04497nam 22007094a 450 991078003990332120200520144314.01-280-20603-997866102060320-306-47018-710.1007/b116453(CKB)111056486607662(EBL)3035690(SSID)ssj0000135022(PQKBManifestationID)11143483(PQKBTitleCode)TC0000135022(PQKBWorkID)10057692(PQKB)10720684(DE-He213)978-0-306-47018-9(MiAaPQ)EBC3035690(MiAaPQ)EBC196911(Au-PeEL)EBL3035690(CaPaEBR)ebr10053006(CaONFJC)MIL20603(OCoLC)559414525(Au-PeEL)EBL196911(PPN)237929457(EXLCZ)9911105648660766220000207d2000 uy 0engur|n|---|||||txtccrData mining in finance[electronic resource] advances in relational and hybrid methods /by Boris Kovalerchuk and Evgenii Vityaev1st ed. 2000.Boston Kluwer Academic Publishers ;Norwell, Mass Distributors for North, Central, and South America, Kluwer Academic Publishersc20001 online resource (325 p.)The Kluwer international series in engineering and computer science ;SECS 547Description based upon print version of record.0-7923-7804-0 Includes bibliographical references and index.Includes bibliographical references (p. [285]-298) and index.The scope and methods of the study -- Numerical Data Mining Models and Financial Applications -- Rule-Based and Hybrid Financial Data Mining -- Relational Data Mining (RDM) -- Financial Applications of Relational Data Mining -- Comparison of Performance of RDM and other methods in financial applications -- Fuzzy logic approach and its financial applications.Data Mining in Finance presents a comprehensive overview of major algorithmic approaches to predictive data mining, including statistical, neural networks, ruled-based, decision-tree, and fuzzy-logic methods, and then examines the suitability of these approaches to financial data mining. The book focuses specifically on relational data mining (RDM), which is a learning method able to learn more expressive rules than other symbolic approaches. RDM is thus better suited for financial mining, because it is able to make greater use of underlying domain knowledge. Relational data mining also has a better ability to explain the discovered rules - an ability critical for avoiding spurious patterns which inevitably arise when the number of variables examined is very large. The earlier algorithms for relational data mining, also known as inductive logic programming (ILP), suffer from a relative computational inefficiency and have rather limited tools for processing numerical data. Data Mining in Finance introduces a new approach, combining relational data mining with the analysis of statistical significance of discovered rules. This reduces the search space and speeds up the algorithms. The book also presents interactive and fuzzy-logic tools for `mining' the knowledge from the experts, further reducing the search space. Data Mining in Finance contains a number of practical examples of forecasting S&P 500, exchange rates, stock directions, and rating stocks for portfolio, allowing interested readers to start building their own models. This book is an excellent reference for researchers and professionals in the fields of artificial intelligence, machine learning, data mining, knowledge discovery, and applied mathematics.Kluwer international series in engineering and computer science ;SECS 547.InvestmentsData processingStock price forecastingData processingData miningInvestmentsData processing.Stock price forecastingData processing.Data mining.332.1/0285/63Kovalerchuk Boris846538Vityaev Evgenii1569404MiAaPQMiAaPQMiAaPQBOOK9910780039903321Data mining in finance3842322UNINA