in LAN via Machine Learning to Achieve the Best Strategy.Bo Zhang & Rongji Liao - 2021 - Complexity 2021:1-10.
    The application of machine learning touches all activities of human behavior such as computer network and routing packets in LAN. In the field of our research here, emphasis was placed on extracting weights that would affect the speed of the network's response and finding the best path, such as the number of nodes in the path and the congestion on each path, in addition to the cache used for each node. Therefore, the use of these elements in building the neural (...)
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  37.  8
    Applying Deep Learning in the Training of Communication Design Talents Under University-Industrial Research Collaboration.Rui Zhou, Zhihua He, Xiaobiao Lu & Ying Gao - 2021 - Frontiers in Psychology 12.
    The purpose of the study was to solve the problem of the mismatching between the supply and demand of the talents that universities provide for society, whose major is communication design. The correlations between social post demand and university cultivation, as well as between social post demand and the demand indexes of enterprises for posts, are explored under the guidance of University-Industrial Research Collaboration. The backpropagation neural network is used, and the advantages of the Seasonal Autoregressive Integrated Moving Average (...)
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