Building a fuzzy logic-based McCulloch-Pitts Neuron recommendation model to uplift accuracy

Bam Bahadur Sinha1, R. Dhanalakshmi2
1Department of Computer Science and Engineering, National Institute of Technology, Nagaland, Dimapur, India
2Department of Computer Science and Engineering, Indian Institute of Information Technology, Tiruchirappalli, India

Tóm tắt

Recommender system is one of the most popular technique used for information filtering. It helps in discovering hidden knowledge patterns from a large set of ubiquitous products and services. The most popular approaches such as collaborative filtering suffers from the complication of data sparsity, overspecification and high computation complexity when dataset drifts from scarcity to abundance. In this regard, we developed a hybrid model that contemplates between accuracy and computation time in order to generate a real-time most relevant items for the users. We made use of imputation technique, fuzzy logic using novel similarity technique and McCulloch-Pitts(MP) Neuron to cope up with aforementioned complications. The experimental evaluation on MovieLens dataset shows that the proposed model yields high efficiency and effectiveness. We tested the resultant classification accuracy of our proposed model using precision, recall and f1-score.

Từ khóa


Tài liệu tham khảo

Biessmann F, Salinas D, Schelter S, Schmidt P, Lange D (2018, October). Deep Learning for Missing Value Imputationin Tables with Non-Numerical Data. In: Proceedings of the 27th ACM International Conference on Information and Knowledge Management (pp. 2017-2025). ACM Bobadilla J, Ortega F, Hernando A, Alcalá J (2011) Improving collaborative filtering recommender system results and performance using genetic algorithms. Knowl-based Syst 24(8):1310–1316 Chakraverty S, Sahoo DM, Mahato NR (2019) Concepts of soft computing: fuzzy and ANN with programming. Springer, New York Dubey AK, Gupta U, Jain S (2018) Comparative study of K-means and fuzzy C-means algorithms on the breast cancer data. Int J Adv Sci Eng Inf Technol 8(1):18–29 Huang W, Ribeiro A (2018) Hierarchical clustering given confidence intervals of metric distances. IEEE Trans Signal Proces 66(10):2600–2615 Jugovac M, Jannach D, Lerche L (2017) Efficient optimization of multiple recommendation quality factors according to individual user tendencies. Expert Syst Appl 81:321–331 Lefebvre W, Vurpillot F, Sauvage X (eds) (2016) Atom probe tomography: put theory into practice. Academic Press, Cambridge Lei T, Jia X, Zhang Y, He L, Meng H, Nandi AK (2018) Significantly fast and robust fuzzy c-means clustering algorithm based on morphological reconstruction and membership filtering. IEEE Trans Fuzzy Syst 26(5):3027–3041 McCarthy R V, McCarthy M M, Ceccucci W, Halawi L (2019) Introduction to predictive analytics. In: Applying predictive analytics. Springer, Cham, pp 1–25 Najafabadi MK, Mahrin MNR, Chuprat S, Sarkan HM (2017) Improving the accuracy of collaborative filtering recommendations using clustering and association rules mining on implicit data. Comput Hum Behav 67:113–128 Nilashi M (2016) An overview of data mining techniques in recommender systems. J Soft Comput Decis Support Syst 3(6):16–44 Resche-Rigon M, White IR (2018) Multiple imputation by chained equations for systematically and sporadically missing multilevel data. Stat Methods Med Res 27(6):1634–1649 Sahu AK, Dwivedi P (2019) User profile as a bridge in cross-domain recommender systems for sparsity reduction. Applied Intelligence 1–21 Sajjadi M S, Bachem O, Lucic M, Bousquet O, Gelly S (2018) Assessing generative models via precision and recall. In: Advances in Neural Information Processing Systems, pp 5228–5237 Syakur MA, Khotimah BK, Rochman EMS, Satoto BD (2018) Integration k-means clustering method and elbow method for identification of the best customer profile cluster. In: IOP Conference Series: Materials Science and Engineering (Vol. 336, No. 1, p. 012017). IOP Publishing Toan NT, Cong PT, Tam NT, Hung NQV, Stantic B (2018) Diversifying group recommendation. IEEE Access 6:17776–17786 Tsai CF, Hung C (2012) Cluster ensembles in collaborative filtering recommendation. Appl Soft Comput 12(4):1417–1425