Structural positional encoding for knowledge integration in transformer-based medical process monitoring and trace classification

被引:0
作者
Irwin, Christopher [1 ]
Dossena, Marco [1 ]
Leonardi, Giorgio [1 ,2 ]
Montani, Stefania [1 ,2 ]
机构
[1] Univ Piemonte Orientale, DISIT Comp Sci Inst, Alessandria, Italy
[2] Azienda Osped SS Antonio & Biagio & Cesare Arrigo, Lab Integrato Intelligenza Artificiale & Informat, Alessandria, Italy
关键词
Medical process monitoring; Medical trace classification; Domain knowledge; Transformers; Graphs; Positional encoding; BUSINESS; DIMENSIONALITY;
D O I
10.1007/s13748-024-00356-7
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Predictive process monitoring is a process mining task aimed at forecasting information about a running process trace, such as the most correct next activity to be executed. In medical domains, predictive process monitoring can provide valuable decision support in atypical and nontrivial situations. On the other hand, process trace classification exploits the logged activity sequences to classify traces on the basis of some properties; in medical applications, this information can be fruitfully adopted for quality assessment and process/resource optimization. Decision support and quality assessment in medicine cannot ignore domain knowledge, in order to be grounded on all the available information (which is not limited to data) and to be really acceptable by end users. In this paper, we propose a predictive process monitoring approach relying on the use of a transformer, a deep learning architecture based on the attention mechanism. A major contribution of our work lies in the incorporation of ontological domain-specific knowledge, carried out through a graph positional encoding technique. Interestingly, the transformer-based knowledge-enhanced architecture has been adopted to cover the trace classification task as well, by incorporating the class label as the last trace activity to predict. The paper presents and discusses the encouraging experimental result we are collecting in the domain of stroke management.
引用
收藏
页数:13
相关论文
共 51 条
  • [1] Aalst W., 2016, Data Science in Action
  • [2] Optuna: A Next-generation Hyperparameter Optimization Framework
    Akiba, Takuya
    Sano, Shotaro
    Yanase, Toshihiko
    Ohta, Takeru
    Koyama, Masanori
    [J]. KDD'19: PROCEEDINGS OF THE 25TH ACM SIGKDD INTERNATIONAL CONFERENCCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2019, : 2623 - 2631
  • [3] A State-of-the-Art Survey on Deep Learning Theory and Architectures
    Alom, Md Zahangir
    Taha, Tarek M.
    Yakopcic, Chris
    Westberg, Stefan
    Sidike, Paheding
    Nasrin, Mst Shamima
    Hasan, Mahmudul
    Van Essen, Brian C.
    Awwal, Abdul A. S.
    Asari, Vijayan K.
    [J]. ELECTRONICS, 2019, 8 (03)
  • [4] Laplacian eigenmaps for dimensionality reduction and data representation
    Belkin, M
    Niyogi, P
    [J]. NEURAL COMPUTATION, 2003, 15 (06) : 1373 - 1396
  • [5] Berti A., 2019, CEUR WORKSHOP P, V2371, P87
  • [6] Trace retrieval for business process operational support
    Bottrighi, Alessio
    Canensi, Luca
    Leonardi, Giorgio
    Montani, Stefania
    Terenziani, Paolo
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2016, 55 : 212 - 221
  • [7] COMPREHENSIBLE PREDICTIVE MODELS FOR BUSINESS PROCESSES
    Breuker, Dominic
    Matzner, Martin
    Delfmann, Patrick
    Becker, Joerg
    [J]. MIS QUARTERLY, 2016, 40 (04) : 1009 - +
  • [8] Bukhsh Z. A., 2021, ProcessTransformer: Predictive Business Process Monitoring with Transformer Network
  • [9] Cabanillas C, 2014, LECT NOTES COMPUT SC, V8659, P424, DOI 10.1007/978-3-319-10172-9_31
  • [10] Learning Accurate LSTM Models of Business Processes
    Camargo, Manuel
    Dumas, Marlon
    Gonzalez-Rojas, Oscar
    [J]. BUSINESS PROCESS MANAGEMENT (BPM 2019), 2019, 11675 : 286 - 302