000 | 03662nam a22004575i 4500 | ||
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001 | 978-3-319-02738-8 | ||
003 | DE-He213 | ||
005 | 20200421111650.0 | ||
007 | cr nn 008mamaa | ||
008 | 131106s2014 gw | s |||| 0|eng d | ||
020 |
_a9783319027388 _9978-3-319-02738-8 |
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024 | 7 |
_a10.1007/978-3-319-02738-8 _2doi |
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072 | 7 |
_aUYQ _2bicssc |
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_aCOM004000 _2bisacsh |
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_a006.3 _223 |
245 | 1 | 0 |
_aEducational Data Mining _h[electronic resource] : _bApplications and Trends / _cedited by Alejandro Pe�na-Ayala. |
264 | 1 |
_aCham : _bSpringer International Publishing : _bImprint: Springer, _c2014. |
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300 |
_aXVIII, 468 p. 139 illus. _bonline resource. |
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336 |
_atext _btxt _2rdacontent |
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337 |
_acomputer _bc _2rdamedia |
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338 |
_aonline resource _bcr _2rdacarrier |
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347 |
_atext file _bPDF _2rda |
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490 | 1 |
_aStudies in Computational Intelligence, _x1860-949X ; _v524 |
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520 | _aThis book is devoted to the Educational Data Mining arena. It highlights works that show relevant proposals, developments, and achievements that shape trends and inspire future research.  After a rigorous revision process sixteen manuscripts were accepted and organized into four parts as follows: �     Profile: The first part embraces three chapters oriented to: 1) describe the nature of educational data mining (EDM); 2) describe how to pre-process raw data to facilitate data mining (DM); 3) explain how EDM supports government policies to enhance education. �     Student modeling: The second part contains five chapters concerned with: 4) explore the factors having an impact on the students academic success; 5) detect student's personality and behaviors in an educational game; 6) predict students performance to adjust content and strategies; 7) identify students who will most benefit from tutor support; 8) hypothesize the student answer correctness based on eye metrics and mouse click. �     Assessment: The third part has four chapters related to: 9) analyze the coherence of student research proposals; 10) automatically generate tests based on competences; 11) recognize students activities and visualize these activities for being presented to teachers; 12) find the most dependent test items in students response data. �     Trends: The fourth part encompasses four chapters about how to: 13) mine text for assessing students productions and supporting teachers; 14) scan student comments by statistical and text mining techniques; 15) sketch a social network analysis (SNA) to discover student behavior profiles and depict models about their collaboration; 16) evaluate the structure of interactions between the students in social networks. This volume will be a source of interest to researchers, practitioners, professors, and postgraduate students aimed at updating their knowledge and find targets for future work in the field of educational data mining. | ||
650 | 0 | _aEngineering. | |
650 | 0 | _aArtificial intelligence. | |
650 | 0 | _aComputational intelligence. | |
650 | 1 | 4 | _aEngineering. |
650 | 2 | 4 | _aComputational Intelligence. |
650 | 2 | 4 | _aArtificial Intelligence (incl. Robotics). |
700 | 1 |
_aPe�na-Ayala, Alejandro. _eeditor. |
|
710 | 2 | _aSpringerLink (Online service) | |
773 | 0 | _tSpringer eBooks | |
776 | 0 | 8 |
_iPrinted edition: _z9783319027371 |
830 | 0 |
_aStudies in Computational Intelligence, _x1860-949X ; _v524 |
|
856 | 4 | 0 | _uhttp://dx.doi.org/10.1007/978-3-319-02738-8 |
912 | _aZDB-2-ENG | ||
942 | _cEBK | ||
999 |
_c54356 _d54356 |