Understanding the pattern of the BSE Sensex
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Understanding the pattern of the BSE Sensex

机译:了解BSE Sensex的模式

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Abstract An attempt is made to understand the pattern of behaviour of the BSE Sensex by analysing the tick-by-tick Sensex data for the years 2006 to 2012 on yearly as well as cumulative basis using Principal Component Analysis (PCA) and its nonlinear variant Kernel Principal Component Analysis (KPCA). The latter technique ensures that the nonlinear character of the interactions present in the system gets captured in the analysis. The analysis is carried out by constructing vector spaces of varying dimensions. The size of the data set ranges from a minimum of 360,000 for one year to a maximum of 2,520,000 for seven years. In all cases the prices appear to be highly correlated and restricted to a very low dimensional subspace of the original vector space. An external perturbation is added to the system in the form of noise. It is observed that while standard PCA is unable to distinguish the behaviour of the noise-mixed data from that of the original, KPCA clearly identifies the effect of the noise. The exercise is extended in case of daily data of other stock markets and similar results are obtained. Highlights ?
机译:<![cdata [ 抽象 尝试通过分析滴答声Sensex来了解BSE Sensex的行为模式使用主成分分析(PCA)及其非线性变体内核主成分分析(KPCA)2006年至2012年2006年至2012年的数据及其非线性变体核。后一种技术确保在分析中捕获系统中存在的交互的非线性特征。通过构造不同尺寸的矢量空间来执行分析。数据集的大小范围从最低360,000左右到最高2,520,000七年。在所有情况下,价格似乎高度相关性,并限制在原始矢量空间的非常低维子空间。外部扰动以噪声形式添加到系统中。观察到,虽然标准PCA无法将噪声混合数据的行为与原始的噪声混合数据的行为区分开来,但KPCA清楚地识别了噪声的效果。在日常数据的情况下,在其他股票市场数据的情况下延长,并且获得了类似的结果。 亮点

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