Using deep learning techniques for solving AI planning problems specified through graph transformations

被引:0
作者
Einollah Pira
机构
[1] Azarbaijan Shahid Madani University,Faculty of Information Technology and Computer Engineering
来源
Soft Computing | 2022年 / 26卷
关键词
Deep learning; Neural network; AI planning; Graph transformation system; Reduction;
D O I
暂无
中图分类号
学科分类号
摘要
Deep learning (DL) is a branch of machine learning that uses deep neural networks (DNNs) to extract knowledge from raw data. DL techniques have been used successfully in many intelligence domains, such as general approximation, computer vision, pattern recognition, and many more. Planning problems with small search space can be solved by exhaustive exploration of the search space, whereas the big search space of some problems exposes the search space explosion due to computational limitations. This subject motivates us to propose an approach using DL techniques for solving such planning problems. The proposed approach tries to learn the knowledge about the application order of actions, before solving the given (main) planning problem. Actually, it reduces the size of the given planning problem such that it can be solved by exhaustive exploration of the search space. After solving the reduced problem successfully, a DNN is learned from the explored search space. The proposed approach then employs the learned DNN to solve the given planning problem. The proposed approach deals with the planning problems specified through graph transformations language because of its superiorities compared to planning domain definition languages. The main contribution of the proposed approach is that it uses DL techniques, for the first time, to solve planning problems specified through graph transformations. Based on experimental results, the proposed approach outperforms state-of-the-art techniques in terms of execution speed, accuracy, and generating short-length plans with the exploration of lower states.
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页码:12217 / 12234
页数:17
相关论文
共 59 条
[1]  
Anthony T(2017)Thinking fast and slow with deep learning and tree search Adv Neural Inf Process Syst 30 5360-5370
[2]  
Tian Z(2012)Multi-column deep neural networks for image classification IEEE Conf Comput vis Pattern Recognit 2012 3642-3649
[3]  
Barber D(2014)Deep learning: methods and applications Found Trends Signal Process 7 197-387
[4]  
Ciregan D(2001)The FF planning system: fast plan generation through heuristic search J Artif Intell Res 14 253-302
[5]  
Meier U(2018)Large earthquake magnitude prediction in Taiwan based on deep learning neural network Neural Netw World 28 149-160
[6]  
Schmidhuber J(2010)Data clustering: 50 years beyond K-means Pattern Recogn Lett 31 651-666
[7]  
Deng L(2011)Comprehensive review of neural network-based prediction intervals and new advances IEEE Trans Neural Netw 22 1341-1356
[8]  
Yu D(2017)LinGraph: a graph-based automated planner for concurrent task planning based on linear logic Appl Intell 47 914-934
[9]  
Hoffmann J(2007)Supervised machine learning: a review of classification techniques Emerg Artif Intell Appl Comput Eng 160 3-24
[10]  
Nebel B(2020)Stock market forecasting using deep learning and technical analysis: a systematic review IEEE Access 8 185232-185242