Erinevus lehekülje "Data Mining and network analysis IDN0110 2016" redaktsioonide vahel
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19. rida: | 19. rida: | ||
==Overview == | ==Overview == | ||
− | The course aims to provide knowledge of theory behind different methods of data mining. Is is spanned around four "super problems" of data mining: | + | The course aims to provide knowledge of theory behind different methods of data mining and develop practical skills in applying those methods on practice. Is is spanned around four "super problems" of data mining: |
* Clustering | * Clustering | ||
* Classification | * Classification | ||
43. rida: | 43. rida: | ||
*71 < score < 80 -- grade 3 (good) | *71 < score < 80 -- grade 3 (good) | ||
*61 < score < 70 -- grade 2 (satisfactory) | *61 < score < 70 -- grade 2 (satisfactory) | ||
− | *51 < score < 60 -- grade 1 ( | + | *51 < score < 60 -- grade 1 (acceptable) |
score ≤ 50 -- a student has failed to pass | score ≤ 50 -- a student has failed to pass | ||
==Lectures == | ==Lectures == | ||
Lecture slides, necessary files, links and other necessary information would appear here before the lecture or practice. | Lecture slides, necessary files, links and other necessary information would appear here before the lecture or practice. |
Redaktsioon: 27. jaanuar 2016, kell 13:38
Spring 2015/2016
IDN0110: Data Mining and network analysis
Taught by: Sven Nõmm
EAP: 6.0
Time and place:
Lectures: 17:15-18:45 TBA 17:45-19:15 TBA
Labs: 14:00-15:30 TBA
Consultation: by appointment TBA
Additional information: sven.nomm@ttu.ee
Overview
The course aims to provide knowledge of theory behind different methods of data mining and develop practical skills in applying those methods on practice. Is is spanned around four "super problems" of data mining:
- Clustering
- Classification
- Association pattern mining
- Outlier analysis
Main topics of the course:
- Data types and Data Preparation
- Similarity and Distances, Association Pattern Mining,
- Cluster Analysis, Classification, Outlier analysis
- Data streams, Text Data, Time Series, Discrete Sequences,
- Spatial Data, Graph Data, Web Data, Social Network Analysis
- Privacy-Preserving Data Mining
Evaluation
- 2x mandatory closed book tests. Each test gives 10% of the final grade.
- 4x mandatory home assignments (Computational assignment +short write up.) 30% of the final grade (computed on the basis of three best results)
- final exam (gives 50 % of the final grade): Written report on assigned topic + discussion with lecturer.
Exam prerequisites: both closed book tests are accepted (graded as 51 or higher), all 4 home assignments are accepted (graded as 51 or higher).
- 91 < score -- grade 5 (excellent)
- 81 < score < 90 -- grade 4 (very good)
- 71 < score < 80 -- grade 3 (good)
- 61 < score < 70 -- grade 2 (satisfactory)
- 51 < score < 60 -- grade 1 (acceptable)
score ≤ 50 -- a student has failed to pass
Lectures
Lecture slides, necessary files, links and other necessary information would appear here before the lecture or practice.