Showing 2,741 - 2,760 results of 2,868 for search '"generative model"', query time: 0.32s Refine Results
  1. 2741

    Mortality prediction among ICU inpatients based on MIMIC-III database results from the conditional medical generative adversarial network by Wei Yang, Hong Zou, Meng Wang, Qin Zhang, Shadan Li, Hongyin Liang

    Published 2023-02-01
    “…Generative adversarial networks (GANs) are excellent generative models and have shown great potential for data simulation. …”
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  2. 2742

    Evaluation of Vineyard Cropping Systems Using On-Board RGB-Depth Perception by Hugo Moreno, Victor Rueda-Ayala, Angela Ribeiro, Jose Bengochea-Guevara, Juan Lopez, Gerassimos Peteinatos, Constantino Valero, Dionisio Andújar

    Published 2020-12-01
    “…A Kinect v2 system on-board to an on-ground electric vehicle was capable of producing precise 3D point clouds of vine rows under six different management cropping systems. The generated models demonstrated strong consistency between 3D images and vine structures from the actual physical parameters when average values were calculated. …”
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  3. 2743

    A State-of-the-Art Survey on Deep Learning Theory and Architectures by Md Zahangir Alom, Tarek M. Taha, Chris Yakopcic, Stefan Westberg, Paheding Sidike, Mst Shamima Nasrin, Mahmudul Hasan, Brian C. Van Essen, Abdul A. S. Awwal, Vijayan K. Asari

    Published 2019-03-01
    “…However, those papers have not discussed individual advanced techniques for training large-scale deep learning models and the recently developed method of generative models.…”
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  4. 2744

    A preliminary study of the geothermal geological characteristics and exploration potential of the Sichuan Basin by Dong SUN, Jinxi LI, Nan CAO, Zhiwu LI, Zhipeng ZHANG, Xiaoguo XIE, Mengyu YUAN, Hongyan CAI

    Published 2023-05-01
    “…Geothermal conditions and heat generation models are different in different tectonic zones in the basin, which seriously restrict the geothermal exploration, development and utilization of geothermal resources. …”
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  5. 2745

    Effect of Species Composition on Growth and Yield in Mixed Beech–Coniferous Stands by Avram Cicșa, Gheorghe-Marian Tudoran, Maria Cicșa (Boroeanu), Alexandru-Claudiu Dobre, Gheorghe Spârchez

    Published 2022-10-01
    “…Under the same site conditions, we generated models to determine, for each species (spruce, fir, and beech), the main parameters of the site index, including mean height, dominant height, standing volume yield, and mean annual volume increment for different compositional species proportions (p<sub>sp</sub>) and categories of proportions (i.e., low p<sub>sp</sub>, between 10 and 50%, and high p<sub>sp</sub>, ranging between 60 and 90%). …”
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  6. 2746

    Elliptical vibration chiseling: a novel process for texturing ultra-high-aspect-ratio microstructures on the metallic surface by Zhiwei Li, Jianfu Zhang, Zhongpeng Zheng, Pingfa Feng, Dingwen Yu, Jianjian Wang

    Published 2024-01-01
    “…The experimental results also verify the accuracy of the developed surface generation model of microstructures. Finally,the effects of elliptical trajectory, depth of cut, tool shape, and tool edge radius on the surface generation of micro ribs have been discussed.…”
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  7. 2747

    Assessing the impact of drum drying on the nutritional properties of pineapple pomace-fortified crispy mushroom sheets by Phunsiri Suthiluk, Phunsiri Suthiluk, Matchima Naradisorn, Matchima Naradisorn, Sutthiwal Setha, Sutthiwal Setha

    Published 2023-08-01
    “…Moreover, the experimental values of the dependent variables closely matched the predicted values, indicating the reliability of the generated models. It was evident that both steaming temperature and rotation speed significantly influenced DPPH, FRAP, and SDF contents and the optimized conditions could be employed for the production of functional crispy mushroom sheets. …”
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  8. 2748

    Performance metrics for models designed to predict treatment effect by C. C. H. M. Maas, D. M. Kent, M. C. Hughes, R. Dekker, H. F. Lingsma, D. van Klaveren

    Published 2023-07-01
    “…In a simulation study, the metric values of deliberately “perturbed models” were compared to those of the data-generating model, i.e., “optimal model”. To illustrate these performance metrics, different modeling approaches for predicting treatment effect are applied to the data of the Diabetes Prevention Program: 1) a risk modelling approach with restricted cubic splines; 2) an effect modelling approach including penalized treatment interactions; and 3) the causal forest. …”
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  9. 2749

    On the Difference between the Information Bottleneck and the Deep Information Bottleneck by Aleksander Wieczorek, Volker Roth

    Published 2020-01-01
    “…Combining the information bottleneck model with deep learning by replacing mutual information terms with deep neural nets has proven successful in areas ranging from generative modelling to interpreting deep neural networks. …”
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  10. 2750

    Aspectos ecológicos da aroeira (Myracrodruon urundeuva Allemão- Anacardiaceae): fenologia e germinação de sementes Ecological aspects of aroeira (Myracrodruon urundeuva Allemão - A... by Yule Roberta Ferreira Nunes, Marcílio Fagundes, Hisaias de Souza Almeida, Maria das Dores Magalhães Veloso

