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Erschienen in: Soft Computing 4/2021

09.10.2020 | Methodologies and Application

Feature selection by using chaotic cuckoo optimization algorithm with levy flight, opposition-based learning and disruption operator

verfasst von: Mahsa kelidari, Javad Hamidzadeh

Erschienen in: Soft Computing | Ausgabe 4/2021

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Abstract

Feature selection, which plays an important role in high-dimensional data analysis, is drawing increasing attention recently. Finding the most relevant and important features for classifications are one of the most important tasks of data mining and machine learning, since all of the datasets have irrelevant features that affect accuracy rate and slow down the classifier. Feature selection is an optimization process, which improves the accuracy rate of data classification and reduces the number of selected features. Applying too many features both requires a large memory capacity and leads to a slow execution speed. Feature selection algorithms are often responsible to decide which features should be selected to be used during a classification algorithm. Traditional algorithms seemed to be inefficient due to the complexity of dimensions of the problem, thus evolutionary algorithms were used to improve the problem solving process. The algorithm proposed in this paper, chaotic cuckoo optimization algorithm with levy flight, disruption operator and opposition-based learning (CCOALFDO), is applied to select the optimal feature subspace for classification. It reduces the randomization in selecting features and avoids getting stuck in local optimum solutions which lead to a more interesting feature subset. Extensive experiments are conducted on 20 high-dimensional datasets to demonstrate the effectiveness and efficiency of the proposed method. The results showed the superiority of the proposed method to state-of-the-art methods in terms of classification accuracy rate. In addition, they prove the ability of the CCOALFDO in selecting the most relevant features for classification tasks. Thus, it is a reasonable solution in handling noise and avoiding serious negative impacts on the classification accuracy rate in real world datasets.

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Literatur
Zurück zum Zitat Aladeemy M et al (2020) New feature selection methods based on opposition-based learning and self-adaptive cohort intelligence for predicting patient no-shows. Appl Soft Comput 86:105866CrossRef Aladeemy M et al (2020) New feature selection methods based on opposition-based learning and self-adaptive cohort intelligence for predicting patient no-shows. Appl Soft Comput 86:105866CrossRef
Zurück zum Zitat Alatas B, Akin E, Ozer AB (2009) Chaos embedded particle swarm optimization algorithms. Chaos, Solitons Fractals 40(4):1715–1734MathSciNetMATHCrossRef Alatas B, Akin E, Ozer AB (2009) Chaos embedded particle swarm optimization algorithms. Chaos, Solitons Fractals 40(4):1715–1734MathSciNetMATHCrossRef
Zurück zum Zitat Ang JC et al (2015) Supervised, unsupervised, and semi-supervised feature selection: a review on gene selection. IEEE/ACM Trans Comput Biol Bioinf 13(5):971–989CrossRef Ang JC et al (2015) Supervised, unsupervised, and semi-supervised feature selection: a review on gene selection. IEEE/ACM Trans Comput Biol Bioinf 13(5):971–989CrossRef
Zurück zum Zitat Anter AM, Ali M (2020) Feature selection strategy based on hybrid crow search optimization algorithm integrated with chaos theory and fuzzy c-means algorithm for medical diagnosis problems. Soft Comput 24(3):1–20CrossRef Anter AM, Ali M (2020) Feature selection strategy based on hybrid crow search optimization algorithm integrated with chaos theory and fuzzy c-means algorithm for medical diagnosis problems. Soft Comput 24(3):1–20CrossRef
Zurück zum Zitat Anter AM, Azar AT, Fouad KM (2019) Intelligent hybrid approach for feature selection. In: International conference on advanced machine learning technologies and applications. Springer Anter AM, Azar AT, Fouad KM (2019) Intelligent hybrid approach for feature selection. In: International conference on advanced machine learning technologies and applications. Springer
