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Titlebook: Classification and Data Mining; Antonio Giusti,Gunter Ritter,Maurizio Vichi Conference proceedings 2013 Springer-Verlag Berlin Heidelberg

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Summarizing and Detecting Structural Drifts from Multiple Data Streamslving, thus mining changes in data is a challenging task. In this paper we will deal with the structural drift detection problem where the aim is to discover and to describe changes in proximity relations among multiple data streams. We will introduce a new strategy whose effectiveness is shown through an application on simulated data.
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Joint Correspondence Analysis Versus Multiple Correspondence Analysis: A Solution to an Undetected Pway tables. It results that .’s reduced-dimensional reconstruction is much better than the .’s one, that reveals highly biased and non-monotone, but also than the .’s re-evaluation, as suggested by Greenacre (Multiple correspondence analysis and related methods, Chapman and Hall (Kluwer), Dordrecht,
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RFID V. Privacy Risks and Solutionsway tables. It results that .’s reduced-dimensional reconstruction is much better than the .’s one, that reveals highly biased and non-monotone, but also than the .’s re-evaluation, as suggested by Greenacre (Multiple correspondence analysis and related methods, Chapman and Hall (Kluwer), Dordrecht,
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Classification and Data Mining978-3-642-28894-4Series ISSN 1431-8814 Series E-ISSN 2198-3321
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Yimeei Guo,Weiwei Hu,Zhengzheng Fangems, there is even a goal conflict between consistency and robustness. This particularly applies to certain nonparametric statistical problems such as nonparametric classification and regression problems which are often ill-posed. As an example in statistical machine learning, support vector machines are considered.
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