default search action
Rohitash Chandra
Person information
Refine list
refinements active!
zoomed in on ?? of ?? records
view refined list in
export refined list as
2020 – today
- 2024
- [j53]Ratneel Deo, Jody M. Webster, Tristan Salles, Rohitash Chandra:
ReefCoreSeg: A Clustering-Based Framework for Multi-Source Data Fusion for Segmentation of Reef Drill Cores. IEEE Access 12: 12164-12180 (2024) - [j52]Rohitash Chandra, Joshua A. Simmons:
Bayesian Neural Networks via MCMC: A Python-Based Tutorial. IEEE Access 12: 70519-70549 (2024) - [j51]Rohitash Chandra, Abhishek Tiwari, Naman Jain, Sushrut Badhe:
Large Language Models for Metaphor Detection: Bhagavad Gita and Sermon on the Mount. IEEE Access 12: 84452-84469 (2024) - [j50]Tianyi Wang, Rodney Beard, John Hawkins, Rohitash Chandra:
Recursive Deep Learning Framework for Forecasting the Decadal World Economic Outlook. IEEE Access 12: 152921-152944 (2024) - [j49]Azal Ahmad Khan, Salman Hussain, Rohitash Chandra:
A Quantum-Inspired Predator-Prey Algorithm for Real-Parameter Optimization. Algorithms 17(1): 33 (2024) - [j48]Yuhao Ke, Ranran Bian, Rohitash Chandra:
A unified machine learning framework for basketball team roster construction: NBA and WNBA. Appl. Soft Comput. 153: 111298 (2024) - [j47]Eric Chen, Martin S. Andersen, Rohitash Chandra:
Deep learning framework with Bayesian data imputation for modelling and forecasting groundwater levels. Environ. Model. Softw. 178: 106072 (2024) - [j46]Azal Ahmad Khan, Omkar Chaudhari, Rohitash Chandra:
A review of ensemble learning and data augmentation models for class imbalanced problems: Combination, implementation and evaluation. Expert Syst. Appl. 244: 122778 (2024) - [j45]Chaarvi Bansal, P. R. Deepa, Vinti Agarwal, Rohitash Chandra:
A clustering and graph deep learning-based framework for COVID-19 drug repurposing. Expert Syst. Appl. 249: 123560 (2024) - [j44]Nhat Minh Nguyen, Minh-Ngoc Tran, Rohitash Chandra:
Sequential reversible jump MCMC for dynamic Bayesian neural networks. Neurocomputing 564: 126960 (2024) - [c52]Honghui Wang, Weiming Zhi, Gustavo Batista, Rohitash Chandra:
Pedestrian Trajectory Prediction Using Dynamics-based Deep Learning. ICRA 2024: 15068-15075 - [i49]Mahek Vora, Tom Blau, Vansh Kachhwal, Ashu M. G. Solo, Rohitash Chandra:
Large language model for Bible sentiment analysis: Sermon on the Mount. CoRR abs/2401.00689 (2024) - [i48]Hamish Haggerty, Rohitash Chandra:
Self-supervised learning for skin cancer diagnosis with limited training data. CoRR abs/2401.00692 (2024) - [i47]Sandeep Nagar, Ehsan Farahbakhsh, Joseph L. Awange, Rohitash Chandra:
Remote sensing framework for geological mapping via stacked autoencoders and clustering. CoRR abs/2404.02180 (2024) - [i46]Rohitash Chandra, Baicheng Zhu, Qingying Fang, Eka Shinjikashvili:
Large language models for sentiment analysis of newspaper articles during COVID-19: The Guardian. CoRR abs/2405.13056 (2024) - [i45]Siddharth Khedkar, R. Willem Vervoort, Rohitash Chandra:
Evaluation of deep learning models for Australian climate extremes: prediction of streamflow and floods. CoRR abs/2407.15882 (2024) - [i44]Chen Wang, Rohitash Chandra:
A longitudinal sentiment analysis of Sinophobia during COVID-19 using large language models. CoRR abs/2408.16942 (2024) - [i43]Xuechun Wang, Rodney Beard, Rohitash Chandra:
Evaluation of Google Translate for Mandarin Chinese translation using sentiment and semantic analysis. CoRR abs/2409.04964 (2024) - [i42]Omkar Kulkarni, Rohitash Chandra:
Bayes-CATSI: A variational Bayesian deep learning framework for medical time series data imputation. CoRR abs/2410.01847 (2024) - 2023
- [j43]Amit Krishan Kumar, Snigdha Jain, Shirin Jain, M. Ritam, Yuanqing Xia, Rohitash Chandra:
Physics-informed neural entangled-ladder network for inhalation impedance of the respiratory system. Comput. Methods Programs Biomed. 231: 107421 (2023) - [j42]Arpit Kapoor, Anshul Negi, Lucy A. Marshall, Rohitash Chandra:
