Correlation of environmental variables with Heteromastus filiformis habitat density: Gap-filling and machine learning approaches
Mehdi Yousefzadeh, Taewoo Kim, Soonwoo Lee, Sina Ghafouri, Ali Abdolahzadeh Ziabari, Seong-Su Kim, Young Eun Kim, Seong-Eun Kim, Soonyoung Wang, Kyuhee Son, Jong Seong Khim, Gap Soo Chang,
Correlation of environmental variables with Heteromastus filiformis habitat density: Gap-filling and machine learning approaches,
Regional Studies in Marine Science,
Volume 91,
2025,
104537,
ISSN 2352-4855,
https://doi.org/10.1016/j.rsma.2025.104537.
(https://www.sciencedirect.com/science/article/pii/S2352485525005286)
Abstract: Benthic invertebrates have been used as ecological indicators to assess marine ecosystem health. However, the intricate interactions between these organisms and their environment complicate detailed analyses of the effects of environmental disturbance events. This study investigates the impact of various environmental variables on the habitat density distribution of Heteromastus filiformis using gap-filling and machine learning approaches. Data collected from the Korea Strait, Yellow Sea, and East Sea were analyzed to forecast habitat density using various machine learning models combined with different gap-filling methods and feature selection. The results show that the artificial neural network model with a multilayer perceptron architecture outperforms others, achieving a weighted mean absolute error of 0.865 and a weighted accuracy of 0.631 in predicting Heteromastus filiformis habitat density when combined with station-wise correlated feature gap-filling method and the selection of 16 environmental features. The model also forecasts that simultaneous increases in ocean salinity and water depth will have the most detrimental impact on its habitat density compared to other environmental features. This study demonstrates the feasibility and effectiveness of machine learning techniques in bridging data gaps and enhancing the understanding of influential factors in benthic marine ecosystems.
Keywords: Heteromastus filiformis; Benthic Fauna; Habitat Density; Marine Ecosystem; Gap-filling; Machine Learning