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Disentangling the complexity of tropical small-scale fisheries dynamics using supervised Self-Organizing Maps

机译:使用有监督的自组织图解开热带小型渔业动态的复杂性

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摘要

Tropical small-scale fisheries are typical for providing complex multivariate data, due to their diversity in fishing techniques and highly diverse species composition. In this paper we used for the first time a supervised Self-Organizing Map (xyf-SOM), to recognize and understand the internal heterogeneity of a tropical marine small-scale fishery, using as model the fishery fleet of San Pedro port, Tabasco, Mexico. We used multivariate data from commercial logbooks, including the following four factors: fish species (47), gear types (bottom longline, vertical line+shark longline and vertical line), season (cold, warm), and inter-annual variation (2007–2012). The size of the xyf-SOM, a fundamental characteristic to improve its predictive quality, was optimized for the minimum distance between objects and the maximum prediction rate. The xyf-SOM successfully classified individual fishing trips in relation to the four factors included in the model. Prediction percentages were high (80–100%) for bottom longline and vertical line + shark longline, but lower prediction values were obtained for vertical line (51–74%) fishery. A confusion matrix indicated that classification errors occurred within the same fishing gear. Prediction rates were validated by generating confidence interval using bootstrap. The xyf-SOM showed that not all the fishing trips were targeting the most abundant species and the catch rates were not symmetrically distributed around the mean. Also, the species composition is not homogeneous among fishing trips. Despite the complexity of the data, the xyf-SOM proved to be an excellent tool to identify trends in complex scenarios, emphasizing the diverse and complex patterns that characterize tropical small scale-fishery fleets.
机译:由于热带小规模渔业在捕鱼技术上的多样性以及物种组成的高度多样性,因此典型地可提供复杂的多元数据。在本文中,我们首次使用监督型自组织图(xyf-SOM),以塔巴斯科州圣佩德罗港的渔业船队为模型,识别并了解了热带海洋小型渔业的内部异质性。墨西哥。我们使用了商业日志中的多元数据,包括以下四个因素:鱼类种类(47),渔具类型(底延线,垂直线+鲨鱼延线和垂直线),季节(冷,暖)和年际变化(2007年) –2012年)。 xyf-SOM的大小是提高其预测质量的基本特征,针对对象之间的最小距离和最大预测率进行了优化。 xyf-SOM成功地根据模型中包含的四个因素对个人捕鱼行程进行了分类。底延绳钓和垂线+鲨鱼延绳钓的预测百分比很高(80–100%),但垂线渔业(51–74%)的预测值较低。混淆矩阵表明在同一渔具内发生了分类错误。通过使用引导程序生成置信区间来验证预测率。 xyf-SOM表明,并非所有的捕捞行程都针对最丰富的物种,而且捕捞率在均值附近并非对称分布。而且,在钓鱼旅行中物种组成也不均匀。尽管数据复杂,但xyf-SOM被证明是识别复杂情景中趋势的极佳工具,强调了热带小型渔业船队的多样性和复杂模式。

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