2016
DOI: 10.1007/s12562-016-0968-x
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Population structure of Japanese Spanish mackerel Scomberomorus niphonius in the Bohai Sea, the Yellow Sea and the East China Sea: evidence from random forests based on otolith features

Abstract: demographic properties, life history pattern and response to exploitation. Ignoring underlying spatial stock structure in a fishery management system can increase risk of local depletion, resulting in loss of genetic diversity [1][2][3]. Therefore, a thorough understanding of stock structure is the starting point of effective management in multi-stock fisheries [4,5].Otolith shape is subjected to a combination of genetic and environment effects and demonstrates stock-specific features [6]. It has also been dee… Show more

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Cited by 35 publications
(30 citation statements)
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“…Rooker et al 2008bRooker et al , 2016Wells et al 2012;Macdonald et al 2013). However, in recent years, machine learning techniques have emerged as promising classification tools in otolith-related studies (Zhang et al 2016;Tournois et al 2017;Bouchoucha et al 2018). The accuracy of each technique will depend on the nature of the data analysed, and the results of this study agree with those of recent studies encouraging the use of machine learning methods when otolith chemical data are not multivariate normal or exhibit skewed distributions (Mercier et al 2011;Jones et al 2017).…”
Section: Comparison Of Classification Methodssupporting
confidence: 79%
“…Rooker et al 2008bRooker et al , 2016Wells et al 2012;Macdonald et al 2013). However, in recent years, machine learning techniques have emerged as promising classification tools in otolith-related studies (Zhang et al 2016;Tournois et al 2017;Bouchoucha et al 2018). The accuracy of each technique will depend on the nature of the data analysed, and the results of this study agree with those of recent studies encouraging the use of machine learning methods when otolith chemical data are not multivariate normal or exhibit skewed distributions (Mercier et al 2011;Jones et al 2017).…”
Section: Comparison Of Classification Methodssupporting
confidence: 79%
“…S1 and S2 1 ). Following Mercier et al (2011) and Zhang et al (2016), a fourfold cross-validation resampling method was used to provide the data for the assessment of the performance of each classifier. This validation method is advised as a reasonably stable and low biased measure of model performance (Hastie et al 2009), but typically indicates lower accuracy of the evaluated algorithms than most often applied leave-one-out cross-validation.…”
Section: Discussionmentioning
confidence: 99%
“…Studies that applied only DA constituted ϳ92%, while one study (<1%) used DA and RF in parallel (Jones and Checkley 2017). The remaining ϳ7% of the publications applied classifiers other than DA to assign samples to their respective class (e.g., SVM or KNN classifier (Reig-Bolaño et al 2010b;Benzinou et al 2013), boundary-based shape classification (Nasreddine et al 2009), between-class correspondence analysis (Ponton 2006), or RF (e.g., Zhang et al 2016)).…”
Section: Literature Review Of the Use Of Statistical Classifiersmentioning
confidence: 99%
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