Title
Automatic feature engineering for prediction of dangerous seismic activities in coal mines
Abstract
In this paper we present our submission to the AAIA'16 Data Mining Challenge, where the objective was to predict dangerous seismic events based on hourly aggregated readings from different sensor and recent mining expert assessment of the conditions in the mine. During the course of the competition we have exploited a framework for automatic feature extraction from time series data that did not require any manual tuning. Furthermore, we have analyzed the impact of overlapping of input data on model robustness. We argue that training an ensemble of classifiers with distinct (i.e. non-overlapping) chronological data rather than one classifier with all available data can produce more reliable and robust prediction models. By doing that, we were able to avoid overfitting and obtain the same score performance on the evaluation and test datasets, despite the significant data drift in the datasets.
Year
DOI
Venue
2016
10.15439/2016F152
2016 Federated Conference on Computer Science and Information Systems (FedCSIS)
Keywords
Field
DocType
feature engineering,feature selection,time series classification,temporal data mining,drift detection
Time series,Data modeling,Data mining,Computer science,Feature extraction,Robustness (computer science),Feature engineering,Artificial intelligence,Overfitting,Predictive modelling,Classifier (linguistics),Machine learning
Conference
Volume
ISSN
ISBN
8
2300-5963
978-1-5090-0046-3
Citations 
PageRank 
References 
1
0.35
2
Authors
3
Name
Order
Citations
PageRank
Eftim Zdravevski15716.51
Petre Lameski26113.84
Andrea Kulakov39814.79