Many-to-Many Prediction for Effective Modeling of Frequent Label Transitions in Time Series

被引:0
作者
Katrompas, Alexander [1 ]
Metsis, Vangelis [1 ]
机构
[1] Texas State Univ, San Marcos, TX 78666 USA
来源
17TH ACM INTERNATIONAL CONFERENCE ON PERVASIVE TECHNOLOGIES RELATED TO ASSISTIVE ENVIRONMENTS, PETRA 2024 | 2024年
关键词
Machine Learning; Neural Networks; Time-Series; Attention Mechanisms; Self Attention; Recurrent Neural Networks; Deep Learning; Human Activity Recognition; RECURRENT NEURAL-NETWORKS;
D O I
10.1145/3652037.3652049
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Time-series classification is vital in health monitoring and human activity recognition, as well as in areas such as financial forecasting, process control, and a wide array of forecasting tasks. Traditional time-series models segment data into windows and assign one label per window, often missing label transitions within those windows. This paper presents a novel many-to-many time-series model and post-processing using hybrid recurrent neural networks with attention mechanisms, which more effectively captures label transitions over traditional many-to-one models. Further, unlike typical other many-to-many models, our approach doesn't require a decoder. Instead, it employs an RNN, generating a label for every input time step. During inference, a weighted voting scheme consolidates overlapping predictions into one label per time step. Experiments show our model remains effective on time-series with sparse label shifts, but particularly excels in detecting frequent transitions. This model is ideal for tasks demanding accurate pinpointing of rapid label changes in time-series data, such as gesture recognition, making it ideal for fast-paced human activity recognition. (1)
引用
收藏
页码:265 / 272
页数:8
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