2019
DOI: 10.1287/ijoc.2018.0823
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Modelling Human Decision Behaviour with Preference Learning

Abstract: Preferences provide a means for specifying the desires of a decision maker (DM) in a declarative way. In this paper, based on a DM’s pairwise preferences, we infer the DM’s unique decision model. We capture (a) the attitudinal character, (b) relative criteria importance, and (c) the criteria interaction, all of which are specific to the DM. We make use of the preference-learning (PL) technique to induce predictive preference models from empirical data. Because PL is emerging as a new subfield of machine learni… Show more

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Cited by 46 publications
(11 citation statements)
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“…Preference learning combines decision-making and ML, focusing on a group of attributes or individuals and models multi-group learning functions with historical data. With EXAI, preference learning is widely used for linguistic models [60], [61], [62]. In conjunction with preference learning methods, DL methods are used to set and estimate parameters for decision models, identify optimal weights of multiple attributes for the linguistic model, and identify the parameter for fusion aggregation function and distributed data.…”
Section: J Data Driven Learning Methodsmentioning
confidence: 99%
“…Preference learning combines decision-making and ML, focusing on a group of attributes or individuals and models multi-group learning functions with historical data. With EXAI, preference learning is widely used for linguistic models [60], [61], [62]. In conjunction with preference learning methods, DL methods are used to set and estimate parameters for decision models, identify optimal weights of multiple attributes for the linguistic model, and identify the parameter for fusion aggregation function and distributed data.…”
Section: J Data Driven Learning Methodsmentioning
confidence: 99%
“…A typical example of the compensation aggregation function is the pure mean operator that returns a value representing an average of preferences. Aggarwal and Fallah Tehrani (2019) proposed a compensative weighted averaging (CWA) aggregation operator to model the human aggregation process, which is achieved by controlling an additional adjustable parameter λ$\lambda $. In this study, we apply the CWA operator in group decision‐making process to model compensation among multiple decision makers in a flexible parameterized way.…”
Section: The Stochastic Compromise Analysis Methodsmentioning
confidence: 99%
“…Every multi-criteria decision-making (MCDM) process has two stages: a criteria-based evaluation of alternatives, followed by their accumulation to identify the alternative with the top aggregation score, which informs the DM's choice (Aggarwal and Fallah Tehrani, 2019 ). MCDM methods allow for intentional conclusions to be made, as they can deal with the inherent complexity of many issues, as well as the understanding that results from the involvement of multiple participants (De Brito and Evers, 2016 ).…”
Section: The Challenge Of Developing Multi-criteria Decisions and Met...mentioning
confidence: 99%