Classification Code
Classification code research focuses on developing and improving algorithms and models to accurately assign data points to predefined categories. Current efforts concentrate on addressing challenges like imbalanced datasets, noisy data, and limited labeled data through techniques such as self-supervised pre-training, robust loss functions, and the application of diverse architectures including convolutional neural networks (CNNs), transformers, and novel approaches like Mamba. These advancements have significant implications across various fields, improving accuracy and efficiency in applications ranging from medical image analysis and bioacoustic monitoring to cybersecurity threat detection and scientific literature organization.
Papers
GNN-MultiFix: Addressing the pitfalls for GNNs for multi-label node classification
Tianqi Zhao, Megha Khosla
FedRAV: Hierarchically Federated Region-Learning for Traffic Object Classification of Autonomous Vehicles
Yijun Zhai, Pengzhan Zhou, Yuepeng He, Fang Qu, Zhida Qin, Xianlong Jiao, Guiyan Liu, Songtao Guo
A Multimodal Approach to The Detection and Classification of Skin Diseases
Allen Yang (1), Edward Yang (2), ((1) Mission San Jose High School, Fremont, CA, (2) Yale University, New Haven, CT)
Hierarchical Text Classification (HTC) vs. eXtreme Multilabel Classification (XML): Two Sides of the Same Medal
Nerijus Bertalis, Paul Granse, Ferhat Gül, Florian Hauss, Leon Menkel, David Schüler, Tom Speier, Lukas Galke, Ansgar Scherp
An Evolutional Neural Network Framework for Classification of Microarray Data
Maryam Eshraghi Evari, Md Nasir Sulaiman, Amir Rajabi Behjat
Combining Autoregressive and Autoencoder Language Models for Text Classification
João Gonçalves
Deep Learning-Based Classification of Hyperkinetic Movement Disorders in Children
Nandika Ramamurthy, Dr Daniel Lumsden, Dr Rachel Sparks
Classification of Geographical Land Structure Using Convolution Neural Network and Transfer Learning
Mustafa M. Abd Zaid, Ahmed Abed Mohammed, Putra Sumari
Self-Supervised Learning in Deep Networks: A Pathway to Robust Few-Shot Classification
Yuyang Xiao
Attention-guided Spectrogram Sequence Modeling with CNNs for Music Genre Classification
Aditya Sridhar
Autoassociative Learning of Structural Representations for Modeling and Classification in Medical Imaging
Zuzanna Buchnajzer, Kacper Dobek, Stanisław Hapke, Daniel Jankowski, Krzysztof Krawiec
ST-Tree with Interpretability for Multivariate Time Series Classification
Mingsen Du, Yanxuan Wei, Yingxia Tang, Xiangwei Zheng, Shoushui Wei, Cun Ji
Cuvis.Ai: An Open-Source, Low-Code Software Ecosystem for Hyperspectral Processing and Classification
Nathaniel Hanson, Philip Manke, Simon Birkholz, Maximilian Mühlbauer, Rene Heine, Arnd Brandes
A Data-Efficient Sequential Learning Framework for Melt Pool Defect Classification in Laser Powder Bed Fusion
Ahmed Shoyeb Raihan, Austin Harper, Israt Zarin Era, Omar Al-Shebeeb, Thorsten Wuest, Srinjoy Das, Imtiaz Ahmed
Diagnostic Text-guided Representation Learning in Hierarchical Classification for Pathological Whole Slide Image
Jiawen Li, Qiehe Sun, Renao Yan, Yizhi Wang, Yuqiu Fu, Yani Wei, Tian Guan, Huijuan Shi, Yonghonghe He, Anjia Han