Zurück zum Zitat Arora S, Anand P (2019) Binary butterfly optimization approaches for feature selection. Expert Syst Appl 116:147–160CrossRef Arora S, Anand P (2019) Binary butterfly optimization approaches for feature selection. Expert Syst Appl 116:147–160CrossRef
Zurück zum Zitat Bannigidad P, Gudada C (2019) Age-type identification and recognition of historical kannada handwritten document images using HOG feature descriptors. In: Iyer B, Nalbalwar S, Pathak N (eds) Computing, communication and signal processing. Springer, Berlin, pp 1001–1010CrossRef Bannigidad P, Gudada C (2019) Age-type identification and recognition of historical kannada handwritten document images using HOG feature descriptors. In: Iyer B, Nalbalwar S, Pathak N (eds) Computing, communication and signal processing. Springer, Berlin, pp 1001–1010CrossRef
Zurück zum Zitat Beltramo T, Klocke M, Hitzmann B (2019) Prediction of the biogas production using GA and ACO input features selection method for ANN model. Inf Process Agric 6(3):349–356 Beltramo T, Klocke M, Hitzmann B (2019) Prediction of the biogas production using GA and ACO input features selection method for ANN model. Inf Process Agric 6(3):349–356
Zurück zum Zitat Bhattacharya A, Chattopadhyay PK (2010) Hybrid differential evolution with biogeography-based optimization for solution of economic load dispatch. IEEE Trans Power Syst 25(4):1955–1964CrossRef Bhattacharya A, Chattopadhyay PK (2010) Hybrid differential evolution with biogeography-based optimization for solution of economic load dispatch. IEEE Trans Power Syst 25(4):1955–1964CrossRef
Zurück zum Zitat Bostani H, Sheikhan M (2017) Hybrid of binary gravitational search algorithm and mutual information for feature selection in intrusion detection systems. Soft Comput 21(9):2307–2324CrossRef Bostani H, Sheikhan M (2017) Hybrid of binary gravitational search algorithm and mutual information for feature selection in intrusion detection systems. Soft Comput 21(9):2307–2324CrossRef
Zurück zum Zitat Cheng C, Bao L, Bao C (2016) network intrusion detection with bat algorithm for synchronization of feature selection and support vector machines. In: International symposium on neural networks. 2016. Springer Cheng C, Bao L, Bao C (2016) network intrusion detection with bat algorithm for synchronization of feature selection and support vector machines. In: International symposium on neural networks. 2016. Springer
Zurück zum Zitat da Silva DL, Seijas LM, Bastos-Filho CJ (2017) Artificial bee colony optimization for feature selection of traffic sign recognition. Int J Swarm Intell Res (IJSIR) 8(2):50–66CrossRef da Silva DL, Seijas LM, Bastos-Filho CJ (2017) Artificial bee colony optimization for feature selection of traffic sign recognition. Int J Swarm Intell Res (IJSIR) 8(2):50–66CrossRef
Zurück zum Zitat Dai Y et al. (2015) Feature selection of high-dimensional biomedical data using improved SFLA for disease diagnosis. In: International conference on bioinformatics and biomedicine (BIBM), IEEE Dai Y et al. (2015) Feature selection of high-dimensional biomedical data using improved SFLA for disease diagnosis. In: International conference on bioinformatics and biomedicine (BIBM), IEEE
Zurück zum Zitat Dara S, Banka H, Annavarapu CSR (2017) A rough based hybrid binary PSO algorithm for flat feature selection and classification in gene expression data. Ann Data Sci 4(3):1–20CrossRef Dara S, Banka H, Annavarapu CSR (2017) A rough based hybrid binary PSO algorithm for flat feature selection and classification in gene expression data. Ann Data Sci 4(3):1–20CrossRef
Zurück zum Zitat De Souza RCT et al (2018) A V-shaped binary crow search algorithm for feature selection. In: 2018 IEEE congress on evolutionary computation (CEC). 2018. IEEE De Souza RCT et al (2018) A V-shaped binary crow search algorithm for feature selection. In: 2018 IEEE congress on evolutionary computation (CEC). 2018. IEEE
