基于蛾焰算法的基因选择与基因表达数据集分类

K. K. R., Akshay Venugopalan, Sakhil Devan
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引用次数: 0

摘要

我们收集了大量的数据来训练一个模型,这有助于机器更好地学习。不过,并非所有这些数据都适用于该模型。如果不能显著改善我们的模型,可以删除类或部分数据。如果有太多的额外数据,模型可能会运行缓慢。由于从这些不重要的数据中学习,模型也可能变得错误。特征选择通过只使用相关数据,去除不相关数据,减少模型的输入变量。使用特征选择,我们可以在很多方面改进我们的模型,包括防止过度拟合和从噪声中学习,提高准确性,减少训练时间。三种类型的特征选择方法——过滤技术、包装方法和嵌入方法——已经发展了多年。在这项研究中,我们提出了蛾焰优化方法(MFOA)算法,用于基因表达数据集的基因选择。一种基于自然灵感的种群算法被称为蛾焰优化算法(MFOA)。它从野外飞蛾的行为中获取线索。蛾焰优化算法(MFOA)收敛速度快,计算量少。
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Gene selection using Moth Flame algorithm and classification of Gene Expression Dataset
We gather enormous volumes of data to train a model, which aids a machine's ability to learn better. Not all of this data, though, will be applicable to the model. Classes or parts of the data can be removed if they don't significantly improve our model. The model may run slowly if there is too much extra data. It's also likely that the model will become erroneous as a result of learning from this unimportant data. By using only pertinent data and removing irrelevant data, feature selection reduces the input variable of the model. Using feature selection, we may improve our model in a number of ways, including preventing over-fitting and learning from noise, increasing accuracy, and cutting training time. Three types of feature selection methodologies―the filter technique, the wrapper approach, and the embedded method―have been developed throughout the years. In this study, we present the Moth Flame Optimization Method (MFOA) algorithm for gene selection from the Gene Expression dataset. A population-based algorithm with natural inspirations is called the Moth Flame Optimization Algorithm (MFOA). It takes its cues from how moths behave in the wild. The Moth Flame Optimization Algorithm (MFOA) can converge more Quickly and requires less compute than earlier methods.
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