000 | 03763nam a2200505Ia 4500 | ||
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001 | 2336 | ||
008 | 230305s2017 xx 000 0 und d | ||
020 | _a9783319065199 | ||
041 | _aeng | ||
245 | 0 | _aBig Data and Learning Analytics in Higher Education Current Theory and Practice | |
260 |
_a _bSpringer, _c2017 |
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300 | _axx, 272 pages : llustrations (some color) ; 24 cm | ||
500 | _acurrent theory and practice | ||
505 |
_aChapter 1: Overview of Big Data and Analytics in Higher Education _rChapter 2: Thoughts on Recent Trends and Future Research Perspectives in Big Data and Analytics in Higher Education-- _rChapter 3: Big Data in Higher Education: The Big Picture-- _rChapter 4: Preparing the Next Generation of Education Researchers for Big Data in Higher Education-- _rChapter 5: Managing the Embedded Digital Ecosystems (EDE) Using Big Data Paradigm-- _rChapter 6: The Contemporary Research University and the Contest for Deliberative Space-- _rPart II: LEARNING ANALYTICS-- _rChapter 7: Ethical Considerations in Adopting a University- and System-Wide Approach to Data and Learning Analytics-- _rChapter 8: Big Data, Higher Education and Learning Analytics: Beyond Justice, Towards an Ethics of Care-- _rChapter 9: Curricular and Learning Analytics: A Big Data Perspective-- _rChapter 10: Implementing a Learning Analytics Intervention and Evaluation Framework: What Works?-- _rChapter 11: GraphFES: A Web Service and Application for Moodle Message Board Social Graph Extraction-- _rChapter 12: Toward an Open Learning Analytics Ecosystem-- _rChapter 13: Predicting Four-Year Student Success from Two-Year Student Data-- _rChapter 14: Assessing Science Inquiry Skills in an Immersive, Conversation-Based Scenario-- _rChapter 15: Learning Analytics of Clinical Anatomy e-Cases.-- |
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520 | _aThis book focuses on the uses of big data in the context of higher education. The book describes a wide range of administrative and operational data gathering processes aimed at assessing institutional performance and progress in order to predict future performance, and identifies potential issues related to academic programming, research, teaching and learning​. Big data refers to data which is fundamentally too big and complex and moves too fast for the processing capacity of conventional database systems. The value of big data is the ability to identify useful data and turn it into useable information by identifying patterns and deviations from patterns​. | ||
590 | _bIncludes bibliographical references index. | ||
630 |
_aLB - Theory and practice of education _9933 |
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650 |
_aBig data _95432 |
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650 |
_a Analytics _92554 |
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650 | 0 |
_aTrends _98874 |
|
650 | 0 |
_aHigher education _97088 |
|
650 |
_a Research _98394 |
||
650 |
_a Embedded Digital Ecosystems (EDE) _910218 |
||
650 |
_a Data Paradigm _910219 |
||
650 |
_a Ethical Considerations _910220 |
||
650 |
_a Justice _96921 |
||
650 |
_a Care _910221 |
||
650 |
_a Ethics _910222 |
||
650 |
_a Curricular _910223 |
||
650 |
_a Evaluation _93857 |
||
650 |
_a Moodle _910224 |
||
650 |
_a GraphFES _910225 |
||
650 |
_a Ecosystem _910226 |
||
650 |
_a Skills _94151 |
||
650 |
_a Clinical Anatomy e-Cases _910227 |
||
650 |
_a e-Cases _910228 |
||
700 |
_aDaniel, Ben Kei _eAuthor _910229 |
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856 | _uhttps://books.google.es/books?id=hpHqDAAAQBAJ&lpg=PP1&dq=Big%20Data%20and%20Learning%20Analytics%20in%20Higher%20Education%20Current%20Theory%20and%20Practice&hl=es&pg=PP1#v=onepage&q=Big%20Data%20and%20Learning%20Analytics%20in%20Higher%20Education%20Current%20Theory%20and%20Practice&f=false | ||
902 | _a541 | ||
905 | _am | ||
912 | _a2017-01-01 | ||
942 | _a1 | ||
953 | _d2018-10-29 16:29:56 | ||
999 |
_c2245 _d2245 |