Binary classification using SVM or ANN?
2 views (last 30 days)
Show older comments
Hello
I have a project in which i have to create a model using either SVM or ANN metode that predicts if the symbol is zero (0) or one (1).
My input data are complex numbers. Each symbol is detetment by column of 20 complex numbers.
For instance:
1 0
-30.5946 +45.6142i -9.5504 -52.0076i
-28.2553 +41.0503i -9.9506 -47.9197i
-27.5315 +44.5150i -8.1468 -51.1290i
-31.2449 +42.1544i -9.6489 -44.7405i
-26.4084 +42.9527i -4.9537 -49.0714i
-29.0869 +42.3309i -9.2641 -44.3664i
-26.8713 +41.1549i -5.1648 -50.1355i
-25.4910 +41.5865i -12.3554 -47.2671i
-28.8041 +43.6515i -8.9379 -49.0792i
-26.9008 +39.5717i -11.2396 -54.5616i
-28.1639 +42.3321i -6.1479 -55.7859i
-34.1447 +40.4079i -6.2652 -51.2927i
-25.9209 +42.8146i -14.1721 -53.1520i
-21.8625 +41.7201i -11.8595 -56.1244i
-25.8175 +42.4621i -12.2793 -54.7263i
-29.2388 +37.0193i -7.2035 -52.2509i
-26.9880 +38.4291i -4.3028 -55.7246i
-30.9404 +40.1483i -9.4492 -50.1819i
-22.5961 +41.8203i -6.3496 -54.7031i
-25.0664 +44.7902i -7.1984 -47.8074i
If anybody can help me how to start my project or can give me a example similar to my.
Thank you
0 Comments
Answers (1)
Dinesh Yadav
on 2 Mar 2020
For Binary classification use SVM as it will be more efficient computationally. Try the following commands to train and classify new data.
load data.mat
SVMModel = fitcsvm(x,y);
[label,score] = predict(SVMModel, newxval);
Refer to the following links to understand more about SVM using MATLAB.
https://www.mathworks.com/help/stats/classreg.learning.classif.compactclassificationsvm.predict.html
As of now MATLAB does not support complex datatype for SVM classification. Go through the following link
0 Comments
See Also
Categories
Find more on Classification Learner App in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!