Zurück zum Zitat Ding C, Peng H (2005) Minimum redundancy feature selection from microarray gene expression data. J Bioinf Comput Biol 3(02):185–205CrossRef Ding C, Peng H (2005) Minimum redundancy feature selection from microarray gene expression data. J Bioinf Comput Biol 3(02):185–205CrossRef
Zurück zum Zitat dos Santos CL, Mariani VC (2008) Use of chaotic sequences in a biologically inspired algorithm for engineering design optimization. Expert Syst Appl 34(3):1905–1913CrossRef dos Santos CL, Mariani VC (2008) Use of chaotic sequences in a biologically inspired algorithm for engineering design optimization. Expert Syst Appl 34(3):1905–1913CrossRef
Zurück zum Zitat Du D, Simon D, Ergezer M (2009) Biogeography-based optimization combined with evolutionary strategy and immigration refusal. In: IEEE International conference onsystems, man and cybernetics, 2009. SMC IEEE Du D, Simon D, Ergezer M (2009) Biogeography-based optimization combined with evolutionary strategy and immigration refusal. In: IEEE International conference onsystems, man and cybernetics, 2009. SMC IEEE
Zurück zum Zitat Eberchart R, Kennedy J (1995) Particle swarm optimization. In: IEEE international conference on neural networks, Perth, Australia. 1995 Eberchart R, Kennedy J (1995) Particle swarm optimization. In: IEEE international conference on neural networks, Perth, Australia. 1995
Zurück zum Zitat El Aziz MA, Hassanien AE (2016) Modified cuckoo search algorithm with rough sets for feature selection. Neural Comput Appl 29(4):1–10 El Aziz MA, Hassanien AE (2016) Modified cuckoo search algorithm with rough sets for feature selection. Neural Comput Appl 29(4):1–10
Zurück zum Zitat Emary E, Zawbaa HM (2018) Feature selection via Lèvy Antlion optimization. Pattern Anal Appl 22(3):1–20 Emary E, Zawbaa HM (2018) Feature selection via Lèvy Antlion optimization. Pattern Anal Appl 22(3):1–20
Zurück zum Zitat Emary E, Zawbaa HM, Hassanien AE (2016) Binary gray wolf optimization approaches for feature selection. Neurocomputing 172:371–381CrossRef Emary E, Zawbaa HM, Hassanien AE (2016) Binary gray wolf optimization approaches for feature selection. Neurocomputing 172:371–381CrossRef
Zurück zum Zitat Fong S, Yang XS, Deb S (2013) Swarm search for feature selection in classification. In: 2013 IEEE 16th international conference on computational science and engineering (CSE), 2013. IEEE Fong S, Yang XS, Deb S (2013) Swarm search for feature selection in classification. In: 2013 IEEE 16th international conference on computational science and engineering (CSE), 2013. IEEE
Zurück zum Zitat Fong S, Wong R, Vasilakos AV (2016) Accelerated PSO swarm search feature selection for data stream mining big data. IEEE Trans Serv Comput 9(1):33–45 Fong S, Wong R, Vasilakos AV (2016) Accelerated PSO swarm search feature selection for data stream mining big data. IEEE Trans Serv Comput 9(1):33–45
Zurück zum Zitat Gandomi AH, Yang X-S, Alavi AH (2013) Cuckoo search algorithm: a metaheuristic approach to solve structural optimization problems. Eng Comput 29(1):17–35CrossRef Gandomi AH, Yang X-S, Alavi AH (2013) Cuckoo search algorithm: a metaheuristic approach to solve structural optimization problems. Eng Comput 29(1):17–35CrossRef
Zurück zum Zitat Hamidzadeh J, Namaei N (2018) Belief-based chaotic algorithm for support vector data description. Soft Comput 23:1–26MATH Hamidzadeh J, Namaei N (2018) Belief-based chaotic algorithm for support vector data description. Soft Comput 23:1–26MATH
Zurück zum Zitat Hamidzadeh J, Monsefi R, Yazdi HS (2015) IRAHC: instance reduction algorithm using hyperrectangle clustering. Pattern Recogn 48(5):1878–1889MATHCrossRef Hamidzadeh J, Monsefi R, Yazdi HS (2015) IRAHC: instance reduction algorithm using hyperrectangle clustering. Pattern Recogn 48(5):1878–1889MATHCrossRef
Zurück zum Zitat Hamidzadeh J, Sadeghi R, Namaei N (2017) Weighted support vector data description based on chaotic bat algorithm. Appl Soft Comput 60:540–551CrossRef Hamidzadeh J, Sadeghi R, Namaei N (2017) Weighted support vector data description based on chaotic bat algorithm. Appl Soft Comput 60:540–551CrossRef
