Deep Learning Model
Deep learning models are complex computational systems designed to learn patterns from data, achieving high accuracy in various tasks like image classification, natural language processing, and time series forecasting. Current research emphasizes improving model efficiency (e.g., through parameter reduction and optimized training algorithms), robustness (e.g., against adversarial attacks and noisy data), and interpretability (e.g., via feature attribution and visualization techniques), often employing architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs, including LSTMs and GRUs), and transformers. These advancements are driving significant impact across diverse fields, from medical diagnosis and environmental monitoring to industrial automation and personalized medicine.
Papers
Online Anchor-based Training for Image Classification Tasks
Maria Tzelepi, Vasileios Mezaris
Attack and Defense of Deep Learning Models in the Field of Web Attack Detection
Lijia Shi, Shihao Dong
Time Series Modeling for Heart Rate Prediction: From ARIMA to Transformers
Haowei Ni, Shuchen Meng, Xieming Geng, Panfeng Li, Zhuoying Li, Xupeng Chen, Xiaotong Wang, Shiyao Zhang
Comparing Deep Learning Models for Rice Mapping in Bhutan Using High Resolution Satellite Imagery
Biplov Bhandari, Timothy Mayer
Reconstructing the Tropical Pacific Upper Ocean using Online Data Assimilation with a Deep Learning model
Zilu Meng, Gregory J. Hakim
Dual Thinking and Perceptual Analysis of Deep Learning Models using Human Adversarial Examples
Kailas Dayanandan, Anand Sinha, Brejesh Lall
Applications of interpretable deep learning in neuroimaging: a comprehensive review
Lindsay Munroe, Mariana da Silva, Faezeh Heidari, Irina Grigorescu, Simon Dahan, Emma C. Robinson, Maria Deprez, Po-Wah So
Knockout: A simple way to handle missing inputs
Minh Nguyen, Batuhan K. Karaman, Heejong Kim, Alan Q. Wang, Fengbei Liu, Mert R. Sabuncu
Occam Gradient Descent
B. N. Kausik