Abstract
This work uses the patterns learnt by machine learning models to convert the hard labels into probabilistic labels. The probabilistic labels by different learning models are combined using multi-criteria decision-making approaches. Preference order of alternatives is generated based on the decision probabilities assigned by these approaches. Both the preference order of alternatives and the patterns of learning models are provided as explainable knowledge, which gives a better interpretation about the decision space to a decision-maker. The choice of the final decision alternative depends on the decision-maker. The efficiency and the robustness of proposed decision-making model is verified over publicly available datasets. It can be observed from results that the performance of TOPSIS and PROMETHEE are equal for 9 out of 12 datasets.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Murphy, K.P.: Probabilistic machine learning: an introduction. MIT press (2022)
Huai, M., Miao, C., Li, Y., Suo, Q., Su, L., Zhang, A.: Learning distance metrics from probabilistic information. ACM Trans. Knowl. Disc. Data (TKDD) 14(5), 1–33 (2020)
Zhang, S.: Cost-sensitive KNN classification. Neurocomputing 391, 234–242 (2020)
Mathur, A., Foody, G.M.: Multiclass and binary SVM classification: implications for training and classification users. IEEE Geosci. Remote Sens. Lett. 5(2), 241–245 (2008)
Song, Y.Y., Ying, L.U.: Decision tree methods: applications for classification and prediction. Shanghai Arch. Psychiatry 27(2), 130 (2015)
Ren, J., Lee, S.D., Chen, X., Kao, B., Cheng, R., Cheung, D.: Naive Bayes classification of uncertain data. In 2009 Ninth IEEE International Conference on Data Mining, pp. 944–949. IEEE (2009)
Lin, R., Zhou, Z., You, S., Rao, R., Kuo, C.C.J.: Geometrical Interpretation and Design of Multilayer Perceptrons. IEEE Transactions on Neural Networks and Learning Systems (2022)
Dhurkari, R.K.: MCDM methods: practical difficulties and future directions for improvement. RAIRO-Oper. Res. 56(4), 2221–2233 (2022)
Böken, B.: On the appropriateness of Platt scaling in classifier calibration. Inf. Syst. 95, 101641 (2021)
Dua, D., Graff, C.: UCI machine learning repository. Irvine, CA: University of California, School of Information and Computer Science (2019). http://archive.ics.uci.edu/ml
Kavya, R., Christopher, J.: Interpretable systems based on evidential prospect theory for decision-making. Appl. Intell. 53, 1–26 (2022)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2023 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this paper
Cite this paper
Kavya, R., Gupta, S., Christopher, J., Panda, S. (2023). Explainable Decision Making Model by Interpreting Classification Algorithms. In: Abraham, A., Pllana, S., Casalino, G., Ma, K., Bajaj, A. (eds) Intelligent Systems Design and Applications. ISDA 2022. Lecture Notes in Networks and Systems, vol 715. Springer, Cham. https://doi.org/10.1007/978-3-031-35507-3_31
Download citation
DOI: https://doi.org/10.1007/978-3-031-35507-3_31
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-031-35506-6
Online ISBN: 978-3-031-35507-3
eBook Packages: Intelligent Technologies and RoboticsIntelligent Technologies and Robotics (R0)