Zurück zum Zitat Harde S, Sahare V (2016) Design and implementation of ACO feature selection algorithm for data stream mining. In: International conference on automatic control and dynamic optimization techniques (ICACDOT), IEEE Harde S, Sahare V (2016) Design and implementation of ACO feature selection algorithm for data stream mining. In: International conference on automatic control and dynamic optimization techniques (ICACDOT), IEEE
Zurück zum Zitat Himabindu K, Jyothi S, Mamatha D (2019) GA-based feature selection for squid’s classification. In: Wang J, Reddy G, Prasad V, Reddy V (eds) Soft computing and signal processing. Springer, Berlin, pp 29–36CrossRef Himabindu K, Jyothi S, Mamatha D (2019) GA-based feature selection for squid’s classification. In: Wang J, Reddy G, Prasad V, Reddy V (eds) Soft computing and signal processing. Springer, Berlin, pp 29–36CrossRef
Zurück zum Zitat Hossain MA, Jia X, Benediktsson JA (2016) One-class oriented feature selection and classification of heterogeneous remote sensing images. IEEE J Sel Top Appl Earth Observ Remote Sens 9(4):1606–1612CrossRef Hossain MA, Jia X, Benediktsson JA (2016) One-class oriented feature selection and classification of heterogeneous remote sensing images. IEEE J Sel Top Appl Earth Observ Remote Sens 9(4):1606–1612CrossRef
Zurück zum Zitat Hu B et al (2016) Feature selection for optimized high-dimensional biomedical data using the improved shuffled frog leaping algorithm. IEEE/ACM Trans Comput Biol Bioinf 15(6):1765–1773CrossRef Hu B et al (2016) Feature selection for optimized high-dimensional biomedical data using the improved shuffled frog leaping algorithm. IEEE/ACM Trans Comput Biol Bioinf 15(6):1765–1773CrossRef
Zurück zum Zitat Huang C-L, Dun J-F (2008) A distributed PSO–SVM hybrid system with feature selection and parameter optimization. Appl Soft Comput 8(4):1381–1391CrossRef Huang C-L, Dun J-F (2008) A distributed PSO–SVM hybrid system with feature selection and parameter optimization. Appl Soft Comput 8(4):1381–1391CrossRef
Zurück zum Zitat Huang P et al (2018) Feature extraction based on graph discriminant embedding and its applications to face recognition. Soft Comput 23(16):1–14 Huang P et al (2018) Feature extraction based on graph discriminant embedding and its applications to face recognition. Soft Comput 23(16):1–14
Zurück zum Zitat Huda S et al (2016) A hybrid feature selection with ensemble classification for imbalanced healthcare data: a case study for brain tumor diagnosis. IEEE Access 4:9145–9154CrossRef Huda S et al (2016) A hybrid feature selection with ensemble classification for imbalanced healthcare data: a case study for brain tumor diagnosis. IEEE Access 4:9145–9154CrossRef
Zurück zum Zitat Hussien AG et al (2019) S-shaped binary whale optimization algorithm for feature selection. In: Bhattacharyya S, Mukherjee A, Bhaumik H, Das S, Yoshida K (eds) Recent trends in signal and image processing. Springer, Berlin, pp 79–87CrossRef Hussien AG et al (2019) S-shaped binary whale optimization algorithm for feature selection. In: Bhattacharyya S, Mukherjee A, Bhaumik H, Das S, Yoshida K (eds) Recent trends in signal and image processing. Springer, Berlin, pp 79–87CrossRef
Zurück zum Zitat Jayabarathi T, Raghunathan T, Gandomi A (2018) The bat algorithm, variants and some practical engineering applications: a review. In: Yang XS (ed) Nature-inspired algorithms and applied optimization. Springer, Cham, pp 313–330CrossRef Jayabarathi T, Raghunathan T, Gandomi A (2018) The bat algorithm, variants and some practical engineering applications: a review. In: Yang XS (ed) Nature-inspired algorithms and applied optimization. Springer, Cham, pp 313–330CrossRef
Zurück zum Zitat Jothiprakash V, Arunkumar R (2013) Optimization of hydropower reservoir using evolutionary algorithms coupled with chaos. Water Resour Manag 27(7):1963–1979CrossRef Jothiprakash V, Arunkumar R (2013) Optimization of hydropower reservoir using evolutionary algorithms coupled with chaos. Water Resour Manag 27(7):1963–1979CrossRef
