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Technical analysis for algorithmic p...
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  • Technical analysis for algorithmic pattern recognition[electronic resource] /
  • 纪录类型: 书目-语言数据,印刷品 : Monograph/item
    [NT 15000414] null: 332.632042
    [NT 47271] Title/Author: Technical analysis for algorithmic pattern recognition/ by Prodromos E. Tsinaslanidis, Achilleas D. Zapranis.
    作者: Tsinaslanidis, Prodromos E.
    [NT 51406] other author: Zapranis, Achilleas D.
    出版者: Cham : : Springer International Publishing :, 2016.
    面页册数: xiii, 204 p. : : ill., digital ;; 24 cm.
    Contained By: Springer eBooks
    标题: Econometrics.
    标题: Statistics for Business/Economics/Mathematical Finance/Insurance.
    标题: Pattern Recognition.
    标题: Quantitative Finance.
    标题: Macroeconomics/Monetary Economics/Financial Economics.
    标题: Technical analysis (Investment analysis)
    标题: Pattern perception.
    标题: Finance.
    标题: Finance, general.
    ISBN: 9783319236360
    ISBN: 9783319236353
    [NT 15000228] null: Technical Analysis -- Preprocessing Procedures -- Assessing the Predictive Performance of Technical Analysis -- Horizontal Patterns -- Zigzag Patterns -- Circular Patterns -- Technical Indicators -- A Statistical Assessment -- Dynamic Time Warping for Pattern Recognition.
    [NT 15000229] null: The main purpose of this book is to resolve deficiencies and limitations that currently exist when using Technical Analysis (TA) Particularly, TA is being used either by academics as an "economic test" of the weak-form Efficient Market Hypothesis (EMH) or by practitioners as a main or supplementary tool for deriving trading signals. This book approaches TA in a systematic way utilizing all the available estimation theory and tests. This is achieved through the developing of novel rule-based pattern recognizers, and the implementation of statistical tests for assessing the importance of realized returns. More emphasis is given to technical patterns where subjectivity in their identification process is apparent. Our proposed methodology is based on the algorithmic and thus unbiased pattern recognition. The unified methodological framework presented in this book can serve as a benchmark for both future academic studies that test the null hypothesis of the weak-form EMH and for practitioners that want to embed TA within their trading/investment decision making processes.
    电子资源: http://dx.doi.org/10.1007/978-3-319-23636-0
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