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Data Mining (V-U)
Data Mining (V-U)
(220 Lectures Available)
S#
Lecture
Course
Institute
Instructor
Discipline
51
Data Cleaning: How to Handle Noisy data using Binning (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
52
Data Cleaning: How to Handle Noisy data using Regression and Cluster Analysis (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
53
Data Cleaning: Introduction (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
54
Data Cleaning: Missing Data (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
55
Data Cleaning: Noisy Data (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
56
Data for cluster analysis (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
57
Data integration and transformation: Co relation analysis Example (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
58
Data integration and transformation: Data Transformation methods (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
59
Data integration and transformation: Detect Redundancy in Data Integration using Co relation analysis (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
60
Data integration and transformation: Handling Redundancy in Data Integration (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
61
Data integration and transformation: Introduction (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
62
Data Objects and Attribute Types: Attribute Types (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
63
Data Objects and Attribute Types: Attributes (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
64
Data Objects and Attribute Types: Data Objects (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
65
Data Objects and Attribute Types: Discrete vs. Continuous Attributes (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
66
Data Objects and Attribute Types: Structured Data (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
67
Data Objects and Attribute Types: Types of Data Sets (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
68
Data reduction: Data Compression (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
69
Data reduction: Data cube aggregation (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
70
Data reduction: Dimensionality Reduction using PCA (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
71
Data reduction: Dimensionality Reduction using Wavelet Transformation (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
72
Data reduction: Introduction (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
73
Data reduction: Linear regression (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
74
Data reduction: Numerosity Reduction (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
75
Data reduction: Numerosity Reduction using Clustering (V-U)
Data Mining (V-U)
Virtual University
Dr.Usman Ghani
Applied Sciences
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