Zurück zum Zitat Kriegel H-P, Kröger P, Zimek A (2009) Clustering high-dimensional data: a survey on subspace clustering, pattern-based clustering, and correlation clustering. ACM Trans Knowl Discov Data (TKDD) 3(1):1CrossRef Kriegel H-P, Kröger P, Zimek A (2009) Clustering high-dimensional data: a survey on subspace clustering, pattern-based clustering, and correlation clustering. ACM Trans Knowl Discov Data (TKDD) 3(1):1CrossRef
Zurück zum Zitat Kumar L, Bharti KK (2019) An improved BPSO algorithm for feature selection. In: Khare A, Tiwary U, Sethi I, Singh N (eds) Recent trends in communication, computing, and electronics. Springer, Berlin, pp 505–513CrossRef Kumar L, Bharti KK (2019) An improved BPSO algorithm for feature selection. In: Khare A, Tiwary U, Sethi I, Singh N (eds) Recent trends in communication, computing, and electronics. Springer, Berlin, pp 505–513CrossRef
Zurück zum Zitat Lee J, Kim D-W (2016) Efficient multi-label feature selection using entropy-based label selection. Entropy 18(11):405CrossRef Lee J, Kim D-W (2016) Efficient multi-label feature selection using entropy-based label selection. Entropy 18(11):405CrossRef
Zurück zum Zitat Li Y, Li T, Liu H (2017) Recent advances in feature selection and its applications. Knowl Inf Syst 53(3):551–577CrossRef Li Y, Li T, Liu H (2017) Recent advances in feature selection and its applications. Knowl Inf Syst 53(3):551–577CrossRef
Zurück zum Zitat Lichman M (2013) UCI machine learning repository. University of California, School of Information and Computer Science, Irvine, p 2017 Lichman M (2013) UCI machine learning repository. University of California, School of Information and Computer Science, Irvine, p 2017
Zurück zum Zitat Li-Jiang Y, Tian-Lun C (2002) Application of chaos in genetic algorithms. Commun Theor Phys 38(2):168CrossRef Li-Jiang Y, Tian-Lun C (2002) Application of chaos in genetic algorithms. Commun Theor Phys 38(2):168CrossRef
Zurück zum Zitat Luo T et al (2018) Semi-supervised feature selection via insensitive sparse regression with application to video semantic recognition. IEEE Trans Knowl Data Eng 30(10):1943–1956CrossRef Luo T et al (2018) Semi-supervised feature selection via insensitive sparse regression with application to video semantic recognition. IEEE Trans Knowl Data Eng 30(10):1943–1956CrossRef
Zurück zum Zitat Mafarja M, Mirjalili S (2018) Whale optimization approaches for wrapper feature selection. Appl Soft Comput 62:441–453CrossRef Mafarja M, Mirjalili S (2018) Whale optimization approaches for wrapper feature selection. Appl Soft Comput 62:441–453CrossRef
Zurück zum Zitat Mafarja M et al (2019b) Binary grasshopper optimisation algorithm approaches for feature selection problems. Expert Syst Appl 117:267–286CrossRef Mafarja M et al (2019b) Binary grasshopper optimisation algorithm approaches for feature selection problems. Expert Syst Appl 117:267–286CrossRef
Zurück zum Zitat Masud MM, et al (2010) Classification and novel class detection of data streams in a dynamic feature space. In: Joint European conference on machine learning and knowledge discovery in databases. 2010. Springer Masud MM, et al (2010) Classification and novel class detection of data streams in a dynamic feature space. In: Joint European conference on machine learning and knowledge discovery in databases. 2010. Springer
Zurück zum Zitat Mirjalili S, Mirjalili SM, Lewis A (2014) Gray wolf optimizer. Adv Eng Softw 69:46–61CrossRef Mirjalili S, Mirjalili SM, Lewis A (2014) Gray wolf optimizer. Adv Eng Softw 69:46–61CrossRef
Zurück zum Zitat Mistry K et al (2017) A micro-GA embedded PSO feature selection approach to intelligent facial emotion recognition. IEEE Trans Cybern 47(6):1496–1509CrossRef Mistry K et al (2017) A micro-GA embedded PSO feature selection approach to intelligent facial emotion recognition. IEEE Trans Cybern 47(6):1496–1509CrossRef
Zurück zum Zitat Nayar N, Ahuja S, Jain S (2019) Swarm intelligence for feature selection: a review of literature and reflection on future challenges. In: Kolhe M, Trivedi M, Tiwari S, Singh V (eds) Advances in data and information sciences. Springer, Berlin, pp 211–221CrossRef Nayar N, Ahuja S, Jain S (2019) Swarm intelligence for feature selection: a review of literature and reflection on future challenges. In: Kolhe M, Trivedi M, Tiwari S, Singh V (eds) Advances in data and information sciences. Springer, Berlin, pp 211–221CrossRef
