Disentangling Domain and General Representations for Time Series Classification

Authors: Youmin Chen, Xinyu Yan, Yang Yang, Jianfeng Zhang, Jing Zhang, Lujia Pan, Juren Li

IJCAI 2024 | Conference PDF | Archive PDF | Plain Text | LLM Run Details

Reproducibility Variable Result LLM Response
Research Type Experimental Extensive experiments on two public datasets and three real-world applications demonstrate the effectiveness of the proposed model against several stateof-the-art baselines.
Researcher Affiliation Collaboration Youmin Chen1 , Xinyu Yan1 , Yang Yang1 , Jianfeng Zhang2 , Jing Zhang3 , Lujia Pan2 and Juren Li1 1Zhejiang University 2Huawei Noah s Ark Lab 3Renmin University of China
Pseudocode No The paper states 'The whole learning algorithm of CADT is presented in the appendix.' but the appendix itself is not included in the provided text.
Open Source Code Yes The code and supplementary materials are available at https: //github.com/IJCAI-CADT/cadt
Open Datasets Yes In our experiments, we utilize five datasets: CHARGE and ELEC from industrial practice, and UCIHAR [Reyes-Ortiz et al., 2016], WISDM [Kwapisz et al., 2011], Sleep EDF [Ragab and Eldele, 2022] from publicly available datasets.
Dataset Splits No The paper mentions training and target samples but does not provide specific training/validation/test dataset splits (e.g., percentages or counts) or reference predefined splits within the provided text.
Hardware Specification No The paper states 'The implementation detailed will be presented in the supplementary materials.' and does not include specific hardware details such as GPU/CPU models or memory in the provided text.
Software Dependencies No The paper states 'The implementation detailed will be presented in the supplementary materials.' and does not include specific software dependencies with version numbers (e.g., Python, PyTorch, TensorFlow versions) in the provided text.
Experiment Setup No The paper states 'The implementation detailed will be presented in the supplementary materials.' and does not include specific experimental setup details like hyperparameter values or training configurations in the provided text.