Item Infomation


Title: Generating Artificial Data for Empirical Analysis of Control-flow Discovery Algorithms
Authors: Jouck, Toon
Participants: Depaire, Benoı ˆ t
Issue Date: 2019
Publisher: Springer Nature
Series/Report no.: Business & Information Systems Engineering, (2019), Volume 61, pages 695–712
Abstract: Within the process mining domain, research on comparing control-flow (CF) discovery techniques has gained importance. A crucial building block of empirical analysis of CF discovery techniques is obtaining the appropriate evaluation data. Currently, there is no answer to the question of how to collect such evaluation data. The paper introduces a methodology for generating artificial event data (GED) and an implementation called the Process Tree and Log Generator. The GED methodology and its implementation provide users with full control over the characteristics of the generated event data and an integration within the ProM framework. Unlike existing approaches, there is no tradeoff between including long-term dependencies and soundness of the process. The contributions of the paper provide a solution for a necessary step in the empirical analysis of CF discovery algorithms.
URI: http://tailieuso.tlu.edu.vn/handle/DHTL/9662
Source: https://doi.org/10.1007/s12599-018-0541-5
Appears in Collections:Tài liệu hỗ trợ nghiên cứu khoa học
ABSTRACTS VIEWS

9

VIEWS & DOWNLOAD

4

Files in This Item:
Thumbnail
  • D9662.pdf
      Restricted Access
    • Size : 1,23 MB

    • Format : Adobe PDF

  • Bạn đọc là cán bộ, giáo viên, sinh viên của Trường Đại học Thuỷ Lợi cần đăng nhập để Xem trực tuyến/Tải về



    Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.