Cyclone trajectory and intensity prediction with uncertainty quantification using variational recurrent neural networks. Environ. Model. Softw. 162: 105654 (2023) - [j41]Arpit Kapoor, Sahani Pathiraja, Lucy A. Marshall, Rohitash Chandra:
DeepGR4J: A deep learning hybridization approach for conceptual rainfall-runoff modelling. Environ. Model. Softw. 169: 105831 (2023) - [j40]George Bai, Rohitash Chandra:
Gradient boosting Bayesian neural networks via Langevin MCMC. Neurocomputing 558: 126726 (2023) - [j39]Animesh Renanse, Alok Sharma, Rohitash Chandra:
Memory capacity of recurrent neural networks with matrix representation. Neurocomputing 560: 126824 (2023) - [j38]Saharsh Barve, Jody M. Webster, Rohitash Chandra:
Reef-Insight: A Framework for Reef Habitat Mapping with Clustering Methods Using Remote Sensing. Inf. 14(7): 373 (2023) - [j37]Akshat Shukla, Chaarvi Bansal, Sushrut Badhe, Mukul Ranjan, Rohitash Chandra:
An evaluation of Google Translate for Sanskrit to English translation via sentiment and semantic analysis. Nat. Lang. Process. J. 4: 100025 (2023) - [i41]Tianyi Wang, Rodney Beard, John Hawkins, Rohitash Chandra:
Recursive deep learning framework for forecasting the decadal world economic outlook. CoRR abs/2301.10874 (2023) - [i40]Saharsh Barve, Jody M. Webster, Rohitash Chandra:
Reef-insight: A framework for reef habitat mapping with clustering methods via remote sensing. CoRR abs/2301.10876 (2023) - [i39]Janhavi Lande, Arti Pillay, Rohitash Chandra:
Deep learning for COVID-19 topic modelling via Twitter: Alpha, Delta and Omicron. CoRR abs/2303.00135 (2023) - [i38]Akshat Shukla, Chaarvi Bansal, Sushrut Badhe, Mukul Ranjan, Rohitash Chandra:
An evaluation of Google Translate for Sanskrit to English translation via sentiment and semantic analysis. CoRR abs/2303.07201 (2023) - [i37]Rohitash Chandra, Royce Chen, Joshua A. Simmons:
Bayesian neural networks via MCMC: a Python-based tutorial. CoRR abs/2304.02595 (2023) - [i36]Azal Ahmad Khan, Omkar Chaudhari, Rohitash Chandra:
A review of ensemble learning and data augmentation models for class imbalanced problems: combination, implementation and evaluation. CoRR abs/2304.02858 (2023) - [i35]Mahsa Tavakoli, Rohitash Chandra, Fengrui Tian, Cristián Bravo:
Multi-Modal Deep Learning for Credit Rating Prediction Using Text and Numerical Data Streams. CoRR abs/2304.10740 (2023) - [i34]Rohitash Chandra, Jayesh Sonawane, Janhavi Lande, Cathy Yu:
An analysis of vaccine-related sentiments from development to deployment of COVID-19 vaccines. CoRR abs/2306.13797 (2023) - [i33]Chaarvi Bansal, Rohitash Chandra, Vinti Agarwal, P. R. Deepa:
A clustering and graph deep learning-based framework for COVID-19 drug repurposing. CoRR abs/2306.13995 (2023) - [i32]Honghui Wang, Weiming Zhi, Gustavo Batista, Rohitash Chandra:
Pedestrian Trajectory Prediction Using Dynamics-based Deep Learning. CoRR abs/2309.09021 (2023) - 2022
- [j36]Rohitash Chandra, Venkatesh Kulkarni:
Semantic and Sentiment Analysis of Selected Bhagavad Gita Translations Using BERT-Based Language Framework. IEEE Access 10: 21291-21315 (2022) - [j35]Anuraganand Sharma, Prabhat Kumar Singh, Rohitash Chandra:
SMOTified-GAN for Class Imbalanced Pattern Classification Problems. IEEE Access 10: 30655-30665 (2022) - [j34]Rohitash Chandra, Mahir Jain, Manavendra Maharana, Pavel N. Krivitsky:
Revisiting Bayesian Autoencoders With MCMC. IEEE Access 10: 40482-40495 (2022) - [j33]Arpit Kapoor, Eshwar Nukala, Rohitash Chandra:
Bayesian neuroevolution using distributed swarm optimization and tempered MCMC. Appl. Soft Comput. 129: 109528 (2022) - [j32]Amit Krishan Kumar, M. Ritam, Lina Han, Shuli Guo, Rohitash Chandra:
Deep learning for predicting respiratory rate from biosignals. Comput. Biol. Medicine 144: 105338 (2022) - [j31]Hardik A. Jain, Vinti Agarwal, Chaarvi Bansal, Anupama Kumar, Faheem Faheem, Muzaffar-Ur-Rehman Mohammed, Sankaranarayanan Murugesan, Moana M. Simpson, Avinash V. Karpe, Rohitash Chandra, Christopher A. MacRaild, Ian K. Styles, Amanda L. Peterson, Matthew A. Cooper, Carl M. J. Kirkpatrick, Rohan M. Shah, Enzo A. Palombo, Natalie L. Trevaskis, Darren J. Creek, Seshadri S. Vasan:
CoviRx: A User-Friendly Interface for Systematic Down-Selection of Repurposed Drug Candidates for COVID-19. Data 7(11): 164 (2022) - [j30]Rohitash Chandra, Animesh Tiwari:
Distributed Bayesian optimisation framework for deep neuroevolution. Neurocomputing 470: 51-65 (2022) - [j29]Giang Ngo, Rodney Beard, Rohitash Chandra:
Evolutionary bagging for ensemble learning. Neurocomputing 510: 1-14 (2022) - [j28]Hodjat Shirmard, Ehsan Farahbakhsh, Elnaz Heidari, Amin Beiranvand Pour, Biswajeet Pradhan, R. Dietmar Müller, Rohitash Chandra:
A Comparative Study of Convolutional Neural Networks and Conventional Machine Learning Models for Lithological Mapping Using Remote Sensing Data. Remote. Sens. 14(4): 819 (2022) - [i31]Rohitash Chandra, Venkatesh Kulkarni:
Semantic and sentiment analysis of selected Bhagavad Gita translations using BERT-based language framework. CoRR abs/2201.03115 (2022) - [i30]Rohitash Chandra, Yash Vardhan Sharma:
Surrogate-assisted distributed swarm optimisation for computationally expensive models. CoRR abs/2201.06843 (2022) - [i29]Shelvin Chand, Kousik Rajesh, Rohitash Chandra:
MAP-Elites based Hyper-Heuristic for the Resource Constrained Project Scheduling Problem. CoRR abs/2204.11162 (2022) - [i28]Rohitash Chandra, Mukul Ranjan:
Artificial intelligence for topic modelling in Hindu philosophy: mapping themes between the Upanishads and the Bhagavad Gita. CoRR abs/2205.11020 (2022) - [i27]Mingyue Kang, Seshadri Vasan, Laurence O. W. Wilson, Rohitash Chandra:
Unsupervised machine learning framework for discriminating major variants of concern during COVID-19. CoRR abs/2208.01439 (2022) - [i26]Giang Ngo, Rodney Beard, Rohitash Chandra:
Evolutionary bagging for ensemble learning. CoRR abs/2208.02400 (2022) - 2021
- [j27]Rohitash Chandra, Shaurya Goyal, Rishabh Gupta:
Evaluation of Deep Learning Models for Multi-Step Ahead Time Series Prediction. IEEE Access 9: 83105-83123 (2021) - [j26]Rohitash Chandra, Ritij Saini:
Biden vs Trump: Modeling US General Elections Using BERT Language Model. IEEE Access 9: 128494-128505 (2021) - [j25]Rohitash Chandra, Ayush Bhagat, Manavendra Maharana, Pavel N. Krivitsky:
Bayesian Graph Convolutional Neural Networks via Tempered MCMC. IEEE Access 9: 130353-130365 (2021) - [j24]Rohitash Chandra, Sally Cripps, Nathaniel Butterworth, R. Dietmar Müller:
Precipitation reconstruction from climate-sensitive lithologies using Bayesian machine learning. Environ. Model. Softw. 139: 105002 (2021) - [i25]Rohitash Chandra, Ayush Jain, Divyanshu Singh Chauhan:
Deep learning via LSTM models for COVID-19 infection forecasting in India. CoRR abs/2101.11881 (2021) - [i24]Animesh Tiwari, Rishabh Gupta, Rohitash Chandra:
Delhi air quality prediction using LSTM deep learning models with a focus on COVID-19 lockdown. CoRR abs/2102.10551 (2021) - [i23]Hodjat Shirmard, Ehsan Farahbakhsh, R. Dietmar Müller, Rohitash Chandra:
A review of machine learning in processing remote sensing data for mineral exploration. CoRR abs/2103.07678 (2021) - [i22]Rohitash Chandra, Shaurya Goyal, Rishabh Gupta:
Evaluation of deep learning models for multi-step ahead time series prediction. CoRR abs/2103.14250 (2021) - [i21]Rohitash Chandra, Mahir Jain, Manavendra Maharana, Pavel N. Krivitsky:
Revisiting Bayesian Autoencoders with MCMC. CoRR abs/2104.05915 (2021) - [i20]Animesh Renanse, Rohitash Chandra, Alok Sharma:
Memory Capacity of Neural Turing Machines with Matrix Representation. CoRR abs/2104.07454 (2021) - [i19]Rohitash Chandra, Ayush Bhagat, Manavendra Maharana, Pavel N. Krivitsky:
Bayesian graph convolutional neural networks via tempered MCMC. CoRR abs/2104.08438 (2021) - [i18]Rohitash Chandra, Aswin Krishna:
COVID-19 sentiment analysis via deep learning during the rise of novel cases. CoRR abs/2104.10662 (2021) - [i17]Anuraganand Sharma, Prabhat Kumar Singh, Rohitash Chandra:
SMOTified-GAN for class imbalanced pattern classification problems. CoRR abs/2108.03235 (2021) - 2020
- [j23]Rohitash Chandra, Konark Jain, Arpit Kapoor, Ashray Aman:
Surrogate-assisted parallel tempering for Bayesian neural learning. Eng. Appl. Artif. Intell. 94: 103700 (2020) - [j22]Jodie Pall, Rohitash Chandra, Danial Azam, Tristan Salles, Jody M. Webster, Richard Scalzo, Sally Cripps:
Bayesreef: A Bayesian inference framework for modelling reef growth in response to environmental change and biological dynamics. Environ. Model. Softw. 125: 104610 (2020) - [j21]Rohitash Chandra, Arpit Kapoor:
Bayesian neural multi-source transfer learning. Neurocomputing 378: 54-64 (2020) - [j20]Hodjat Shirmard, Ehsan Farahbakhsh, Amin Beiranvand Pour, Aidy M. Muslim, R. Dietmar Müller, Rohitash Chandra:
Integration of Selective Dimensionality Reduction Techniques for Mineral Exploration Using ASTER Satellite Data. Remote. Sens. 12(8): 1261 (2020) - [j19]Ehsan Farahbakhsh, Ardeshir Hezarkhani, Taymour Eslamkish, Abbas Bahroudi, Rohitash Chandra:
3DWofE: An open-source software package for three-dimensional weights of evidence modeling. Softw. Impacts 6: 100039 (2020)
2010 – 2019
- 2019
- [j18]Rohitash Chandra, Danial Azam, R. Dietmar Müller, Tristan Salles, Sally Cripps:
Bayeslands: A Bayesian inference approach for parameter uncertainty quantification in Badlands. Comput. Geosci. 131: 89-101 (2019) - [j17]Rohitash Chandra, Konark Jain, Ratneel Vikash Deo, Sally Cripps:
Langevin-gradient parallel tempering for Bayesian neural learning. Neurocomputing 359: 315-326 (2019) - [c51]Ratneel Deo, Rohitash Chandra:
Multi-step-ahead Cyclone Intensity Prediction with Bayesian Neural Networks. PRICAI (2) 2019: 282-295 - 2018
- [j16]Rohitash Chandra, Yew-Soon Ong, Chi-Keong Goh:
Co-evolutionary multi-task learning for dynamic time series prediction. Appl. Soft Comput. 70: 576-589 (2018) - [j15]Rohitash Chandra, Sally Cripps:
Coevolutionary multi-task learning for feature-based modular pattern classification. Neurocomputing 319: 164-175 (2018) - [j14]Rohitash Chandra, Abhishek Gupta, Yew-Soon Ong, Chi-Keong Goh:
Evolutionary Multi-task Learning for Modular Knowledge Representation in Neural Networks. Neural Process. Lett. 47(3): 993-1009 (2018) - [c50]Rohitash Chandra:
Multi-Task Modular Backpropagation For Dynamic Time Series Prediction. IJCNN 2018: 1-7 - [c49]Rohitash Chandra, Sally Cripps:
Bayesian Multi-task Learning for Dynamic Time Series Prediction. IJCNN 2018: 1-8 - [c48]Gary Wong, Anuraganand Sharma, Rohitash Chandra:
Information Collection Strategies In Memetic Cooperative Neuroevolution For Time Series Prediction. IJCNN 2018: 1-6 - [c47]Yanfei Zhang, Rohitash Chandra, Junbin Gao:
Cyclone Track Prediction with Matrix Neural Networks. IJCNN 2018: 1-8 - [i16]Rohitash Chandra, Danial Azam, R. Dietmar Müller, Tristan Salles, Sally Cripps:
BayesLands: A Bayesian inference approach for parameter uncertainty quantification in Badlands. CoRR abs/1805.03696 (2018) - [i15]Rohitash Chandra, R. Dietmar Müller, Ratneel Deo, Nathaniel Butterworth, Tristan Salles, Sally Cripps:
Multi-core parallel tempering Bayeslands for basin and landscape evolution. CoRR abs/1806.10939 (2018) - [i14]Jodie Pall, Rohitash Chandra, Danial Azam, Tristan Salles, Jody M. Webster, Sally Cripps:
BayesReef: A Bayesian inference framework for modelling reef growth in response to environmental change and biological dynamics. CoRR abs/1808.02763 (2018) - [i13]Ehsan Farahbakhsh, Rohitash Chandra, Hugo K. H. Olierook, Richard Scalzo, Chris Clark, Steven M. Reddy, R. Dietmar Müller:
Computer vision-based framework for extracting geological lineaments from optical remote sensing data. CoRR abs/1810.02320 (2018) - [i12]Rohitash Chandra, Konark Jain, Ratneel Vikash Deo, Sally Cripps:
Langevin-gradient parallel tempering for Bayesian neural learning. CoRR abs/1811.04343 (2018) - [i11]Rohitash Chandra, Konark Jain, Arpit Kapoor:
Surrogate-assisted parallel tempering for Bayesian neural learning. CoRR abs/1811.08687 (2018) - [i10]Richard Scalzo, David Kohn, Hugo K. H. Olierook, Gregory Houseman, Rohitash Chandra, Mark A. Girolami, Sally Cripps:
Efficiency and robustness in Monte Carlo sampling of 3-D geophysical inversions with Obsidian v0.1.2: Setting up for success. CoRR abs/1812.00318 (2018) - [i9]Rohitash Chandra, Danial Azam, Arpit Kapoor, R. Dietmar Müller:
Surrogate-assisted Bayesian inversion for landscape and basin evolution models. CoRR abs/1812.08655 (2018) - 2017
- [j13]Shonal Chaudhry, Rohitash Chandra:
Face detection and recognition in an unconstrained environment for mobile visual assistive system. Appl. Soft Comput. 53: 168-180 (2017) - [j12]Rohitash Chandra, Yew-Soon Ong, Chi-Keong Goh:
Co-evolutionary multi-task learning with predictive recurrence for multi-step chaotic time series prediction. Neurocomputing 243: 21-34 (2017) - [c46]Rohitash Chandra:
Multi-task Modular Backpropagation for Feature-Based Pattern Classification. ICONIP (6) 2017: 558-566 - [c45]Rohitash Chandra, Lamiae Azizi, Sally Cripps:
Bayesian Neural Learning via Langevin Dynamics for Chaotic Time Series Prediction. ICONIP (5) 2017: 564-573 - [c44]Rohitash Chandra:
Dynamic Cyclone Wind-Intensity Prediction Using Co-Evolutionary Multi-task Learning. ICONIP (5) 2017: 618-627 - [c43]Rohitash Chandra:
Co-evolutionary Multi-task Learning for Modular Pattern Classification. ICONIP (6) 2017: 692-701 - [c42]Rohitash Chandra:
Towards an Affective Computational Model for Machine Consciousness. ICONIP (5) 2017: 897-907 - [i8]Rohitash Chandra:
An affective computational model for machine consciousness. CoRR abs/1701.00349 (2017) - [i7]Rohitash Chandra:
Towards prediction of rapid intensification in tropical cyclones with recurrent neural networks. CoRR abs/1701.04518 (2017) - [i6]Rohitash Chandra, Yew-Soon Ong, Chi-Keong Goh:
Co-evolutionary multi-task learning for dynamic time series prediction. CoRR abs/1703.01887 (2017) - [i5]Ratneel Vikash Deo, Rohitash Chandra, Anuraganand Sharma:
Stacked transfer learning for tropical cyclone intensity prediction. CoRR abs/1708.06539 (2017) - 2016
- [j11]Rohitash Chandra, Shelvin Chand:
Evaluation of co-evolutionary neural network architectures for time series prediction with mobile application in finance. Appl. Soft Comput. 49: 462-473 (2016) - [j10]Luc Rolland, Rohitash Chandra:
The forward kinematics of the 6-6 parallel manipulator using an evolutionary algorithm based on generalized generation gap with parent-centric crossover. Robotica 34(1): 1-22 (2016) - [c41]Ravneil Nand, Rohitash Chandra:
Competitive Island Cooperative Neuro-evolution of Feedforward Networks for Time Series Prediction. ACALCI 2016: 160-170 - [c40]Ravneil Nand, Rohitash Chandra:
Reverse Neuron Level Decomposition for Cooperative Neuro-Evolution of Feedforward Networks for Time Series Prediction. ACALCI 2016: 171-182 - [c39]Ravneil Nand, Rohitash Chandra:
Coevolutionary Feature Selection and Reconstruction in Neuro-Evolution for Time Series Prediction. ACALCI 2016: 285-297 - [c38]Kavitesh Bali, Rohitash Chandra, Mohammad Nabi Omidvar:
Contribution based multi-island competitive cooperative coevolution. CEC 2016: 1823-1830 - [c37]Shamina Hussein, Rohitash Chandra, Anuraganand Sharma:
Multi-step-ahead chaotic time series prediction using coevolutionary recurrent neural networks. CEC 2016: 3084-3091 - [c36]Mashud Rana, Rohitash Chandra, Vassilios G. Agelidis:
Cooperative neuro-evolutionary recurrent neural networks for solar power prediction. CEC 2016: 4691-4698 - [c35]Rohitash Chandra, Ratneel Deo, Kavitesh Bali, Anurag Sharma:
On the relationship of degree of separability with depth of evolution in decomposition for cooperative coevolution. CEC 2016: 4823-4830 - [c34]Shamina Hussein, Rohitash Chandra:
Chaotic Feature Selection and Reconstruction in Time Series Prediction. ICONIP (3) 2016: 3-11 - [c33]Rohitash Chandra, Abhishek Gupta, Yew-Soon Ong, Chi Keong Goh:
Evolutionary Multi-task Learning for Modular Training of Feedforward Neural Networks. ICONIP (2) 2016: 37-46 - [c32]Gary Wong, Rohitash Chandra, Anuraganand Sharma:
Memetic Cooperative Neuro-Evolution for Chaotic Time Series Prediction. ICONIP (3) 2016: 299-308 - [c31]Shonal Chaudhry, Rohitash Chandra:
Unconstrained Face Detection from a Mobile Source Using Convolutional Neural Networks. ICONIP (2) 2016: 567-576 - [c30]Ratneel Deo, Rohitash Chandra:
Identification of minimal timespan problem for recurrent neural networks with application to cyclone wind-intensity prediction. IJCNN 2016: 489-496 - [c29]Rohitash Chandra, Ratneel Deo, Christian W. Omlin:
An architecture for encoding two-dimensional cyclone track prediction problem in coevolutionary recurrent neural networks. IJCNN 2016: 4865-4872 - 2015
- [j9]Rohitash Chandra, Luc Rolland:
Global-local population memetic algorithm for solving the forward kinematics of parallel manipulators. Connect. Sci. 27(1): 22-39 (2015) - [j8]Rohitash Chandra:
Competition and Collaboration in Cooperative Coevolution of Elman Recurrent Neural Networks for Time-Series Prediction. IEEE Trans. Neural Networks Learn. Syst. 26(12): 3123-3136 (2015) - [c28]Kavitesh K. Bali, Rohitash Chandra:
Scaling up Multi-island Competitive Cooperative Coevolution for Real Parameter Global Optimisation. Australasian Conference on Artificial Intelligence 2015: 34-48 - [c27]Rohitash Chandra, Kavitesh Bali:
Competitive two-island cooperative coevolution for real parameter global optimisation. CEC 2015: 93-100 - [c26]Rohitash Chandra:
Multi-objective cooperative neuro-evolution of recurrent neural networks for time series prediction. CEC 2015: 101-108 - [c25]Rohitash Chandra, Kavina Dayal:
Cooperative neuro-evolution of Elman recurrent networks for tropical cyclone wind-intensity prediction in the South Pacific region. CEC 2015: 1784-1791 - [c24]Rohitash Chandra, Kavina S. Dayal:
Coevolutionary Recurrent Neural Networks for Prediction of Rapid Intensification in Wind Intensity of Tropical Cyclones in the South Pacific Region. ICONIP (3) 2015: 43-52 - [c23]Ravneil Nand, Rohitash Chandra:
Neuron-Synapse Level Problem Decomposition Method for Cooperative Neuro-Evolution of Feedforward Networks for Time Series Prediction. ICONIP (3) 2015: 90-100 - [c22]Kavitesh K. Bali, Rohitash Chandra:
Multi-Island Competitive Cooperative Coevolution for Real Parameter Global Optimization. ICONIP (3) 2015: 127-136 - [c21]Kavitesh K. Bali, Rohitash Chandra, Mohammad Nabi Omidvar:
Competitive Island-Based Cooperative Coevolution for Efficient Optimization of Large-Scale Fully-Separable Continuous Functions. ICONIP (3) 2015: 137-147 - [c20]Gary Wong, Rohitash Chandra:
Enhancing Competitive Island Cooperative Neuro-Evolution Through Backpropagation for Pattern Classification. ICONIP (1) 2015: 293-301 - [c19]Rohitash Chandra, Kavina Dayal, Nicholas Rollings:
Application of cooperative neuro-evolution of Elman recurrent networks for a two-dimensional cyclone track prediction for the south pacific region. IJCNN 2015: 1-8 - [c18]Rohitash Chandra, Gary Wong:
Competitive two-island cooperative co-evolution for training feedforward neural networks for pattern classification problems. IJCNN 2015: 1-8 - [i4]Shonal Chaudhry, Rohitash Chandra:
Design of a Mobile Face Recognition System for Visually Impaired Persons. CoRR abs/1502.00756 (2015) - [i3]Daryl Abel, Bulou Gavidi, Nicholas Rollings, Rohitash Chandra:
Development of an Android Application for an Electronic Medical Record System in an Outpatient Environment for Healthcare in Fiji. CoRR abs/1503.00810 (2015) - [i2]Emmenual Reddy, Sarnil Kumar, Nicholas Rollings, Rohitash Chandra:
Mobile Application for Dengue Fever Monitoring and Tracking via GPS: Case Study for Fiji. CoRR abs/1503.00814 (2015) - [i1]Swaran S. Ravindra, Rohitash Chandra, Virallikattur S. Dhenesh:
A Study of the Management of Electronic Medical Records in Fijian Hospitals. CoRR abs/1507.03659 (2015) - 2014
- [j7]Rohitash Chandra:
Memetic cooperative coevolution of Elman recurrent neural networks. Soft Comput. 18(8): 1549-1559 (2014) - [c17]Shelvin Chand, Rohitash Chandra:
Multi-objective cooperative coevolution of neural networks for time series prediction. IJCNN 2014: 190-197 - [c16]Shelvin Chand, Rohitash Chandra:
Cooperative coevolution of feed forward neural networks for financial time series problem. IJCNN 2014: 202-209 - [c15]Rohitash Chandra:
Competitive two-island cooperative coevolution for training Elman recurrent networks for time series prediction. IJCNN 2014: 565-572 - 2013
- [c14]Rohitash Chandra:
Adaptive problem decomposition in cooperative coevolution of recurrent networks for time series prediction. IJCNN 2013: 1-8 - 2012
- [b1]Rohitash Chandra:
Problem Decomposition and Adaptation in Cooperative Neuro-Evolution. Victoria University of Wellington, New Zealand, 2012 - [j6]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang:
Crossover-based local search in cooperative co-evolutionary feedforward neural networks. Appl. Soft Comput. 12(9): 2924-2932 (2012) - [j5]Rohitash Chandra, Mengjie Zhang:
Cooperative coevolution of Elman recurrent neural networks for chaotic time series prediction. Neurocomputing 86: 116-123 (2012) - [j4]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang:
On the issue of separability for problem decomposition in cooperative neuro-evolution. Neurocomputing 87: 33-40 (2012) - [j3]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang:
Adapting modularity during learning in cooperative co-evolutionary recurrent neural networks. Soft Comput. 16(6): 1009-1020 (2012) - [c13]Rohitash Chandra, Mengjie Zhang, Lifeng Peng:
Application of Cooperative Convolution Optimization for 13C Metabolic Flux Analysis: Simulation of Isotopic Labeling Patterns Based on Tandem Mass Spectrometry Measurements. SEAL 2012: 178-187 - 2011
- [j2]Rohitash Chandra, Luc Rolland:
On solving the forward kinematics of 3RPR planar parallel manipulator using hybrid metaheuristics. Appl. Math. Comput. 217(22): 8997-9008 (2011) - [j1]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang, Christian W. Omlin:
Encoding subcomponents in cooperative co-evolutionary recurrent neural networks. Neurocomputing 74(17): 3223-3234 (2011) - [c12]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang:
A memetic framework for cooperative coevolution of recurrent neural networks. IJCNN 2011: 673-680 - [c11]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang:
Modularity adaptation in cooperative coevolution of feedforward neural networks. IJCNN 2011: 681-688 - 2010
- [c10]Rohitash Chandra, Marcus R. Frean, Mengjie Zhang:
An Encoding Scheme for Cooperative Coevolutionary Feedforward Neural Networks. Australasian Conference on Artificial Intelligence 2010: 253-262
2000 – 2009
- 2009
- [c9]Rohitash Chandra, Marcus R. Frean, Luc Rolland:
A meta-heuristic paradigm for solving the forward kinematics of 6-6 general parallel manipulator. CIRA 2009: 171-176 - [c8]Rohitash Chandra, Mengjie Zhang, Luc Rolland:
Solving the forward kinematics of the 3RPR planar parallel manipulator using a hybrid meta-heuristic paradigm. CIRA 2009: 177-182 - [c7]Luc Rolland, Rohitash Chandra:
Forward kinematics of the 3RPR planar parallel manipulators using real coded genetic algorithms. ISCIS 2009: 381-386 - 2008
- [c6]Rohitash Chandra, Christian W. Omlin:
Hybrid Evolutionary One-Step Gradient Descent for Training Recurrent Neural Networks. GEM 2008: 305-311 - 2007