Zurück zum Zitat Neggaz N, Houssein EH, Hussain K (2020a) An efficient henry gas solubility optimization for feature selection. Expert Syst Appl 152:113364CrossRef Neggaz N, Houssein EH, Hussain K (2020a) An efficient henry gas solubility optimization for feature selection. Expert Syst Appl 152:113364CrossRef
Zurück zum Zitat Neggaz N et al (2020b) Boosting salp swarm algorithm by sine cosine algorithm and disrupt operator for feature selection. Expert Syst Appl 145:113103CrossRef Neggaz N et al (2020b) Boosting salp swarm algorithm by sine cosine algorithm and disrupt operator for feature selection. Expert Syst Appl 145:113103CrossRef
Zurück zum Zitat Oliva D, Abd Elaziz M (2020) An improved brainstorm optimization using chaotic opposite-based learning with disruption operator for global optimization and feature selection. Soft Comput 24:1–22CrossRef Oliva D, Abd Elaziz M (2020) An improved brainstorm optimization using chaotic opposite-based learning with disruption operator for global optimization and feature selection. Soft Comput 24:1–22CrossRef
Zurück zum Zitat Peng H, Fan Y (2017) Feature selection by optimizing a lower bound of conditional mutual information. Inf Sci 418:652–667CrossRef Peng H, Fan Y (2017) Feature selection by optimizing a lower bound of conditional mutual information. Inf Sci 418:652–667CrossRef
Zurück zum Zitat Pes B, Dessì N, Angioni M (2017) Exploiting the ensemble paradigm for stable feature selection: a case study on high-dimensional genomic data. Inf Fusion 35:132–147CrossRef Pes B, Dessì N, Angioni M (2017) Exploiting the ensemble paradigm for stable feature selection: a case study on high-dimensional genomic data. Inf Fusion 35:132–147CrossRef
Zurück zum Zitat Qi C et al (2017) Feature selection and multiple kernel boosting framework based on PSO with mutation mechanism for hyperspectral classification. Neurocomputing 220:181–190CrossRef Qi C et al (2017) Feature selection and multiple kernel boosting framework based on PSO with mutation mechanism for hyperspectral classification. Neurocomputing 220:181–190CrossRef
Zurück zum Zitat Rajabioun R (2011) Cuckoo optimization algorithm. Appl Soft Comput 11(8):5508–5518CrossRef Rajabioun R (2011) Cuckoo optimization algorithm. Appl Soft Comput 11(8):5508–5518CrossRef
Zurück zum Zitat Ramírez-Gallego S et al (2017) A survey on data preprocessing for data stream mining: current status and future directions. Neurocomputing 239:39–57CrossRef Ramírez-Gallego S et al (2017) A survey on data preprocessing for data stream mining: current status and future directions. Neurocomputing 239:39–57CrossRef
Zurück zum Zitat Rao H et al (2019) Feature selection based on artificial bee colony and gradient boosting decision tree. Appl Soft Comput 74:634–642CrossRef Rao H et al (2019) Feature selection based on artificial bee colony and gradient boosting decision tree. Appl Soft Comput 74:634–642CrossRef
Zurück zum Zitat Rodrigues D et al. (2014) A binary krill herd approach for feature selection. In: 2014 22nd international conference on pattern recognition (ICPR), 2014. IEEE Rodrigues D et al. (2014) A binary krill herd approach for feature selection. In: 2014 22nd international conference on pattern recognition (ICPR), 2014. IEEE
Zurück zum Zitat Saremi S, Mirjalili S, Lewis A (2014a) Biogeography-based optimisation with chaos. Neural Comput Appl 25(5):1077–1097CrossRef Saremi S, Mirjalili S, Lewis A (2014a) Biogeography-based optimisation with chaos. Neural Comput Appl 25(5):1077–1097CrossRef
Zurück zum Zitat Saremi S, Mirjalili SM, Mirjalili S (2014b) Chaotic krill herd optimization algorithm. Procedia Technol 12:180–185CrossRef Saremi S, Mirjalili SM, Mirjalili S (2014b) Chaotic krill herd optimization algorithm. Procedia Technol 12:180–185CrossRef
Zurück zum Zitat Sayed GI, Hassanien AE, Azar AT (2019) Feature selection via a novel chaotic crow search algorithm. Neural Comput Appl 31(1):1–18CrossRef Sayed GI, Hassanien AE, Azar AT (2019) Feature selection via a novel chaotic crow search algorithm. Neural Comput Appl 31(1):1–18CrossRef
