@inproceedings{SisLab4042, volume = {1178}, month = {March}, author = {Hong-Nhung Bui and Trong-Sinh Vu and Hien-Hanh Nguyen and Tri-Thanh Nguyen and Quang-Thuy Ha}, booktitle = {Intelligent Information and Database Systems}, title = {Exploiting CBOW and LSTM Models to Generate Trace Representation for Process Mining}, doi = {10.1007/978-981-15-3380-8\_4}, pages = {35--46}, year = {2020}, url = {https://eprints.uet.vnu.edu.vn/eprints/id/eprint/4042/}, abstract = {In the field of process mining, one of the challenges of the trace representation problem is to exploit a lot of potentially useful information within the traces while keeping a low dimension of the corresponding vector space. Motivated by the initial results of applying the deep neural networks for producing trace representation, in this paper, we continue to study and apply two more advanced models of deep learning, i.e., Continuous Bag of Words and Long short-term memory, for generating the trace representation. The experimental results have achieved significant improvement, i.e., not only showing the close relationship between the activities in a trace but also helping to reduce the dimension of trace representation.} }