Top-k Self-Adaptive Contrast Sequential Pattern Mining

Y Wu, Y Wang, Y Li, X Zhu, X Wu - IEEE transactions on …, 2021 - ieeexplore.ieee.org
For sequence classification, an important issue is to find discriminative features, where
sequential pattern mining (SPM) is often used to find frequent patterns from sequences as …

NOSEP: Nonoverlapping sequence pattern mining with gap constraints

Y Wu, Y Tong, X Zhu, X Wu - IEEE transactions on cybernetics, 2017 - ieeexplore.ieee.org
Sequence pattern mining aims to discover frequent subsequences as patterns in a single
sequence or a sequence database. By combining gap constraints (or flexible wildcards) …

Random subsequence forests

Z He, J Wang, M Jiang, L Hu, Q Zou - Information Sciences, 2024 - Elsevier
The random forest classifier is widely used in different fields due to its accuracy and
robustness. Since its invention, the random forest algorithm is naturally developed for multi …

[HTML][HTML] Measuring the interestingness of temporal logic behavioral specifications in process mining

A Cecconi, G De Giacomo, C Di Ciccio, FM Maggi… - Information Systems, 2022 - Elsevier
The assessment of behavioral rules with respect to a given dataset is key in several
research areas, including declarative process mining, association rule mining, and …

Anytime discovery of a diverse set of patterns with monte carlo tree search

G Bosc, JF Boulicaut, C Raïssi, M Kaytoue - Data mining and knowledge …, 2018 - Springer
The discovery of patterns that accurately discriminate one class label from another remains
a challenging data mining task. Subgroup discovery (SD) is one of the frameworks that …

Decision tree for sequences

Z He, Z Wu, G Xu, Y Liu, Q Zou - IEEE transactions on …, 2021 - ieeexplore.ieee.org
Current decision trees such as C4. 5 and CART are widely used in different fields due to
their simplicity, accuracy and intuitive interpretation. Similar to other popular classifiers …

Sqn2vec: Learning sequence representation via sequential patterns with a gap constraint

D Nguyen, W Luo, TD Nguyen, S Venkatesh… - Machine Learning and …, 2019 - Springer
When learning sequence representations, traditional pattern-based methods often suffer
from the data sparsity and high-dimensionality problems while recent neural embedding …

Mining conditional discriminative sequential patterns

Z He, S Zhang, F Gu, J Wu - Information Sciences, 2019 - Elsevier
Discriminative sequential pattern mining is one of the most important topics in pattern
mining, which has a very wide range of applications. Discriminative sequential pattern …

Sequential pattern sampling with norm constraints

L Diop, CT Diop, A Giacometti, D Li… - 2018 IEEE International …, 2018 - ieeexplore.ieee.org
In recent years, the field of pattern mining has shifted to user-centered methods. In such a
context, it is necessary to have a tight coupling between the system and the user where …

Visual identification of oscillatory two-phase flow with complex flow patterns

Y Huang, DH Li, H Niu, D Conte - Measurement, 2021 - Elsevier
We present an approach based on computer vision and machine learning methods to
identify two-phase flow with complex flow patterns in oscillatory conditions. A visualization …