Abstract

Introduction: This paper aims to present the design of a mobile application involving NFC technology and a collaborative recommendation algorithm under the K-neighbors technique, allowing to observe personalized suggestions for each client.Objective: Design and develop a mobile application, using NFC technologies and K-Neighbors Technique in a recommendation algorithm, for a Procurement System.Methodology: The process followed for the design and development of the application focuses on:• Review of the state of the art in mobile shopping systems.• State-of-the-art construction in the use of NFC technology and AI techniques for recommending systems focused on K-Neighbors Algorithms• Proposed system design• Parameterization and implementation of the K-Neighbors Technique and integration of NFC Technology• Proposed System Implementation and Testing.Results: Among the results obtained are detailed:• Mobile application that integrates Android, NFC Technologies and a Technique of Algorithm Recommendation• Parameterization of the K-Neighbors Technique, to be used within the recommended algorithm.• Implementation of functional requirements that allow the generation of personalized recommendations for purchase to the user, user ratingsConclusions: The k-neighbors technique in a recommendation algorithm allows the client to provide a series of recommendations with a level of security, since this algorithm performs calculations taking into account multiple parameters and contrasts the results obtained for other users, finding the articles with a Greater degree of similarity with the customer profile. This algorithm starts from a sample of similar, complementary and other unrelated products, applying its respective formulation, we obtain that the recommendation is made only with the complementary products that obtained higher qualification; Making a big difference with most recommending systems on the market, which are limited to suggest the best-selling, best qualified or in the same category.

Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call