Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

Attribute reduction based on interval-set rough sets

Published: 08 January 2024 Publication History

Abstract

As an important extension of the rough set theory, interval-set rough sets provide an effective method to solve the problem that the objective sets cannot be accurately expressed in the rough approximation process and to induce classification rules from incomplete information systems. In practical information systems, the value of an object’s decision attribute may be set-valued due to missing decision information or multiple decision values. However, this situation is not considered by any of the existing rough set models. Therefore, to properly deal with the information system where decision attributes are set-valued, we construct the interval-set rough set model on the information system and study attribute reductions of interval-set rough sets. First, we define the information system where decision attributes are set-valued as an extended set-valued decision information system (ESVDIS) and construct the interval-set rough set model on the ESVDIS. Second, the accuracy and the roughness are extended to the interval-set approximation accuracy and the interval-set approximation roughness, respectively. The two extended measures can be used to measure the uncertainty caused by rough approximations. In addition, the dependency degree of interval-set rough sets called the interval-set dependency degree is defined to estimate the significance of attribute subsets. By adopting the interval-set dependency degree, we propose the definition of attribute reduction based on interval-set rough sets and design a heuristic attribute reduction algorithm. Finally, the effectiveness of the proposed attribute reduction algorithm is demonstrated using 12 public data sets. Experimental results show that the model is applicable to some fields, such as missing decision information and group decision-making.

References

[1]
Abo-Tabl E A comparison of two kinds of definitions of rough approximations based on a similarity relation Inf Sci 2011 181 12 2587-2596
[2]
An S, Guo X, Wang C, et al. A soft neighborhood rough set model and its applications Inf Sci 2023 624 185-199
[3]
An S, Zhang M, Wang C, et al. Robust fuzzy rough approximations with KNN granules for semi-supervised feature selection Fuzzy Sets Syst 2023 461
[4]
Asuncion A, Newman D (2007) UCI machine learning repository. https://archive.ics.uci.edu/ml
[5]
Boukezzoula R, Jaulin L, Desrochers B, et al. Thick fuzzy sets (TFSS) and their potential use in uncertain fuzzy computations and modeling IEEE Trans Fuzzy Syst 2020 29 11 3334-3348
[6]
Chu X, Sun B, Li X, et al. Neighborhood rough set-based three-way clustering considering attribute correlations: an approach to classification of potential gout groups Inf Sci 2020 535 28-41
[7]
Dai J and Tian H Entropy measures and granularity measures for set-valued information systems Inf Sci 2013 240 72-82
[8]
Dai J, Gao S, and Zheng G Generalized rough set models determined by multiple neighborhoods generated from a similarity relation Soft Comput 2018 22 2081-2094
[9]
Desrochers B and Jaulin L Thick set inversion Artif Intell 2017 249 1-18
[10]
Gong ZT, Sun BZ, and Chen DG Rough set theory for the interval-valued fuzzy information systems Inf Sci 2008 178 8 1968-1985
[11]
Guan YY and Wang HK Set-valued information systems Inf Sci 2006 176 17 2507-2525
[12]
Guo YT, Hu M, Wang XZ, et al. A robust approach to attribute reduction based on double fuzzy consistency measure Knowl-Based Syst 2022 253
[13]
Gupta A and Begum SA Fuzzy rough set-based feature selection for text categorization Fuzzy, rough and intuitionistic fuzzy set approaches for data handling, theory and applications 2023 Berlin Springer 65-85
[14]
Hota R, Dash S, Mishra S et al (2023) Prediction and diagnosis of thoracic diseases using rough set and machine learning. In: 2023 10th International conference on computing for sustainable global development (INDIACom). IEEE, pp 206–213
[15]
Hu BQ Three decisions rough sets based on interval sets Three decisions and granular computering (in Chinese) 2013 Beijing Science Press 163-195
[16]
Hu M Modeling relationships in three-way conflict analysis with subsethood measures Knowl-Based Syst 2023 260
[17]
Hu M, Tsang EC, Guo YT, et al. A novel approach to attribute reduction based on weighted neighborhood rough sets Knowl-Based Syst 2021 220
[18]
Huang YY, Li TR, Luo C, et al. Dynamic variable precision rough set approach for probabilistic set-valued information systems Knowl-Based Syst 2017 122 131-147
[19]
Huang QQ, Li TR, Huang YY, et al. Dynamic dominance rough set approach for processing composite ordered data Knowl-Based Syst 2020 187
[20]
Jaura S and Ramanna S Named entity recognition on cord-19 bio-medical dataset with tolerance rough sets Transactions on rough sets XXIII 2023 Berlin Springer 23-32
[21]
Ji X, Peng JH, Zhao P, et al. Extended rough sets model based on fuzzy granular ball and its attribute reduction Inf Sci 2023 640
[22]
Jiang HB, Zhan JM, Sun BZ, et al. An MADM approach to covering-based variable precision fuzzy rough sets: an application to medical diagnosis Int J Mach Learn Cybern 2020 11 2181-2207
[23]
Jiang ZH, Liu KY, Yang XB, et al. Accelerator for supervised neighborhood based attribute reduction Int J Approx Reason 2020 119 122-150
[24]
Jiang H, Wang G, Liu Q, et al. Hierarchical multi-UAVS task assignment based on dominance rough sets Appl Soft Comput 2023 143
[25]
Li HX, Wang MH, Zhou XZ, et al. An interval set model for learning rules from incomplete information table Int J Approx Reason 2012 53 1 24-37
[26]
Liu J, Lin Y, Du J, et al. Asfs: a novel streaming feature selection for multi-label data based on neighborhood rough set Appl Intell 2023 53 2 1707-1724
[27]
Ma JM, Jing Y, and Yao HJ The monotonicity of interval-set probabilistic rough sets Fuzzy Syst Math 2018 32 4 180-190 in Chinese
[28]
Mac Parthalain N and Shen Q Exploring the boundary region of tolerance rough sets for feature selection Pattern Recogn 2009 42 5 655-667
[29]
Pawlak Z Rough sets Int J Comput Inf Sci 1982 11 341-356
[30]
Pawlak Z Rough sets: theoretical aspects of reasoning about data 1991 Heidelberg Springer Science & Business Media
[31]
Qian YH, Dang CY, Liang JY, et al. Set-valued ordered information systems Inf Sci 2009 179 16 2809-2832
[32]
Qian YH, Liang JY, Pedrycz W, et al. Positive approximation: an accelerator for attribute reduction in rough set theory Artif Intell 2010 174 9–10 597-618
[33]
Raja P and Thangavel K Missing value imputation using unsupervised machine learning techniques Soft Comput 2020 24 6 4361-4392
[34]
Sun BZ, Chen XT, Zhang LY, et al. Three-way decision making approach to conflict analysis and resolution using probabilistic rough set over two universes Inf Sci 2020 507 809-822
[35]
Wang CZ, Hu QH, Wang XZ, et al. Feature selection based on neighborhood discrimination index IEEE Trans Neural Netw Learn Syst 2017 29 7 2986-2999
[36]
Wang CZ, Huang Y, Shao MW, et al. Uncertainty measures for general fuzzy relations Fuzzy Sets Syst 2019 360 82-96
[37]
Wang CZ, Huang Y, Shao MW, et al. Fuzzy rough set-based attribute reduction using distance measures Knowl-Based Syst 2019 164 205-212
[38]
Wang P, Zhang PF, Li ZW (2019c) A three-way decision method based on gaussian kernel in a hybrid information system with images: an application in medical diagnosis. Appl Soft Comput 77:734–749
[39]
Wilcoxon F Individual comparisons by ranking methods Breakthroughs in statistics: methodology and distribution 1992 New York Springer 196-202
[40]
Xie LL, Lin GP, Li JJ et al (2023) Local fuzzy rough set model over two universes and its reduction. Soft Comput 1–19
[41]
Xie G, Zhang JL, Lai KK, et al. Variable precision rough set for group decision-making: an application Int J Approx Reason 2008 49 2 331-343
[42]
Xu JC, Meng XR, Qu KL, et al. Feature selection using relative dependency complement mutual information in fitting fuzzy rough set model Appl Intell 2023 53 18239-18262
[43]
Yao YY, Noroozi N (1994) A unified model for set-based computations. In: Soft computing: 3rd international workshop on rough sets and soft computing, Citeseer, pp 252–255
[44]
Yao YY (1993) Interval-set algebra for qualitative knowledge representation. In: Proceedings of ICCI’93: 5th international conference on computing and information. IEEE, pp 370–374
[45]
Yao YY Two views of the theory of rough sets in finite universes Int J Approx Reason 1996 15 4 291-317
[46]
Yao YY Information granulation and rough set approximation Int J Intell Syst 2001 16 1 87-104
[47]
Yin T, Chen H, Yuan Z, et al. Noise-resistant multilabel fuzzy neighborhood rough sets for feature subset selection Inf Sci 2023 621 200-226
[48]
Yin T, Chen H, Yuan Z, et al. A robust multilabel feature selection approach based on graph structure considering fuzzy dependency and feature interaction IEEE Trans Fuzzy Syst 2023 31 4516-4523
[49]
Zhang JB, Li TR, Ruan D, et al. Rough sets based matrix approaches with dynamic attribute variation in set-valued information systems Int J Approx Reason 2012 53 4 620-635
[50]
Zhang YM, Jia XY, and Tang ZM Information-theoretic measures of uncertainty for interval-set decision tables Inf Sci 2021 577 81-104
[51]
Zhao XR and Hu BQ Fuzzy and interval-valued fuzzy decision-theoretic rough set approaches based on fuzzy probability measure Inf Sci 2015 298 534-554

