Chinese Character Classification Based on Rough Set and SVM Algorithm1
نویسندگان
چکیده
In the paper, we present a integrated approach combined Rough Set theory and SVM algorithm. The approach udl be divided into two steps. The fust step is classified roughlv with Rough Set, rule should be induced in this step by infonilation system. The second step should ht: classified precisely based on SVM Algorithn~, in this step we present two new fiuidrunental principles to help us select basic attributes for SVM algorithm. In virtue of Rough Set and SVM, we can identify characters fast and well. The paper gives hidunting Chinese as an example to show that the n~ethod can be used practically.
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