Implementation of Naïve Bayes Method Diagnosing Diseases Nile Tilapia

Ridho Wahyudi Pulungan, Sriani Sriani, A. Armansyah
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Abstract

The Nile tilapia, also known as Oreochromis niloticus, was a freshwater fish species first produced in East Africa in 1969. It became a popular aquaculture fish in freshwater ponds across Indonesia. Besides its delicious taste, the Nile tilapia is rich in nutrients essential for human health. However, cultivating Nile tilapia was challenging due to frequent bacterial diseases. These diseases often led to mass fish deaths, causing financial losses, especially for new fish farmers. The rapid spread of diseases emphasized the need for prompt intervention to prevent further losses. Farmers needed adequate knowledge about Nile tilapia diseases, but often struggled to absorb information provided by the government. Hence, the presence of experts or veterinarians was crucial in assisting farmers to address these issues. Farmers of Nile tilapia sought assistance from experts or veterinarians, but this was not easy. It involved substantial costs and time, while quick intervention was necessary to mitigate losses. The solution proposed was the development of an expert system for diagnosing and treating Nile tilapia diseases. Thus, an expert system was built to assist fish farmers in identifying fish diseases and their treatments by implementing the naïve Bayes method. The expert system transferred human knowledge to computers, enabling them to solve problems like experts, thereby making expert knowledge accessible to non-experts. Naïve Bayes was implemented to determine the highest probability based on input symptoms. This research used five test data samples to apply the naïve Bayes method to diagnose Nile tilapia diseases, resulting in an accuracy rate of 80%. Therefore, the implementation of naïve Bayes in diagnosing Nile tilapia diseases is considered reasonably effective.
采用奈维贝叶斯方法诊断尼罗罗非鱼疾病
尼罗罗非鱼,又称尼罗罗非鱼,是淡水鱼的一种,1969 年首次在东非生产。它后来成为印度尼西亚各地淡水池塘中一种很受欢迎的水产养殖鱼类。除了味道鲜美,尼罗罗非鱼还富含对人体健康至关重要的营养物质。然而,由于细菌性疾病频发,尼罗罗非鱼的养殖面临挑战。这些疾病经常导致鱼类大量死亡,造成经济损失,尤其是对新的养鱼户而言。疾病的迅速蔓延强调了及时干预以防止进一步损失的必要性。养殖户需要对尼罗罗非鱼疾病有足够的了解,但往往难以吸收政府提供的信息。因此,专家或兽医的存在对于帮助农民解决这些问题至关重要。尼罗罗非鱼养殖户向专家或兽医寻求帮助,但这并不容易。这需要大量的成本和时间,同时必须快速干预以减少损失。提出的解决方案是开发一个诊断和治疗尼罗罗非鱼疾病的专家系统。因此,通过采用天真贝叶斯方法,建立了一个专家系统来帮助养鱼户确定鱼病及其治疗方法。专家系统将人类知识转移到计算机上,使计算机能够像专家一样解决问题,从而使非专家也能获得专家知识。该系统采用了天真贝叶斯法,根据输入的症状确定最高概率。这项研究使用了五个测试数据样本,应用奈维贝叶斯方法诊断尼罗罗非鱼疾病,结果准确率达到 80%。因此,在诊断尼罗罗非鱼疾病时采用天真贝叶斯法被认为是合理有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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