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
MRANet: A Modified Residual Attention Networks for Lung and Colon Cancer Classification
Diponkor Bala, S M Rakib Ul Karim, Rownak Ara Rasul
Markov Process-Based Graph Convolutional Networks for Entity Classification in Knowledge Graphs
Johannes Mäkelburg, Yiwen Peng, Mehwish Alam, Tobias Weller, Maribel Acosta
On the Feasibility of Vision-Language Models for Time-Series Classification
Vinay Prithyani, Mohsin Mohammed, Richa Gadgil, Ricardo Buitrago, Vinija Jain, Aman Chadha
Trainingless Adaptation of Pretrained Models for Environmental Sound Classification
Noriyuki Tonami, Wataru Kohno, Keisuke Imoto, Yoshiyuki Yajima, Sakiko Mishima, Reishi Kondo, Tomoyuki Hino
AV-DTEC: Self-Supervised Audio-Visual Fusion for Drone Trajectory Estimation and Classification
Zhenyuan Xiao, Yizhuo Yang, Guili Xu, Xianglong Zeng, Shenghai Yuan
SoundLoc3D: Invisible 3D Sound Source Localization and Classification Using a Multimodal RGB-D Acoustic Camera
Yuhang He, Sangyun Shin, Anoop Cherian, Niki Trigoni, Andrew Markham
Automated Bleeding Detection and Classification in Wireless Capsule Endoscopy with YOLOv8-X
Pavan C Shekar, Vivek Kanhangad, Shishir Maheshwari, T Sunil Kumar
Evaluating the Performance of Large Language Models in Scientific Claim Detection and Classification
Tanjim Bin Faruk
Patherea: Cell Detection and Classification for the 2020s
Dejan Štepec, Maja Jerše, Snežana Đokić, Jera Jeruc, Nina Zidar, Danijel Skočaj
Dynamic Label Name Refinement for Few-Shot Dialogue Intent Classification
Gyutae Park, Ingeol Baek, ByeongJeong Kim, Joongbo Shin, Hwanhee Lee
From Galaxy Zoo DECaLS to BASS/MzLS: detailed galaxy morphology classification with unsupervised domain adaption
Renhao Ye, Shiyin Shen, Rafael S. de Souza, Quanfeng Xu, Mi Chen, Zhu Chen, Emille E. O. Ishida, Alberto Krone-Martins, Rupesh Durgesh
Understanding When and Why Graph Attention Mechanisms Work via Node Classification
Zhongtian Ma, Qiaosheng Zhang, Bocheng Zhou, Yexin Zhang, Shuyue Hu, Zhen Wang
Zero-Shot Prompting and Few-Shot Fine-Tuning: Revisiting Document Image Classification Using Large Language Models
Anna Scius-Bertrand, Michael Jungo, Lars Vögtlin, Jean-Marc Spat, Andreas Fischer
Federated Source-free Domain Adaptation for Classification: Weighted Cluster Aggregation for Unlabeled Data
Junki Mori, Kosuke Kihara, Taiki Miyagawa, Akinori F. Ebihara, Isamu Teranishi, Hisashi Kashima
TAME: Temporal Audio-based Mamba for Enhanced Drone Trajectory Estimation and Classification
Zhenyuan Xiao, Huanran Hu, Guili Xu, Junwei He
TSEML: A task-specific embedding-based method for few-shot classification of cancer molecular subtypes
Ran Sua, Rui Shi, Hui Cui, Ping Xuan, Chengyan Fang, Xikang Feng, Qiangguo Jin