Abstract

During the operation of modern technical systems, the use of the LSTM model for the prediction of process variable values and system states is commonly widespread. The goal of this paper is to expand the application of the LSTM-based models upon obtaining information based on prediction. In this method, by predicting transition probabilities, the output layer is interpreted as a probability model by creating a prediction tree of sequences instead of just a single sequence. By further analyzing the prediction tree, we can take risk considerations into account, extract more complex prediction, and analyze what event trees are yielded from different input sequences, that is, with a given state or input sequence, the upcoming events and the probability of their occurrence are considered. In the case of online application, by utilizing a series of input events and the probability trees, it is possible to predetermine subsequent event sequences. The applicability and performance of the approach are demonstrated via a dataset in which the occurrence of events is predetermined, and further datasets are generated with a higher-order decision tree-based model. The case studies simply and effectively validate the performance of the created tool as the structure of the generated tree, and the determined probabilities reflect the original dataset.

Highlights

  • Nowadays, uncovering possible frequent event sequence scenarios has been a critical task across many disciplines

  • By using frequent pattern mining algorithms on event logs, we are able to identify sequences that can lead to given system states. is particular method has already proved its capability across numerous applications and industries

  • The previously defined task will be explained in detail. e definition will be given to an event sequence and how its probability is calculated. e peculiarity of the seq2probTree method is explained, creating a whole sequence tree instead of only predicting the most likely scenario

Read more

Summary

Introduction

Nowadays, uncovering possible frequent event sequence scenarios has been a critical task across many disciplines. By using frequent pattern mining algorithms on event logs, we are able to identify sequences that can lead to given system states. Taub et al use sequence mining to distinguish efficient and nonefficient action patterns among their subjects in a gamebased learning environment [3]. A similar frequent pattern identification method was used to give insight into successful learning patterns using Betty’s brain computer-based learning environment [4]. A new framework called malicious sequential pattern-based malware detection was developed by using a novel sequential pattern mining algorithm (MSPE) to recognize new, unseen malicious executables in computer systems [7]. Sequential pattern mining has been used for event prediction in numerous applications [9, 10]

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call