Online Sparse Streaming Feature Selection Using Adapted Classification

02/25/2023
by   Ruiyang Xu, et al.
0

Traditional feature selections need to know the feature space before learning, and online streaming feature selection (OSFS) is proposed to process streaming features on the fly. Existing methods divide features into relevance or irrelevance without missing data, and deleting irrelevant features may lead to in-formation loss. Motivated by this, we focus on completing the streaming feature matrix and division of feature correlation and propose online sparse streaming feature selection based on adapted classification (OS2FS-AC). This study uses Latent Factor Analysis (LFA) to pre-estimate missed data. Besides, we use the adaptive method to obtain the threshold, divide the features into strongly relevant, weakly relevant, and irrelevant features, and then divide weak relevance with more information. Experimental results on ten real-world data sets demonstrate that OS2FS-AC performs better than state-of-the-art algo-rithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/16/2021

Effective Streaming Evolutionary Feature Selection Using Dynamic Optimization

Feature selection is a key issue in machine learning and data mining. A ...
research
10/02/2019

Geometric Online Adaptation: Graph-Based OSFS for Streaming Samples

Feature selection seeks a curated subset of available features such that...
research
09/30/2017

Testing for Feature Relevance: The HARVEST Algorithm

Feature selection with high-dimensional data and a very small proportion...
research
03/02/2016

LOFS: Library of Online Streaming Feature Selection

As an emerging research direction, online streaming feature selection de...
research
04/21/2020

On-the-Fly Joint Feature Selection and Classification

Joint feature selection and classification in an online setting is essen...
research
06/07/2023

Feature Selection using Sparse Adaptive Bottleneck Centroid-Encoder

We introduce a novel nonlinear model, Sparse Adaptive Bottleneck Centroi...
research
01/10/2019

Modified Jaccard Index Analysis and Adaptive Feature Selection for Location Fingerprinting with Limited Computational Complexity

We propose an approach for fingerprinting-based positioning which reduce...

Please sign up or login with your details

Forgot password? Click here to reset