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Use of different approaches to model catch per unit effort (CPUE) abundance of fish

机译:使用不同的方法来模拟鱼类每单位工作量(CPUE)的捕获量

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摘要

Fish catch rates are expressed as Catch Per Unit Effort (CPUE) which is a performance index representing the success of fishing from commercial fishery statistics. A three-way comparison of prediction accuracy involving Logistic Regression(LR), Multi-Layer Perceptron (MLP) Neural Networks(NNs) and Classification And Regression Tree (CART) models was performed using a binary dependent variable (CPUE abundance as low or high) and a set of continuous and categorical predictor variables describing seasons, latitude, longitude, gear type, fishing hours and chlorophyll-a concentration. A dataset on CPUE abundance of the Gujarat coastal region during December 2007 to December 2009 was obtained. Overall accuracy (Correct Classification Rate) from NNs and CART models on training were 0.75 and 0.75, respectively and on test data they were 0.73 and 0.67, respectively while by LR they were 0.68 and 0.56 on training and test data, respectively. Present study infers that neither NNs nor CART model showed clear advantage of one over the other. This case study supports the need to test CPUE abundance models with independent data, and to use a range of criteria in assessing model performance. However, the preliminary CPUE Prediction requires multi or related variables in spatio-temporal mode for better CPUE predictions.
机译:鱼的捕获率表示为每单位工作量的捕获量(CPUE),这是一种性能指数,代表商业渔业统计数据显示的捕捞成功率。使用二进制因变量(CPUE丰度为低或高)对包含Logistic回归(LR),多层感知器(MLP)神经网络(NNs)和分类与回归树(CART)模型的预测准确性进行了三项比较。 )和一组连续的和分类的预测变量,它们描述了季节,纬度,经度,渔具类型,捕鱼时间和叶绿素a浓度。获得了古吉拉特邦沿海地区2007年12月至2009年12月CPUE丰度的数据集。 NNs和CART模型在训练上的总体准确度(正确分类率)分别为0.75和0.75,在测试数据上的总体准确度分别为0.73和0.67,而通过LR,在训练和测试数据上的总体准确度分别为0.68和0.56。目前的研究推断,NN和CART模型都没有显示出明显的优势。本案例研究支持需要使用独立数据测试CPUE丰度模型,并需要使用一系列标准来评估模型性能。但是,初步的CPUE预测需要时空模式下的多个或相关变量,以实现更好的CPUE预测。

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