특징순서재배열을통한선형분류기최적화알고리즘

김종민, 유창동 - 대한전자공학회하계종합학술대회, 2010 - koasas.kaist.ac.kr
Linear classifier is the most popular and widely used classifier for most classification
problems, due to its simplicity and efficiency. The decision is made based on the value of …

특징추출비용에민감한분류를위한선형분류기최적화알고리즘

김종민, 유창동 - 대한전자공학회학술대회, 2014 - dbpia.co.kr
This paper proposes a simple yet effective algorithm for optimizing a trained linear classifier
to minimize the average feature acquisition cost at test-time. For good classification …

[PDF][PDF] Enhancing Classifier Performance Via Hybrid Feature Selection and Numeric Class Handling-A Comparative Study

S Vijayasankari, K Ramar - International Journal of Computer Applications, 2012 - Citeseer
Classification is a supervised machine learning procedure in which the effective model is
constructed for prediction. The accuracy of classification mainly depends on the type of …

Boosting feature selection using information metric for classification

H Liu, L Liu, H Zhang - Neurocomputing, 2009 - Elsevier
Feature selection plays an important role in pattern classification. Its purpose is to remove
redundant features from data set as many as possible. The presence of useless features …

Dynamic feature selection algorithm based on Q-learning mechanism

R Xu, M Li, Z Yang, L Yang, K Qiao, Z Shang - Applied Intelligence, 2021 - Springer
Feature selection is a technique to improve the classification accuracy of classifiers and a
convenient data visualization method. As an incremental, task oriented, and model-free …

A novel machine learning data preprocessing method for enhancing classification algorithms performance

T Iliou, CN Anagnostopoulos, M Nerantzaki… - Proceedings of the 16th …, 2015 - dl.acm.org
Data preprocessing describes any type of processing methods performed on raw data to
prepare it for another processing procedure. Commonly used as a preliminary data mining …

퍼지K-nearest neighbors 와reconstruction error 기반lazy classifier 설계

노석범, 안태천 - 한국지능시스템학회논문지, 2010 - dbpia.co.kr
본 논문에서는 퍼지 k-NN 과 reconstruction error 에 기반을 둔 feature selection 을 이용한 lazy
분류기 설계를 제안하였다. Reconstruction error 는 locally linear reconstruction 의 평가 …

[PDF][PDF] An adaptive multiple feature subset method for feature ranking and feature selection

F Chang, JC Chen - Number TR-IIS-09-010, Institute of …, 2009 - iis.sinica.edu.tw
In this paper, we propose a new feature evaluation method that forms the basis for feature
ranking and feature selection. The method starts by generating a number of feature subsets …

Improving the performance of feature selection methods with low-sample-size data

W Zheng, M Jin - The Computer Journal, 2023 - academic.oup.com
Feature selection refers to a critical preprocessing of machine learning to remove irrelevant
and redundant data. According to feature selection methods, sufficient samples are usually …

A new supervised feature selection method for pattern classification

H Liu, X Wu, S Zhang - Computational Intelligence, 2014 - Wiley Online Library
With the rapid development of information techniques, the dimensionality of data in many
application domains, such as text categorization and bioinformatics, is getting higher and …