Abstract:
Photonic implementations of neural networks, which use electronics to furnish gain and implement neural transfer functions and establish weighted connections between neut...Show MoreMetadata
Abstract:
Photonic implementations of neural networks, which use electronics to furnish gain and implement neural transfer functions and establish weighted connections between neutrons using incoherent light, are discussed. Fully or partially optical implementations incorporate coherent light and volume or planar holograms to establish interconnection weights, and spatial light modulators to implement neural transfer functions. The implementation of learning algorithms on optoelectronic neural networks is also discussed.<>
Published in: IEEE Expert ( Volume: 7, Issue: 5, October 1992)
DOI: 10.1109/64.163674
Citations are not available for this document.
Cites in Papers - |
Cites in Papers - IEEE (5)
Select All
1.
Kyungmo Koo, Minyoung Park, Byungun Yoon, "A Suspicious Financial Transaction Detection Model Using Autoencoder and Risk-Based Approach", IEEE Access, vol.12, pp.68926-68939, 2024.
2.
Ritu Sharma, Prashant Ranjan, "A Review: Machine Learning Based Hardware Trojan Detection", 2021 10th International Conference on Internet of Everything, Microwave Engineering, Communication and Networks (IEMECON), pp.1-4, 2021.
3.
Adria Nirere, Jun Sun, Xin Zhou, Kunshan Yao, Ningqiu Tang, Ahmad Hussain, "Identification of living and non-living watermelon seeds based on Hyperspectral Imaging Technology", 2021 33rd Chinese Control and Decision Conference (CCDC), pp.5948-5953, 2021.
4.
Frismanda, Agustinus Bimo Gumelar, Derry Pramono Adi, Eman Setiawan, Agung Widodo, MY Teguh Sulistyono, "Machine Learning Performance Comparison for Toxic Speech Classification : Online Payday Loan Scams in Indonesia", 2020 International Seminar on Application for Technology of Information and Communication (iSemantic), pp.603-608, 2020.
5.
Rahul Katarya, Polipireddy Srinivas, "Predicting Heart Disease at Early Stages using Machine Learning: A Survey", 2020 International Conference on Electronics and Sustainable Communication Systems (ICESC), pp.302-305, 2020.
Cites in Papers - Other Publishers (49)
1.
Widad Benmouloud, Imane Euldji, Cherif Si‐Moussa, Othmane Benkortbi, "Quantitative structure‐property relationship techniques for predicting carbon dioxide solubility in ionic liquids using machine learning methods", International Journal of Quantum Chemistry, vol.124, no.15, 2024.
2.
"Metaheuristic Methods for Classification", Machine Learning and Metaheuristic Computation, pp.311, 2024.
3.
Mohr Wenger, Amber Maimon, Or Yizhar, Adi Snir, Yonatan Sasson, Amir Amedi, "Hearing temperatures: employing machine learning for elucidating the cross-modal perception of thermal properties through audition", Frontiers in Psychology, vol.15, 2024.
4.
Bouchra Bargam, Abdelghani Boudhar, Christophe Kinnard, Hafsa Bouamri, Karima Nifa, Abdelghani Chehbouni, "Evaluation of the support vector regression (SVR) and the random forest (RF) models accuracy for streamflow prediction under a data-scarce basin in Morocco", Discover Applied Sciences, vol.6, no.6, 2024.
5.
Bouchra Bargam, Abdelghani Boudhar, Christophe Kinnard, Karima Nifa, Abdelghani Chehbouni, "Potential of Support Vector Machine Fed by ERA5 for Predicting Daily Discharge in the High Atlas of Morocco", Recent Advancements from Aquifers to Skies in Hydrogeology, Geoecology, and Atmospheric Sciences, pp.79, 2024.
6.
Patria Kusumadiya, Omo Rusdiana, Sri Mulatsih, "Pemodelan Ensemble Prediksi Distribusi Ekologis Padi (Oryza sativa) di Provinsi Kalimatan Utara", Jurnal Ilmu Lingkungan, vol.22, no.2, pp.313, 2024.
7.
Vahid Nikkhah, Ali Pirmoradi, Farshid Ashtiani, Brian Edwards, Firooz Aflatouni, Nader Engheta, "Inverse-designed low-index-contrast structures on a silicon photonics platform for vector–matrix multiplication", Nature Photonics, 2024.
8.
Kouao Laurent Kouadio, Jianxin Liu, Rong Liu, Yongfei Wang, Wenxiang Liu, "K-Means Featurizer: A booster for intricate datasets", Earth Science Informatics, 2024.
9.
Rajashri Bezbaruah, Mainak Ghosh, Shuby Kumari, Lawandashisha Nongrang, Sheikh Rezzak Ali, Monali Lahiri, Hasmi Waris, Bibhuti Bhushan Kakoti, "Role of AI and ML in Epidemics and Pandemics", Bioinformatics Tools for Pharmaceutical Drug Product Development, pp.345, 2023.
10.
Surfraz Mitegar, M. Samba Sivudu, Giridhar Akula, "Sophisticated Machine Learning Algorithms for Pre-investigation of Heart Disease", Intelligent Manufacturing and Energy Sustainability, vol.334, pp.233, 2023.
11.
