Implementation of the k -Neighbors Technique in a recommender algorithm for a purchasing system using NFC and Android

Journal Title: INGE CUC - Year 2017, Vol 13, Issue 1

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 ratings Conclusions: 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.

Authors and Affiliations

Oscar Riveros Rey, Juan Romero Fajardo, Jhon Francined Herrera Cubides

Keywords

Related Articles

Determination of resistant capacity of post-tensioned beam-slab concrete bridges using ambient vibration testing: A case study of El Ramo bridge

To monitor the structural health of a bridge over its lifetime is necessary to have numerical models to, based on changes in the structural response of it, detect possible damage. For this reason and to deepen the unders...

Implementation of the k -Neighbors Technique in a recommender algorithm for a purchasing system using NFC and Android

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 suggesti...

Influence of the dry density and compaction water content on the scanning drying curve of a residual soil derived from volcanic ash

Introduction: Scanning wetting or drying curves show the relation between successive measurements of water content and suction of an originally partly saturated soil which follows a drying or wetting process. Objective:...

Download PDF file
  • EP ID EP221350
  • DOI 10.17981/ingecuc.13.1.2017.01
  • Views 106
  • Downloads 0

How To Cite

Oscar Riveros Rey, Juan Romero Fajardo, Jhon Francined Herrera Cubides (2017). Implementation of the k -Neighbors Technique in a recommender algorithm for a purchasing system using NFC and Android. INGE CUC, 13(1), 9-18. https://europub.co.uk/articles/-A-221350