Zurück zum Zitat Shunmugapriya P, Kanmani S (2017) A hybrid algorithm using ant and bee colony optimization for feature selection and classification (AC-ABC Hybrid). Swarm Evol Comput 36:27–36CrossRef Shunmugapriya P, Kanmani S (2017) A hybrid algorithm using ant and bee colony optimization for feature selection and classification (AC-ABC Hybrid). Swarm Evol Comput 36:27–36CrossRef
Zurück zum Zitat Simon D (2008) Biogeography-based optimization. IEEE Trans Evol Comput 12(6):702–713CrossRef Simon D (2008) Biogeography-based optimization. IEEE Trans Evol Comput 12(6):702–713CrossRef
Zurück zum Zitat Sivagaminathan RK, Ramakrishnan S (2007) A hybrid approach for feature subset selection using neural networks and ant colony optimization. Expert Syst Appl 33(1):49–60CrossRef Sivagaminathan RK, Ramakrishnan S (2007) A hybrid approach for feature subset selection using neural networks and ant colony optimization. Expert Syst Appl 33(1):49–60CrossRef
Zurück zum Zitat Solorio-Fernández S, Carrasco-Ochoa JA, Martínez-Trinidad JF (2020) A review of unsupervised feature selection methods. Artif Intell Rev 53(2):907–948CrossRef Solorio-Fernández S, Carrasco-Ochoa JA, Martínez-Trinidad JF (2020) A review of unsupervised feature selection methods. Artif Intell Rev 53(2):907–948CrossRef
Zurück zum Zitat Song J et al (2016) Deep and fast: deep learning hashing with semi-supervised graph construction. Image Vis Comput 55:101–108CrossRef Song J et al (2016) Deep and fast: deep learning hashing with semi-supervised graph construction. Image Vis Comput 55:101–108CrossRef
Zurück zum Zitat Statnikov A et al (2005) A comprehensive evaluation of multicategory classification methods for microarray gene expression cancer diagnosis. Bioinformatics 21(5):631–643CrossRef Statnikov A et al (2005) A comprehensive evaluation of multicategory classification methods for microarray gene expression cancer diagnosis. Bioinformatics 21(5):631–643CrossRef
Zurück zum Zitat Sweetlin JD, Nehemiah HK, Kannan A (2017) Feature selection using ant colony optimization with tandem-run recruitment to diagnose bronchitis from CT scan images. Comput Methods Programs Biomed 145:115–125CrossRef Sweetlin JD, Nehemiah HK, Kannan A (2017) Feature selection using ant colony optimization with tandem-run recruitment to diagnose bronchitis from CT scan images. Comput Methods Programs Biomed 145:115–125CrossRef
Zurück zum Zitat Syberfeldt A (2014) Multi-objective optimization of a real-world manufacturing process using cuckoo search. In: Yang XS (ed) Cuckoo search and firefly algorithm. Springer, Cham, pp 179–193CrossRef Syberfeldt A (2014) Multi-objective optimization of a real-world manufacturing process using cuckoo search. In: Yang XS (ed) Cuckoo search and firefly algorithm. Springer, Cham, pp 179–193CrossRef
Zurück zum Zitat Thaher T et al (2020) Binary Harris Hawks optimizer for high-dimensional, low sample size feature selection. In: Mirjalili S, Faris H, Aljarah I (eds) Evolutionary machine learning techniques. Springer, Berlin, pp 251–272CrossRef Thaher T et al (2020) Binary Harris Hawks optimizer for high-dimensional, low sample size feature selection. In: Mirjalili S, Faris H, Aljarah I (eds) Evolutionary machine learning techniques. Springer, Berlin, pp 251–272CrossRef
Zurück zum Zitat Tizhoosh HR (2005) Opposition-based learning: a new scheme for machine intelligence. In: International conference on computational intelligence for modelling, control and automation and international conference on intelligent agents, Web technologies and internet commerce (CIMCA-IAWTIC’06) Tizhoosh HR (2005) Opposition-based learning: a new scheme for machine intelligence. In: International conference on computational intelligence for modelling, control and automation and international conference on intelligent agents, Web technologies and internet commerce (CIMCA-IAWTIC’06)
Zurück zum Zitat Viswanathan G, Raposo E, Da Luz M (2008) Lévy flights and superdiffusion in the context of biological encounters and random searches. Phys Life Rev 5(3):133–150CrossRef Viswanathan G, Raposo E, Da Luz M (2008) Lévy flights and superdiffusion in the context of biological encounters and random searches. Phys Life Rev 5(3):133–150CrossRef