Cited By

View all
  • (2025)Exploration of grade distribution in iron mines based on rough set extreme learning machine and multispectralExpert Systems with Applications: An International Journal10.1016/j.eswa.2024.125938265:COnline publication date: 15-Mar-2025
  • (2025)Matrix-based incremental local feature selection with dynamic covering granularityApplied Intelligence10.1007/s10489-025-06253-355:5Online publication date: 1-Apr-2025

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image Soft Computing - A Fusion of Foundations, Methodologies and Applications
Soft Computing - A Fusion of Foundations, Methodologies and Applications  Volume 28, Issue 3
Feb 2024
909 pages

Publisher

Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 08 January 2024
Accepted: 30 November 2023

Author Tags

  1. Rough set
  2. Interval set
  3. Set-valued decision information system
  4. Uncertainty measure
  5. Dependency degree
  6. Attribute reduction

Qualifiers

  • Research-article

Funding Sources

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 01 Mar 2025

Other Metrics

Citations

Cited By

View all
  • (2025)Exploration of grade distribution in iron mines based on rough set extreme learning machine and multispectralExpert Systems with Applications: An International Journal10.1016/j.eswa.2024.125938265:COnline publication date: 15-Mar-2025
  • (2025)Matrix-based incremental local feature selection with dynamic covering granularityApplied Intelligence10.1007/s10489-025-06253-355:5Online publication date: 1-Apr-2025

View Options

View options

Figures

Tables

Media

Share

Share

Share this Publication link

Share on social media