2014
DOI: 10.1016/j.procs.2014.05.284
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A SVM Stock Selection Model within PCA

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Cited by 70 publications
(25 citation statements)
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“…To capture specific features in the financial market, PCA is used to extract the low-dimensional and efficient feature information. The empirical results show that the training accuracy and efficiency have been improved [17]. Although numerous successful applications have been reported, PCA performs poorly in dealing with nonlinear processes because it characterizes only the linear correlation among variables and does not explore the nonlinear relationships.…”
Section: Introductionmentioning
confidence: 99%
“…To capture specific features in the financial market, PCA is used to extract the low-dimensional and efficient feature information. The empirical results show that the training accuracy and efficiency have been improved [17]. Although numerous successful applications have been reported, PCA performs poorly in dealing with nonlinear processes because it characterizes only the linear correlation among variables and does not explore the nonlinear relationships.…”
Section: Introductionmentioning
confidence: 99%
“…These types of methods make the assumption that 'normal' data occurs in dense neighborhoods while anomalies happen far from these. There are of course other methods which can be of some value, such as artificial neural networks [87,69], SVM [103], Bayesian Networks [45] or Decision Trees [53]. In the case of unsupervised learning methods, outliers are considered part of no cluster, while normal instances of data are part of a cluster.…”
Section: 12mentioning
confidence: 99%
“…Identifying the most important features in a particular data set can help prevent potentially large execution times of data mining algorithms as well as costly data storage and transfer operations [15]. Dimensionality reduction methodologies that are good candidates for further investigations and potentially further improvements are Principal Component Analysis [5,103], Wrapper Methods [90,40,47] and others [101,43,102]. The idiosyncrasies of each method have to be taken into consideration in order to effectively work on exascale systems.…”
Section: 12mentioning
confidence: 99%
“…Wang et al (2013) proposed fuzzy time series for stock market prediction where the data are fuzzified to the cluster centers. Yu et al (2014) suggested that the selection of the representative features in creation of the rules is the governing factor for better forecasting results. Korol (2014) designed a fuzzy logic system that creates a knowledgebase that contains fuzzy rules.…”
Section: Background and Literature Reviewmentioning
confidence: 99%