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<bibitem type="B">   <ARLID>0477300</ARLID> <utime>20240111140944.5</utime><mtime>20170828235959.9</mtime>    <ISBN>978-3-319-64670-1</ISBN>  <WOS>000446970800007</WOS>  <DOI>10.1007/978-3-319-64671-8</DOI>           <title language="eng" primary="1">Algorithms and Programs of Dynamic Mixture Estimation. Unified Approach to Different Types of Components</title>  <publisher> <place>Cham</place> <name>Springer</name> <pub_time>2017</pub_time> </publisher> <specification> <page_count>113 s.</page_count> <media_type>P</media_type> </specification> <edition> <name>SpringerBriefs in Statistics</name> </edition>    <keyword>dynamic mixture</keyword>   <keyword>recursive mixture estimation</keyword>   <keyword>algorithms and programs</keyword>    <author primary="1"> <ARLID>cav_un_auth*0101167</ARLID> <name1>Nagy</name1> <name2>Ivan</name2> <institution>UTIA-B</institution> <full_dept language="cz">Zpracování signálů</full_dept> <full_dept language="eng">Department of Signal Processing</full_dept> <department language="cz">ZS</department> <department language="eng">ZS</department> <full_dept>Department of Signal Processing</full_dept> <fullinstit>Ústav teorie informace a automatizace AV ČR, v. v. i.</fullinstit> </author> <author primary="0"> <ARLID>cav_un_auth*0108105</ARLID> <name1>Suzdaleva</name1> <name2>Evgenia</name2> <institution>UTIA-B</institution> <full_dept language="cz">Zpracování signálů</full_dept> <full_dept>Department of Signal Processing</full_dept> <department language="cz">ZS</department> <department>ZS</department> <full_dept>Department of Signal Processing</full_dept> <country>RU</country> <fullinstit>Ústav teorie informace a automatizace AV ČR, v. v. i.</fullinstit> </author>   <source> <source_type>pdf</source_type> <url>https://link.springer.com/book/10.1007/978-3-319-64671-8</url> </source>        <cas_special> <project> <ARLID>cav_un_auth*0321440</ARLID> <project_id>GA15-03564S</project_id> <agency>GA ČR</agency> </project>  <abstract language="eng" primary="1">This book provides a general theoretical background for constructing the recursive Bayesian estimation algorithms for mixture models. It collects the recursive algorithms for estimating dynamic mixtures of various distributions and brings them in the unified form, providing a scheme for constructing the estimation algorithm for a mixture of components modeled by distributions with reproducible statistics. It offers the recursive estimation of dynamic mixtures, which are free of iterative processes and close to analytical solutions as much as possible. In addition, these methods can be used online and simultaneously perform learning, which improves their efficiency during estimation. The book includes detailed program codes for solving the presented theoretical tasks. Codes are implemented in the open source platform for engineering computations. The program codes given serve to illustrate the theory and demonstrate the work of the included algorithms.</abstract>     <RIV>BB</RIV> <FORD0>10000</FORD0> <FORD1>10100</FORD1> <FORD2>10103</FORD2>    <reportyear>2018</reportyear>      <num_of_auth>2</num_of_auth>  <unknown tag="mrcbC52"> 4 A hod 4ah 20231122142612.3 </unknown> <inst_support> RVO:67985556 </inst_support>  <permalink>http://hdl.handle.net/11104/0274040</permalink>  <unknown tag="mrcbC64"> 1 Department of Signal Processing UTIA-B 10103 STATISTICS &amp; PROBABILITY </unknown>  <confidential>S</confidential>  <unknown tag="mrcbC83"> RIV/67985556:_____/17:00477300!RIV18-AV0-67985556 191975678 Doplnění UT WOS </unknown> <unknown tag="mrcbC83"> RIV/67985556:_____/17:00477300!RIV18-GA0-67985556 191965022 Doplnění UT WOS </unknown> <unknown tag="mrcbC86"> 3+4 Article Statistics Probability  </unknown> <unknown tag="mrcbC86"> 3+4 Article Statistics Probability  </unknown> <unknown tag="mrcbC86"> 3+4 Article Statistics Probability  </unknown>       <arlyear>2017</arlyear>    <unknown tag="mrcbTft">  Soubory v repozitáři: nagy-0477300.pdf </unknown>    <unknown tag="mrcbU10"> 2017 </unknown> <unknown tag="mrcbU10"> Cham Springer </unknown> <unknown tag="mrcbU12"> 978-3-319-64670-1 </unknown> <unknown tag="mrcbU14"> SCOPUS </unknown> <unknown tag="mrcbU24"> PUBMED </unknown> <unknown tag="mrcbU34"> 000446970800007 WOS </unknown> <unknown tag="mrcbU56"> pdf </unknown> </cas_special> </bibitem>