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Can Machine Learning Techniques Help to Improve the Common Fisheries Policy?

机译:机器学习技术可以帮助改善通用渔业政策吗?

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The overcapacity of the European fishing fleets is one of the recognized factors for the lack of success of the Common Fisheries Policy. Unwanted non-targeted species and other incidental fish likely represent one of the causes for the overexploitation of fish stocks; thus there is a clear connection between this problem and the type of fishing gear used by vessels. This paper performs an environmental impact study of the Spanish Fishing Fleet by means of ordinal classification techniques to emphasize the need to design an effective and differentiated common fish policy for "artisan fleets", that guarantees the maintenance of environmental stocks and the artesan fishing culture.
机译:欧洲捕捞能力过剩是公认的共同渔业政策缺乏成功的因素之一。有害的非目标物种和其他附带鱼类可能是鱼类种群过度开发的原因之一;因此,这个问题与船上使用的渔具的类型之间存在明显的联系。本文通过序数分类技术对西班牙渔船队进行了环境影响研究,强调有必要为“工匠船队”设计有效且有区别的共同鱼类政策,以确保维护环境种群和工匠渔船文化。

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