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Multi-objective Optimisation, Software Effort Estimation and Linear Models

机译:多目标优化,软件工作量估计和线性模型

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This paper examines the use of a linear model in combination with a multi-objective optimisation. A simple linear model is constructed and trained using data that has been automatically transformed based on skewness. These transformations, and their inverse, can then be used on the test data without having to make any assumptions of the underlying distribution of this data. Using nsga2, the coefficients of the linear model are optimised across a pareto front using 3 objective functions, representing 3 different error measurements. Although nsga2 produces a variety of non-dominated models across the pareto front, we show that the use of these models for creating an ensemble is inappropriate. Our main conclusion is that the use of pareto modelling for creating ensemble methods does not appear to be valuable, although there is some information that can be gained from examining the change in coefficient values of a linear model across the pareto front.
机译:本文研究了结合多目标优化使用线性模型的情况。使用基于偏度自动转换的数据构建和训练简单的线性模型。然后,可以在测试数据上使用这些转换及其逆运算,而不必对此数据的基础分布进行任何假设。使用nsga2,可使用3个目标函数(代表3个不同的误差测量值)在pareto front上优化线性模型的系数。尽管nsga2会在pareto前端生成各种非主导模型,但我们证明使用这些模型创建整体是不合适的。我们的主要结论是,尽管通过检查整个Pareto前沿的线性模型的系数值的变化可以获得一些信息,但使用pareto建模创建集成方法似乎没有什么价值。

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