Imane Euldji, Aicha Belghait, Cherif Si‐Moussa, Othmane Benkortbi, Abdeltif Amrane, "A new hybrid quantitative structure property relationships‐support vector regression ( QSPR‐SVR ) approach for predicting the solubility of drug compounds in supercritical carbon dioxide", AIChE Journal, 2023.
12.
Archana Gunakala, Afzal Hussain Shahid, "A COMPARATIVE STUDY ON PERFORMANCE OF BASIC AND ENSEMBLE CLASSIFIERS WITH VARIOUS DATASETS", Applied Computer Science, vol.19, no.1, pp.107, 2023.
13.
Komal Zaheer, Sana Saeed, Salman Tariq, "Prediction of aerosol optical depth over Pakistan using novel hybrid machine learning model", Acta Geophysica, 2023.
14.
Brett A. McCuen, Mark B. Moldwin, Erik S. Steinmetz, Mark J. Engebretson, "Automated High‐Frequency Geomagnetic Disturbance Classifier: A Machine Learning Approach to Identifying Noise While Retaining High‐Frequency Components of the Geomagnetic Field", Journal of Geophysical Research: Space Physics, vol.128, no.2, 2023.
15.
Laurent Kouao Kouadio, Jianxin Liu, Serge Kouamelan Kouamelan, Rong Liu, , 2023.
16.
Michael Ayitey Junior, Peter Appiahene, Obed Appiah, Christopher Ninfaakang Bombie, "Forex market forecasting using machine learning: Systematic Literature Review and meta-analysis", Journal of Big Data, vol.10, no.1, 2023.
17.
Juan J. Soria, Geraldine De la Cruz, Tony Molina, Rosmery Ramos-Sandoval, "Comparative Approach of Sentiment Analysis Algorithms to Classify Social Media Information Gathering in the Spanish Language", Data Science and Algorithms in Systems, vol.597, pp.762, 2023.
18.
Satish Sonwane, Shital Chiddarwar, M. R. Rahul, Mohsin Dalvi, "Pre-trained CNN Based SVM Classifier for Weld Joint Type Recognition", Proceedings of the Future Technologies Conference (FTC) 2022, Volume 1, vol.559, pp.185, 2023.
19.
Sozan Mohammed Ahmed, Ramadhan J. Mstafa, "A Comprehensive Survey on Bone Segmentation Techniques in Knee Osteoarthritis Research: From Conventional Methods to Deep Learning", Diagnostics, vol.12, no.3, pp.611, 2022.
20.
Kouao Laurent Kouadio, Loukou Nicolas Kouame, Coulibaly Drissa, Binbin Mi, Kouamelan Serge Kouamelan, Serge Pacome Deguine Gnoleba, Hongyu Zhang, Jianghai Xia, "Groundwater Flow Rate Prediction From Geo?Electrical Features Using Support Vector Machines", Water Resources Research, vol.58, no.7, 2022.
21.
Zrar Kh. Abdul, Abdulbasit K. Al-Talabani, "Highly Accurate Gear Fault Diagnosis Based on Support Vector Machine", Journal of Vibration Engineering & Technologies, 2022.
22.
Debadri Banerjee, Deepti Rajput, Surojit Banerjee, Vikas Anand Saharan, "Artificial Intelligence and Its Applications in Drug Discovery, Formulation Development, and Healthcare", Computer Aided Pharmaceutics and Drug Delivery, pp.309, 2022.
23.
Hatice Seval Manap, Bekir Taner San, "Data Integration for Lithological Mapping Using Machine Learning Algorithms", Earth Science Informatics, vol.15, no.3, pp.1841, 2022.
24.
Natalie Teale, David A. Robinson, "Long-term variability in atmospheric moisture transport and relationship with heavy precipitation in the eastern USA", Climatic Change, vol.175, no.1-2, 2022.
25.
Widad Benmouloud, Cherif Si‐Moussa, Othmane Benkortbi, "Machine learning approach for the prediction of surface tension of binary mixtures containing ionic liquids using σ‐profile descriptors", International Journal of Quantum Chemistry, 2022.
26.
Jesudasan Jacinth Jennifer, "Feature elimination and comparison of machine learning algorithms in landslide susceptibility mapping", Environmental Earth Sciences, vol.81, no.20, 2022.
27.
Pedro H. P. da Cunha, Ellisson H. de Paulo, Gabriely Silveira Folli, Márcia H. C. Nascimento, Mariana K. Moro, Paulo R. Filgueiras, "Variable selection by permutation applied in support vector regression models", Journal of Chemometrics, 2022.
28.
Gbétoglo Charles Komadja, Aditya Rana, Luc Adissin Glodji, Vitalis Anye, Gajendra Jadaun, Peter Azikiwe Onwualu, Chhangte Sawmliana, "Assessing Ground Vibration Caused by Rock Blasting in Surface Mines Using Machine-Learning Approaches: A Comparison of CART, SVR and MARS", Sustainability, vol.14, no.17, pp.11060, 2022.
29.
A. Anwarsha, T. Narendiranath Babu, "A Review on the Role of Tunable Q-Factor Wavelet Transform in Fault Diagnosis of Rolling Element Bearings", Journal of Vibration Engineering & Technologies, vol.10, no.5, pp.1793, 2022.
30.
Jingjing Xia, Jin Zeng, "Early warning of algal blooms based on the optimization support vector machine regression in a typical tributary bay of the Three Gorges Reservoir, China", Environmental Geochemistry and Health, 2022.