Zurück zum Zitat Wang N, Liu L, Liu L (2001) Genetic algorithm in chaos. Or Trans 5(3):1–10 Wang N, Liu L, Liu L (2001) Genetic algorithm in chaos. Or Trans 5(3):1–10
Zurück zum Zitat Wang G-G et al (2019) A comprehensive review of krill herd algorithm: variants, hybrids and applications. Artif Intell Rev 51(1):1–30CrossRef Wang G-G et al (2019) A comprehensive review of krill herd algorithm: variants, hybrids and applications. Artif Intell Rev 51(1):1–30CrossRef
Zurück zum Zitat Xu S, Dai J, Shi H (2018) Semi-supervised feature selection based on least square regression with redundancy minimization. In: 2018 International joint conference on neural networks (IJCNN). 2018. IEEE Xu S, Dai J, Shi H (2018) Semi-supervised feature selection based on least square regression with redundancy minimization. In: 2018 International joint conference on neural networks (IJCNN). 2018. IEEE
Zurück zum Zitat Yadav S, Ekbal A, Saha S (2018) Feature selection for entity extraction from multiple biomedical corpora: a PSO-based approach. Soft Comput 22(20):6881–6904CrossRef Yadav S, Ekbal A, Saha S (2018) Feature selection for entity extraction from multiple biomedical corpora: a PSO-based approach. Soft Comput 22(20):6881–6904CrossRef
Zurück zum Zitat Yan C et al (2019) Hybrid binary coral reefs optimization algorithm with simulated annealing for feature selection in high-dimensional biomedical datasets. Chemom Intell Lab Syst 184:102–111CrossRef Yan C et al (2019) Hybrid binary coral reefs optimization algorithm with simulated annealing for feature selection in high-dimensional biomedical datasets. Chemom Intell Lab Syst 184:102–111CrossRef
Zurück zum Zitat Yang XS, Deb S (2009) Cuckoo search via Lévy flights. In: Nature & biologically inspired computing, 2009. NaBIC 2009. World Congress on. 2009. IEEE Yang XS, Deb S (2009) Cuckoo search via Lévy flights. In: Nature & biologically inspired computing, 2009. NaBIC 2009. World Congress on. 2009. IEEE
Zurück zum Zitat Yang X-K et al (2018) Semi-supervised minimum redundancy maximum relevance feature selection for audio classification. Multimed Tools Appl 77(1):713–739CrossRef Yang X-K et al (2018) Semi-supervised minimum redundancy maximum relevance feature selection for audio classification. Multimed Tools Appl 77(1):713–739CrossRef
Zurück zum Zitat Zare M, Eftekhari M, Aghamollaei G (2019) Supervised feature selection via matrix factorization based on singular value decomposition. Chemom Intell Lab Syst 185:105–113CrossRef Zare M, Eftekhari M, Aghamollaei G (2019) Supervised feature selection via matrix factorization based on singular value decomposition. Chemom Intell Lab Syst 185:105–113CrossRef
Zurück zum Zitat Zhang M et al (2019) Multi-temporal SAR image classification of coastal plain wetlands using a new feature selection method and random forests. Remote Sens Lett 10(3):312–321CrossRef Zhang M et al (2019) Multi-temporal SAR image classification of coastal plain wetlands using a new feature selection method and random forests. Remote Sens Lett 10(3):312–321CrossRef
Zurück zum Zitat Zhenyu G et al (2006) Self-adaptive chaos differential evolution. In: Advances in natural computation. pp. 972–975 Zhenyu G et al (2006) Self-adaptive chaos differential evolution. In: Advances in natural computation. pp. 972–975
Zurück zum Zitat Zhong Z (2020) Adaptive graph learning and low-rank constraint for supervised spectral feature selection. Neural Comput Appl 32(11):1–10CrossRef Zhong Z (2020) Adaptive graph learning and low-rank constraint for supervised spectral feature selection. Neural Comput Appl 32(11):1–10CrossRef
Metadaten
Titel
Feature selection by using chaotic cuckoo optimization algorithm with levy flight, opposition-based learning and disruption operator
verfasst von
Mahsa kelidari
Javad Hamidzadeh
Publikationsdatum
09.10.2020
Verlag
Springer Berlin Heidelberg
Erschienen in
Soft Computing / Ausgabe 4/2021
Print ISSN: 1432-7643
Elektronische ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-020-05349-x

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