شماره ركورد كنفرانس :
144
عنوان مقاله :
Distinguishing and Clustering Breast Cancer According to Hierarchical Structures Based on Chaotic Multispecies Particle Swarm Optimization
پديدآورندگان :
Yassi Maryam نويسنده , Yassi Alireza نويسنده , Yaghoobi Mahdi نويسنده
كليدواژه :
particle swarm optimization , Fuzzy system , Chaotic maps , Chaotic theory
عنوان كنفرانس :
مجموعه مقالات دوازدهمين كنفرانس سيستم هاي هوشمند ايران
چكيده فارسي :
Breast Cancer Diagnosis and Prognosis are two
medical applications pose a great challenge to the researchers.
The use of machine learning and data mining techniques has
revolutionized the whole process of breast cancer Diagnosis
and Prognosis. Breast tumors are divided in to two types;
malignant and benign. In this paper we propose how to
distinguish the type of breast cancer by creating a Fuzzy
system (FS). To detect the type of breast censer we use a
chaotic hierarchical cluster-based multispecies particle swarm
optimization (CHCMSPSO) to optimization a FS indeed. The
objective of this paper is to learn Takagi-Sugeno-Kang (TSK)
type fuzzy rules with high accuracy. In addition to this, we will
introduce chaos into the HCMSPSO in order to further
enhance its global search ability. In the paper, eleven chaotic
maps are used in the intelligent diagnosis system. The accuracy
rate of distinguishing between benign and malignant censer is
above 90 percent. However, among the chaotic maps, the
Sinusoidal chaotic map provides us with the accuracy rate 99
percent because it coordinates with the problems conditions.
This simulation is performed on UCI-Breast Censer data-base.
شماره مدرك كنفرانس :
3817034