Decision Trees
#1

[attachment=6795]
Decision Trees

DECISION TREE

An internal node is a test on an attribute.
A branch represents an outcome of the test, e.g., Color=red.
A leaf node represents a class label or class label distribution.
At each node, one attribute is chosen to split training examples into distinct classes as much as possible
A new case is classified by following a matching path to a leaf node.

Reply
#2

[attachment=6814]
Decision Trees

Basics of Decision Trees


A flow-chart-like hierarchical tree structure
Often restricted to a binary structure
Root: represents the entire dataset
A node without children is called a leaf node. Otherwise is called an internal node.
Internal nodes: denote a test on an attribute
Branch (split): represents an outcome of the test
Univariate split (based on a single attribute)
Multivariate split
Leaf nodes: represent class labels or class distribution

Most decision tree generation consists of two phases
Tree construction
Tree pruning
Reply

Important Note..!

If you are not satisfied with above reply ,..Please

ASK HERE

So that we will collect data for you and will made reply to the request....OR try below "QUICK REPLY" box to add a reply to this page
Popular Searches: saving trees topics, black trees, decision trees for uncertain data, light trees with documentation free download, ghosh vakya for trees in marathi, paper of ieee on solar trees in the form of pdf, decision trees seminar report,

[-]
Quick Reply
Message
Type your reply to this message here.

Image Verification
Please enter the text contained within the image into the text box below it. This process is used to prevent automated spam bots.
Image Verification
(case insensitive)

Possibly Related Threads...
Thread Author Replies Views Last Post
  HEURISTIC ALGORITHMS FOR DESIGNING SELF-REPAIRING PROTECTION TREES IN MESH NETWORKS seminar addict 0 842 07-02-2012, 01:17 PM
Last Post: seminar addict
  Binary Trees, project report helper 1 1,934 20-01-2011, 12:42 PM
Last Post: seminar surveyer

Forum Jump: