Lecture 2 Flashcards

1
Q

Three different stages to multivariate visualisation pipeline

A

Data transformation, visual mapping, view transformation

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
2
Q

Data transformation

A

Computation-centric and focus on quantitative results

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
3
Q

Dimension reduction

  • What does it used for?
  • How is the scalability of it is addressed?
A
  • Capturing the overall structure of the dataset.
  • Control point based projection approaches and approximations.
How well did you know this?
1
Not at all
2
3
4
5
Perfectly
4
Q

Subspace clustering

  • What is the motivation
  • What does it do?
A
  • A single embedding is unlikely to be sufficient for understanding the data.
  • Identify multiple informative 2d projections. Either finds clusters in subset of dimensions, or cluster points that share a low-dimensional linear subspace.
How well did you know this?
1
Not at all
2
3
4
5
Perfectly
5
Q

Regression analysis

A

Provides a class of methods designed to capture the quantitative relationship among individual dimensions. More effective parameter tuning and exploration

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
6
Q

Visual mapping

What are the main approaches?

A

Different arrangements of data axes, glyph-based, pixel-oriented, hierarchy-based

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
7
Q

Data axes based visual mapping

  • What is it?
  • What is the challenge?
  • How to tackle this challenge?/
A
  • Different arrangements of axes.
  • number of possible rankings increases as dimensionality increases.
  • Quality metrics for filtering the interesting configurations.
How well did you know this?
1
Not at all
2
3
4
5
Perfectly