4.7 Article

OCI-CBR: A hybrid model for decision support in preference-aware investment scenarios

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 211, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.118568

Keywords

Case-base reasoning; Capital investment; Recommender systems; Hybrid models; Machine learning

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This article proposes an adaptable hybrid model that recommends effective investments in different scenarios. The model incorporates a case-based reasoning system using a classification algorithm to prune the case base and recommend optimal investments based on projected company growth. The intelligent model optimizes the case base through different algorithms for data retrieval and reuse, taking into account investor preferences and decisions.
This article proposes an adaptable hybrid model for recommending effective investments in different scenarios. Currently, a wide variety of methodologies are used for company valuation, especially those that take into account financial statements. However, for private held companies, there is no method that would be capable of predicting, with full certainty, the future success of an investment. The Optimal Capital Investment Case -Base Reasoning (OCI-CBR) consists of a case-based reasoning system that uses a classification algorithm to prune the case base according to a projected increase in certain company attributes. Once the cases have been pruned and the case is fed with the most profitable investment opportunities, the case-based reasoning system recommends optimal investments to potential investors. The complete model is conceived as an intelligent hybrid model that optimizes the case base by employing different algorithms for data retrieval and reuse. The system makes recommendations based on the investor's preferences and the investment decisions of other investors with similar profiles or interests.

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