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A Self-Attention-Based Imputation Technique for Enhancing Tabular Data Quality
Do Hoon Lee,
Han Joon Kim
School of Electrical and Computer Engineering
University of Seoul
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Engineering
Dataset
100%
Quality Data
100%
Models
60%
Columns (Structural)
60%
Real World
40%
Vector
20%
Performance
20%
Experiments
20%
Database
20%
Relational
20%
Tasks
20%
High Quality
20%
Mathematics
Missing Value
100%
Variables
25%
Neural Network
25%
Term
25%
Vector
25%
Predictive Model
25%
Database
25%
Observed Value
25%
Missing Data
25%
Inferential Statistics
25%
Computer Science
Attention (Machine Learning)
80%
Machine Learning
60%
Model
40%
Real World
40%
Decision-Making
40%
Neural Network
20%
Vector
20%
Predictive Model
20%
Material Science
Missing Data
100%
Neuroscience
Decision-Making
28%
Statistical Inference
14%
Expression Vector
14%