- [c5]Rohitash Chandra, Christian W. Omlin:
A Hybrid Recurrent Neural Networks Architecture Inspired by Hidden Markov Models: Training and Extraction of Deterministic Finite Automaton. Artificial Intelligence and Pattern Recognition 2007: 278-285 - [c4]Rohitash Chandra, Christian W. Omlin:
The Comparison and Combination of Genetic and Gradient Descent Learning in Recurrent Neural Networks: An Application to Speech Phoneme Classification. Artificial Intelligence and Pattern Recognition 2007: 286-293 - [c3]Rohitash Chandra, Christian W. Omlin:
Knowledge Discovery using Artificial Neural Networks for a Conservation Biology Domain. DMIN 2007: 221-227 - [c2]Rohitash Chandra, Christian W. Omlin:
Hybrid Recurrent Neural Networks: An Application to Phoneme Classification. GEM 2007: 57-62 - 2006
- [c1]Rohitash Chandra, Christian W. Omlin:
Training and extraction of fuzzy finite state automata in recurrent neural networks. Computational Intelligence 2006: 274-279
Coauthor Index
manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.
Unpaywalled article links
Add open access links from to the list of external document links (if available).
Privacy notice: By enabling the option above, your browser will contact the API of unpaywall.org to load hyperlinks to open access articles. Although we do not have any reason to believe that your call will be tracked, we do not have any control over how the remote server uses your data. So please proceed with care and consider checking the Unpaywall privacy policy.
Archived links via Wayback Machine
For web page which are no longer available, try to retrieve content from the of the Internet Archive (if available).
Privacy notice: By enabling the option above, your browser will contact the API of archive.org to check for archived content of web pages that are no longer available. Although we do not have any reason to believe that your call will be tracked, we do not have any control over how the remote server uses your data. So please proceed with care and consider checking the Internet Archive privacy policy.
Reference lists
Add a list of references from , , and to record detail pages.
load references from crossref.org and opencitations.net
Privacy notice: By enabling the option above, your browser will contact the APIs of crossref.org, opencitations.net, and semanticscholar.org to load article reference information. Although we do not have any reason to believe that your call will be tracked, we do not have any control over how the remote server uses your data. So please proceed with care and consider checking the Crossref privacy policy and the OpenCitations privacy policy, as well as the AI2 Privacy Policy covering Semantic Scholar.
Citation data
Add a list of citing articles from and to record detail pages.
load citations from opencitations.net
Privacy notice: By enabling the option above, your browser will contact the API of opencitations.net and semanticscholar.org to load citation information. Although we do not have any reason to believe that your call will be tracked, we do not have any control over how the remote server uses your data. So please proceed with care and consider checking the OpenCitations privacy policy as well as the AI2 Privacy Policy covering Semantic Scholar.
OpenAlex data
Load additional information about publications from .
Privacy notice: By enabling the option above, your browser will contact the API of openalex.org to load additional information. Although we do not have any reason to believe that your call will be tracked, we do not have any control over how the remote server uses your data. So please proceed with care and consider checking the information given by OpenAlex.
last updated on 2024-11-11 21:25 CET by the dblp team
all metadata released as open data under CC0 1.0 license
see also: Terms of Use | Privacy Policy | Imprint