Predictive User Modeling with Actionable Attributes
Indre Zliobaite, Mykola Pechenizkiy

TL;DR
This paper explores how to learn optimal actions in predictive models to maximize desired outcomes, emphasizing instance sensitivity and proposing three supervised learning approaches with focused training, validated on real-world case studies.
Contribution
It introduces three supervised learning methods for selecting actionable attributes at the instance level to improve outcome maximization in predictive modeling.
Findings
Focused training improves decision accuracy for borderline instances
Proposed approaches outperform baseline methods in case studies
Effective in web analytics and e-learning domains
Abstract
Different machine learning techniques have been proposed and used for modeling individual and group user needs, interests and preferences. In the traditional predictive modeling instances are described by observable variables, called attributes. The goal is to learn a model for predicting the target variable for unseen instances. For example, for marketing purposes a company consider profiling a new user based on her observed web browsing behavior, referral keywords or other relevant information. In many real world applications the values of some attributes are not only observable, but can be actively decided by a decision maker. Furthermore, in some of such applications the decision maker is interested not only to generate accurate predictions, but to maximize the probability of the desired outcome. For example, a direct marketing manager can choose which type of a special offer to…
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Taxonomy
TopicsRecommender Systems and Techniques · Data Stream Mining Techniques · Advanced Bandit Algorithms Research
