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Project WEKA ทัสน์ ชินบุรี 55102011002
1.
WEKA ทัสน์ ชินบุรี 55102011002
2.
Cluster • เลือก Simple
K-means • เลือก numClusters = 2 - 35
3.
numCluster = 2
4.
numClusters = 30
5.
numCluster = 35
6.
Cluster
7.
Associate
8.
Associate
9.
Associate
10.
Associate
11.
Cassify • พยากรณ์ว่า สูง
หรือ เตี้ย • แบ่งออกเป็น 2 ส่วน • ส่วนแรกแบ่งออกเป็น 50 row • ส่วนสองแบ่งออกเป็น 10 row
12.
Classify
13.
Classify • Result ที่ได้จาก
Weka ถูก 5 จาก 10 มีความเชื่อถือได้ 50%
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