Prediction method of business process remaining time based on attention bidirectional recurrent neural network

Author:

Al-Jumaily Ali Fakhri Mahdi,Al-Jumaily Abdulmajeed,Al-Jumaili Saba Jasim

Abstract

<p align="justify">Most of the existing deep learning-based business process remaining time prediction methods use traditional long-short-term memory recurrent neural networks to build prediction models. Due to the limited modeling ability of traditional long-short-term memory recurrent neural networks for sequence data, and existing methods there is still much room for improvement in the prediction effect. Aiming at the shortcomings of existing methods, this paper proposes a business process remaining time prediction method based on attention bidirectional recurrent neural network. The method uses a bidirectional recurrent neural network to model the process instance data and introduces an attention mechanism to automatically learn the weights of different events in the process instance. In addition, in order to further improve the learning effect, an iterative learning strategy is designed based on the idea of transfer learning, which builds remaining time prediction models for process instances of different lengths, which improves the pertinence of the model. The experimental results show that the proposed method has obvious advantages compared with traditional methods.</p>

Publisher

Frontier Scientific Publishing Pte Ltd

Subject

Artificial Intelligence,Computer Science Applications,Human-Computer Interaction,Computer Science (miscellaneous)

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1. Methodology for Implementing Neural Networks into the Management of Marketing Communications of Companies;2023 Intelligent Technologies and Electronic Devices in Vehicle and Road Transport Complex (TIRVED);2023-11-15

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