# Authors Title Details Date Pdf/Links/Bibtex Keywords
14Marochko V., Rogala J., Longo L. Integrated Gradients for Enhanced Interpretation of P3b-ERP Classifiers Trained with EEG-superlets in Traditional and Virtual Environments Joint Proceedings of the xAI 2025 Late-breaking Work, Demos and Doctoral Consortium co-located with the 3rd World Conference on eXplainable Artificial Intelligence (xAI 2025) 2025 Event-related potentials Deep learning Convolutional neural networks Explainable Artificial Intelligence Integrated Gradients P3b Oddball paradigm time-frequency super-resolution Superlets.
13Criscuolo S., Apicella A., Prevete R., Longo L.Interpreting the latent space of a Convolutional Variational Autoencoder for semi-automated eye blink artefact detection in EEG signals Computer Standards & Interfaces 2025 Electroencephalography Variational autoencoders Convolution Ocular artefacts detection Latent space interpretation
10.1016/j.csi.2024.103897
12Criscuolo S., Giugliano S., Apicella, A., Donnarumma F., Amato F. Tedesco A., Longo L.Exploring the Latent Space of Person-Specific Convolutional Autoencoders for Eye-Blink Artefact Mitigation in EEG Signals 2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI) 2024 Electroencephalography Autoencoders Eye-blink Artefacts Detection Latent Space interpretation Explainable Artificial Intelligence Artificial Intelligence Machine Learning Deep learning
10.1109/RTSI61910.2024.10761377
11Marochko V., and Longo L.Enhancing the analysis of the P300 event-related potential with integrated gradients on a convolutional neural network trained with superlets Joint Proceedings of the xAI 2024 Late-breaking Work, Demos and Doctoral Consortium co-located with the 2nd World Conference on eXplainable Artificial Intelligence (xAI 2024) 2024 Event-related potentials Deep learning Convolutional neural networks Explainable Artificial Intelligence Integrated gradients P3b Oddball paradigm time-frequency super-resolution Superlets
10Chikkankod A.V., Longo L.A proposal for improving EEG microstate generation via interpretable deep clustering with convolutional autoencoders Joint Proceedings of the xAI 2024 Late-breaking Work, Demos and Doctoral Consortium co-located with the 2nd World Conference on eXplainable Artificial Intelligence (xAI 2024) 2024 EEG Microstates Shallow clustering Deep clustering Convolutional autoencoders Resting state Machine Learning Deep Learning Microstate theory
9Hryniewska-Guzik W., Longo L., Biecek P.CNN-Based Explanation Ensembling for Dataset, Representation and Explanations Evaluation eXplainable Artificial Intelligence, The World Conference (xAI-2024) 2024 Explainable Artificial Intelligence XAI Convolutional Neural Network model evaluation data evaluation representation learning ensemble deep learning machine learning
10.1007/978-3-031-63797-1_18
8Ahmed T., Longo L.Latent Space Interpretation and Visualisation for Understanding the Decisions of Convolutional Variational Autoencoders Trained with EEG Topographic Maps Joint Proceedings of the xAI-2023 Late-breaking Work, Demos and Doctoral Consortium co-located with the 1st World Conference on eXplainable Artificial Intelligence (xAI-2023) 2023 Electroencephalography Convolutional variational autoencoders latent space interpretation deep learning spectral topographic maps Machine Learning
7Natsiou A., O’Leary S., Longo L. An Exploration of the Latent Space of a Convolutional Variational Autoencoder for the Generation of Musical Instrument Tones eXplainable Artificial Intelligence, The World Conference (xAI-2023) 2023 Explainable Artificial Intelligence Variational Autoencoders Audio Representations Audio Synthesis Latent Feature Importance Deep Learning Machine Learning
10.1007/978-3-031-44070-0_24
6Ahmed T., Longo L.Interpreting Disentangled Representations of Person-Specific Convolutional Variational Autoencoders of Spatially Preserving EEG Topographic Maps via Clustering and Visual Plausibility Information 2023 electroencephalography convolutional variational autoencoder latent space interpretation deep learning spectral topographic maps
10.3390/info14090489
5Natsiou A., Longo L., O'Leary S.An investigation of the reconstruction capacity of stacked convolutional autoencoders for log-mel-spectrograms 16th International Conference on Signal-Image Technology & Internet-Based Systems 2022 Log-mel-spectrogram reconstruction autoencoders machine learning
10.1109/SITIS57111.2022.00038
4Chikkankod A.V., Longo L. On the Dimensionality and Utility of Convolutional Autoencoder’s Latent Space Trained with Topology-Preserving Spectral EEG Head-Maps Machine Learning and Knowledge Extraction 2022 electroencephalography latent space analysis sliding windowing convolutional autoencoders automatic feature extraction dense neural network
10.3390/make4040053
3Longo L.Modeling Cognitive Load as a Self-Supervised Brain Rate with Electroencephalography and Deep Learning Brain Sciences 2022 cognitive load deep learning self-supervision brain rate convolutional neural network recurrent neural network mental workload EEG bands electroencephalography spectral topology-preserving head-maps
10.3390/brainsci12101416
2Ahmed T., Longo L. Examining the Size of the Latent Space of Convolutional Variational Autoencoders Trained With Spectral Topographic Maps of EEG Frequency Bands IEEE Access 2022 Electroencephalography convolutional variational autoencoder latent space deep learning frequency bands spectral topographic maps neural networks
10.1109/ACCESS.2022.3212777
1Jindala K., Upadhyaya R., Padhyb P.K., Longo L.Bi-LSTM-deep CNN for schizophrenia detection using MSST-spectral images of EEG signals Artificial Intelligence-Based Brain-Computer Interface 2022 bi-directional LSTM Long-Short Term Memory Deep Learning Schizophrenia Spectral analysis Convolutional neural network Electroencephalography
10.1016/B978-0-323-91197-9.00011-4
# Authors Title Details Date Pdf/Links/Bibtex Keywords