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Combining Piecewise Linear Regression and a Granular Computing Framework for Financial Time Series Classification

机译:结合分段线性回归和用于金融时序分类的粒度计算框架

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Finance is a very broad field where the uncertainty plays a central role and every financial operator have to deal with it. In this paper we propose a new method for a trend prediction on financial time series combining a Linear Piecewise Regression with a granular computing framework. A set of parameters control the behavior of the whole system, thus making their fine tuning a critical optimization task. To this aim in this paper we employ an evolutionary optimization algorithm to tackle this crucial phase. We tested our system on both synthetic benchmarking data and on real financial time series. Our tests show very good classification results on benchmarking data. Results on real data, although not completely satisfactory, are encouraging, suggesting further developments.
机译:金融是一个非常广泛的领域,不确定性起着核心作用,每一个金融运营商都必须处理它。在本文中,我们提出了一种新的方法,用于与粒度计算框架结合线性分段回归的金融时序序列的趋势预测。一组参数控制整个系统的行为,从而使其精细调整关键优化任务。在本文中,我们采用了一种进化优化算法来解决这个关键阶段。我们在合成基准数据和真正的金融时间序列上测试了我们的系统。我们的测试显示了基准数据的非常好的分类结果。结果实际数据,虽然没有完全令人满意,令人鼓舞,暗示进一步发展。

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