Enhancing Supervised Detection Using Decision Tree And Decision Table

2018 ◽  
pp. 62
Author(s):  
Abeer Tariq Maolood ◽  
Rasha Mohammed Mohsen
Keyword(s):  
2013 ◽  
Vol 9 (1) ◽  
Author(s):  
Irma Kharis ◽  
Rosa Delima ◽  
Joko Purwadi

C4.5 algorithm is used to simplify decision tree from decision table by generating decision tree from an existing decision tree. With this algorithm, knowledge base in the decision table can be simplified. This research will build a consultation program using C4.5 algorithm which is called decision tree generator. Decision tree generator provides inference facility and a user interface for consultation. The user is required to build a knowledge base first, and the application will generate user interface automatically. There are two steps in decision tree generator: firstly, the application will build the decision tree, and after that the application will build the user interface for consultation session. The results of this research show that the decision tree generator can get goal and advice from tree exploration in consultation session.


2012 ◽  
Vol 204-208 ◽  
pp. 4904-4908
Author(s):  
Yi Jie Dun ◽  
Ya Bin Shao ◽  
Shuang Liang Tian

This paper makes use of knowledge granular to present a new method to mine rules based on granule. First, use the measure to measure the importance of attribute, and get the granularity of the universe, and then repeat this procedure to every granule of the granularity, until the decision attribute has only one value for all granules, then we will describe every granule to get the rule. The analysis of the algorithm and the experiment show that the method presented is effective and reliable.Classification rules is the main target of association rule,decision tree and rough sets.a new algorithm to mine classification rules based on the importance of attribute value supported.this algorithm views the importance as the number of tuple pair that can be discernible by it,and the rules obtained from the constructed decision tree is equivalent to those obtained from ID3,which can be proved by the idea of rule fusion.however, this method is of low computation,and is more suitable to large database . rough sets is a techniques applied to data mining problems. This paper presents a new method to extract efficiently classification rules from decision table. The new model uses rough set theory to help in decreasing the computational effort needed for building decision tree by using what is called reduct algorithm and a rules set (knowledge) is generated from the decision table. reliable classifier architecture is obtained and its effectiveness is verified by the experiments comparing with traditional rough set approaches. Data mining research has made much effort to apply various mining algorithms efficiently on large databases.


Author(s):  
Agung Wibowo ◽  
Rival Afrian ◽  
Saeful Bahri ◽  
Taufik Hidayatulloh ◽  
Rusda Wajhillah

Hukum pidana yang komplek sulit dimengerti orang awam dalam memilah pasal-pasal yang mengaturnya, untuk lebih mempermudah masyrakat dalam mengerti dan memilah tentang pasal-pasal yang digunakan untuk menjerat pelaku hukum pidana, pada peneitian ini akan encoba menerapkan sebuah algoritma yang mengelompokan dan menentukan kadar dari sebuah tinggkat kejahatan yang dilakukan dalam hal ini algoritma yang kami gunakan yaitu fuzzy decision tree yang telah terbukti cocok untuk kasus yang yang mempunyai nilai abu-abu,algoritma ini kami gunakan untuk untuk menentukan perundangan mana yang yang cocokdisangkakan kepada pelaku pidana, pada penelitian ini kami hanya melakukan penelitian pada tindak pidana pidana materiil, terutama kasus pencurian, agar lebih mempermudah dalam penggunaan kami menerapkan rule-rule hasil perhitungan dari defuzifikasinya kedalam decision tree selanjutnya kami terapkan kedalam sebuah aplikasi berbasis mobile android.


Sign in / Sign up

Export Citation Format

Share Document