Abstract
In settings where data is recorded at a fine-granular level, it needs to be abstracted to enable process mining. While several event abstraction techniques exist, the majority are supervised and require manually labelled datasets, a process that is both time-consuming and critical for developing new methods. To streamline this process, we introduce a tool designed to facilitate the tagging of fine-granular data using predefined activities, with a specific focus on Active Window Tracking (AWT) data. The tool offers features such as data visualization, filtering, and automatic classification based on GPT, which can be adjusted by the user. Our evaluation, involving four researchers tagging their AWT data, demonstrates that increased experience with the tool leads to faster tagging, and we discuss potential future enhancements.
Original language | English |
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Journal | CEUR Workshop Proceedings |
Volume | 3783 |
Publication status | Published - 15 Oct 2024 |
Event | Doctoral Consortium and Demo Track 2024 at the International Conference on Process Mining, ICPM-D 2024 - Copenhagen, Denmark Duration: 15 Oct 2024 → … |
Keywords
- active window tracking
- event abstraction
- process mining
- task classification