Early classification of time series has been extensively studied for minimizing class prediction delay in time-sensitive applications such as medical diagnostic and industrial …
The problem of early classification of time series appears naturally in contexts where the data, of temporal nature, are collected over time, and early class predictions are interesting …
P Schäfer, U Leser - Data mining and knowledge discovery, 2020 - Springer
Early time series classification (eTSC) is the problem of classifying a time series after as few measurements as possible with the highest possible accuracy. The most critical issue of any …
The goal of early classification of time series is to predict the class value of a sequence early in time, when its full length is not yet available. This problem arises naturally in many …
W Yan, G Li, Z Wu, S Wang, PS Yu - World Wide Web, 2020 - Springer
In recent years, early classification on time series has become increasingly important in time- sensitive applications. Existing shapelet based methods still cannot work well on this …
Classification of time series as early as possible is a valuable goal. Indeed, in many application domains, the earliest the decision, the more rewarding it can be. Yet, often …
Early classification of time series is the prediction of the class label of a time series before it is observed in its entirety. In time-sensitive domains where information is collected over time …
Early classification algorithms help users react faster to their machine learning model's predictions. Early warning systems in hospitals, for example, let clinicians improve their …
In early classification of time series the objective is to build models which are able to make class-predictions for time series as accurately and as early as possible, when only a part of …