Difference between revisions of "Dynamic Clustering Attribute"
Jump to navigation
Jump to search
m (Add Common attributes) |
|||
(3 intermediate revisions by the same user not shown) | |||
Line 1: | Line 1: | ||
{{Stub}} | {{Stub}} | ||
− | Similar to [[Segmentation]] in [[Visit Count Stats]], '''Dynamic Clustering Attribute''' (a.k.a. attribute) is a variable representing an aspect of a particular situation. When several attributes are combined, it is then called a [[Data Point]]. | + | Similar to [[Segmentation]] in [[Visit Count Stats]], '''Dynamic Clustering Attribute''' (a.k.a. attribute) is a variable representing an aspect of a particular situation. When several attributes are combined, it is then called a [[Data Point]]. |
+ | |||
+ | [[Dynamic Clustering]] is all about finding the [[wikipedia:k-nearest neighbours|k-nearest neighbours]] of the recorded data points and then calculating the [[wikipedia:kernel density estimation|kernel density]] of the matched points. Thus attributes play a crucial role in dynamic clustering. | ||
== Common attributes == | == Common attributes == | ||
Line 17: | Line 19: | ||
* [[Dynamic Clustering Tutorial]] | * [[Dynamic Clustering Tutorial]] | ||
* [[Segmentation]] | * [[Segmentation]] | ||
+ | |||
+ | [[Category:Terminology]] |
Latest revision as of 05:33, 15 September 2017
This article is a stub. You can help RoboWiki by expanding it. |
Similar to Segmentation in Visit Count Stats, Dynamic Clustering Attribute (a.k.a. attribute) is a variable representing an aspect of a particular situation. When several attributes are combined, it is then called a Data Point.
Dynamic Clustering is all about finding the k-nearest neighbours of the recorded data points and then calculating the kernel density of the matched points. Thus attributes play a crucial role in dynamic clustering.
Common attributes
Some common attributes most DC guns use are
- Distance/Bullet Flight Time
- Lateral Velocity
- Advancing Velocity
- Wall Distance
- Time Since Attributes
- Average Velocity Attributes