Abstract

Recommender systems are software applications that provide or suggest items to intended users. These systems use filtering techniques to provide recommendations. The major ones of these techniques are collaborative-based filtering technique, content-based technique, and hybrid algorithm. The motivation came as a result of the need to integrate recommendation feature in digital libraries in order to reduce information overload. Content-based technique is adopted because of its suitability in domains or situations where items are more than the users. TF-IDF (Term Frequency Inverse Document Frequency) and cosine similarity were used to determine how relevant or similar a research paper is to a user's query or profile of interest. Research papers and user's query were represented as vectors of weights using Keyword-based Vector Space model. The weights indicate the degree of association between a research paper and a user's query. This paper also presents an algorithm to provide or suggest recommendations based on users' query. The algorithm employs both TF-IDF weighing scheme and cosine similarity measure. Based on the result or output of the system, integrating recommendation feature in digital libraries will help library users to find most relevant research papers to their needs.

Highlights

  • Library users do experience difficulties in getting or finding favorite digital objects from a large collection of digital objects in digital libraries

  • Recommender systems deal with information overload problems by filtering items that potentially may match the users' preferences or interests

  • Content-based approach is adopted for the design and implementation of research paper recommender system

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Summary

Introduction

Library users do experience difficulties in getting or finding favorite digital objects (e.g. research papers) from a large collection of digital objects in digital libraries. A recommender system becomes an important requirement in the design of digital libraries This would assist library users in getting favorite digital objects (e.g. research papers) from the large collection of digital objects in general [1]. Recommender systems are software applications that suggest or recommend items or products (in the case of ecommerce) to users. These systems use users' preferences or interests (supplied as inputs) and an appropriate algorithm in finding the relevant or desired items or products. These systems aid users to efficiently overcome the problem by filtering irrelevant information when users search for desired information [2]

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