Abstract
Feature selection is an importance step in classification phase and directly affects the classification performance. Feature selection algorithm explores the data to eliminate noisy, redundant, irrelevant data, and optimize the classification performance. This paper addresses a new subset feature selection performed by a new Social Spider Optimizer algorithm (SSOA) to find optimal regions of the complex search space through the interaction of individuals in the population. SSOA is a new natural meta-heuristic computation algorithm which mimics the behavior of cooperative social-spiders based on the biological laws of the cooperative colony. Different combinatorial set of feature extraction is obtained from different methods in order to keep and achieve optimal accuracy. Normalization function is applied to smooth features between [0,1] and decrease gap between features. SSOA based on feature selection and reduction compared with other methods over CT liver tumor dataset, the proposed approach proves better performance in both feature size reduction and classification accuracy. Improvements are observed consistently among 4 classification methods. A theoretical analysis that models the number of correctly classified data is proposed using Confusion Matrix, Precision, Recall, and Accuracy. The achieved accuracy is 99.27%, precision is 99.37%, and recall is 99.19%. The results show that, the mechanism of SSOA provides very good exploration, exploitation and local minima avoidance.
Highlights
Liver cancer is a serious disease and it is the third commonest cancer followed by stomach and lung cancer [1]
social spider optimization algorithm (SSOA) has a strong capability to search in the problem space and can efficiently find minimal reductions
4) Experimental Results: In this paper we developed a new approach for liver tumor diagnosis based on meta-heuristic social spider optimizer algorithm to select optimal features with no noise and redundancy
Summary
Liver cancer is a serious disease and it is the third commonest cancer followed by stomach and lung cancer [1]. As reported in [2], liver cancer in Egypt is continues to be the second highest cause of cancer incidence and mortality. The most effective way to reduce deaths due to liver cancer is to treat the disease in the early stages. Treatment requires early diagnosis based on an accurate and reliable diagnostic procedure. The classification of benign and malignant patterns in CT is one of the most significant processes during the diagnosis of liver cancer. Computer aided liver diagnosis (CAD) is a technique that can help radiologists to accurately identify abnormality and help in reducing the risk of liver surgery [3]
Published Version (Free)
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have