Earthquake probability prediction with decision tree algorithm: The example of İzmir, Türkiye
Özet
This study investigates earthquake records in the Izmir province of western Türkiye, focusing on seismic
activity prediction through the application of decision tree models. Utilizing earthquake data from 1900 to
2024, including magnitude, depth, latitude, and longitude variables, the aim is to estimate future seismic events
in a region known for its significant earthquake risks. The decision tree model, a machine learning approach,
was trained with 80% of the dataset and tested on the remaining 20%. Performance was assessed using metrics
such as precision, recall, F1 score, and overall accuracy, with the model achieving an accuracy rate of 92%.
However, its ability to predict larger earthquakes was hindered due to the limited availability of data for highermagnitude events. A chi-square test demonstrated a statistically significant relationship between earthquake
depth and magnitude. Additionally, a risk analysis map was created using Geographic Information Systems
(GIS), highlighting fault lines and areas prone to frequent seismic activity. The study concludes that while the
decision tree model is effective for predicting smaller earthquakes, the accuracy for larger events could be
improved with more comprehensive data. These findings underscore the importance of targeted earthquake
preparedness in Izmir, particularly in coastal areas susceptible to both seismic events and secondary hazards
like tsunamis