    Published 2008-04-01
    “…Therefore, basic studies on the ecology of threatened forest species are essential to generate models and mechanisms for the management and restoration of their natural populations.…”
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  11. 2751

    Development and validation of prediction models for poor sleep quality among older adults in the post-COVID-19 pandemic era by Min Du, Manchang Li, Xuejun Yu, Shiping Wang, Yaping Wang, Wenxin Yan, Qiao Liu, Min Liu, Jue Liu

    Published 2023-12-01
    “…Five prediction models with 10-fold cross validation including the Least Absolute Shrinkage and Selection Operator (LASSO), Stochastic Volatility Model (SVM), Random Forest (RF), Artificial Neural Network (ANN), and XGBoost model based on the area under curve (AUC) were used to develop and validate predictors.Results The prevalence of poor sleep quality (PSQI >7) was 30.69% (3117/10,156). Among the generated models, the LASSO model outperformed SVM (AUC 0.579), RF (AUC 0.626), ANN (AUC 0.615) and XGBoost (AUC 0.606), with an AUC of 0.7. …”
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  12. 2752

    Learning From Few Cyber-Attacks: Addressing the Class Imbalance Problem in Machine Learning-Based Intrusion Detection in Software-Defined Networking by Seyed Mohammad Hadi Mirsadeghi, Hayretdin Bahsi, Risto Vaarandi, Wissem Inoubli

    Published 2023-01-01
    “…We propose custom deep learning architectures based on GANs and Siamese Neural Networks for generative modeling and similarity-based intrusion detection. …”
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  13. 2753

    Modeling homophily in dynamic networks with application to HIV molecular surveillance by Victor DeGruttola, Masato Nakazawa, Tuo Lin, Jinyuan Liu, Ravi Goyal, Susan Little, Xin Tu, Sanjay Mehta

    Published 2023-10-01
    “…Our simulation studies demonstrated the validity of our approach for modeling homophily, by showing that the estimates it produced matched the specified values of the statistical network generating model. Conclusions Our novel methods provide a simple and flexible statistical network-based approach for modeling the growth of viral (or other microbial) genetic clusters from linkage to new infections based on genetic distance.…”
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  14. 2754

    PENGEMBANGAN INFRASTRUKTUR JALAN SEBAGAI IMPLEMENTASI RENCANA TATA RUANG WILAYAH KABUPATEN KETAPANG by Ferry Juniardi, Heri Azwansyah

    Published 2014-01-01
    “…This study requires data of movement of vehicles and the road network, obtained from the relevant agencies/departments and field survey. Vehicles trip generation models influenced by number of health facilities (X3), while pull models of vehicle movement influenced by number of residents (X1) and number of health facilities ( X3). …”
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  15. 2755

    Analysis of the Technical Accuracy of a Patient-Specific Stereotaxy Platform for Brain Biopsy by Marcel Müller, Dirk Winkler, Robert Möbius, Michael Werner, Welf-Guntram Drossel, Erdem Güresir, Ronny Grunert

    Published 2024-02-01
    “…The frames underwent an autoclave sterilization process prior to rescanning. The scan-generated models were compared with the planned CAD models and the deviation of the planned target points in the XY-plane, Z-direction and in the resulting direction were determined. …”
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  16. 2756

    Granite magmatism and mantle filiation by M. Pichavant, A. Villaros, J. A.-S. Michaud, B. Scaillet

    Published 2024-02-01
    “…<p>Current granite magma generation models essentially reduce to two groups: (1) intra-crustal melting and (2) basaltic origin. …”
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  17. 2757

    Use of routine HIV testing data for early detection of emerging HIV epidemics in high-risk subpopulations: A concept demonstration study by Houssein H. Ayoub, Susanne F. Awad, Laith J. Abu-Raddad

    Published 2018-01-01
    “…Using hypothesis-generation modeling, we aimed to investigate and demonstrate the concept of using routine HIV testing data to identify and characterize hidden epidemics in high-risk subpopulations. …”
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  18. 2758

    Implementing OpenMP 4.0 for the NVIDIA PTX architecture in GCC compiler by A. V. Monakov, V. A. Ivanishin

    Published 2018-10-01
    “…To implement execution of one logical OpenMP thread by a group of PTX threads we developed a new code generation model that allows to keep all PTX threads active, have their local state (register contents) mirrored, and have side effects from atomic instructions and system calls such as malloc happen only once per warp. …”
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  19. 2759

    Spatiotemporal distribution prediction of gas concentration based on GCN-GRU by QIN Jiaxin, GE Shuwei, LONG Fengqi, ZHANG Yongqian, LI Xue

    Published 2023-05-01
    “…Through sequence-to-sequence based models and autoencoders, GRU generates model prediction results. The experimental results show the following points. ① The GCN-GRU model can accurately predict the overall trend of gas concentration changes. …”
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  20. 2760

    Support Vector Machine Berbasis Feature Selection Untuk Sentiment Analysis Kepuasan Pelanggan Terhadap Pelayanan Warung dan Restoran Kuliner Kota Tegal by Oman Somantri, Dyah Apriliani

    Published 2018-10-01
    “…The purpose of this research is to optimize the generated model by applying feature selection using Informatioan Gain (IG) and Chi Square algorithm on the best model produced by SVM on the classification of customer satisfaction level based on culinary restaurants at Tegal City so that there is an increasing accuracy from the model. …”
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