A Model- Based Research Material Recommendation System For Individual Users

Journal Title: Transactions on Machine Learning and Artificial Intelligence - Year 2017, Vol 5, Issue 2

Abstract

As there is an enormous amount of online research material available, finding pertinent information for specific purposes has become a tedious chore. So there is a requirement of the research paper recommendation system to facilitate research scholars in finding their interested and relevant research papers. There are many paper recommendation systems available, most of them are depending on paper assemblage, references, user profile, mind maps. This information is generally not easily available. The majority of the prevailing recommender system is based on collaborative filtering that rely on other user’s proclivity. On the other hand, content-based methods use information regarding an item itself to make a recommendation. In this paper, we present a research paper recommendation method that is based on single paper. Our method uses content-based recommendation approach that employs information extraction and text categorization. . It performs the profile learning by using naive Bayesian text classifier and generates recommendation on the basis of an individual’s preference.

Authors and Affiliations

Nikhat Akhtar

Keywords

Related Articles

Creatinine, Urea and Uric Acid in Hospitalized Patients with and Without Hyperglycemia Analysis using Generalized Additive Model

Hyperglycemia is an important risk factor for heart disease and premature mortality. In hospitalized patients, it is related to an increase in morbidity and development of other disease like kidney disease. To evaluate t...

Application of Genetic Algorithms Coupled with Neural Networks to Optimization of Reinforced Concrete Footings

This paper first applies genetic algorithms to optimally design reinforced concrete isolated footings subjected to concentric loading. Based on the ACI Building Code, constraints are built by considering wide-beam and pu...

An Efficient Brain Tumour Extraction in MR Images using Ford-Fulkerson Algorithm

Brain tumor division intends to discrete the diverse tumor tissues, for example, dynamic cells, necrotic core,and edema from typical cerebrum tissues of White Matter (WM), Gray Matter (GM), and Cerebrospinal Fluid (CSF)....

Approaching Mental Disorders from the Engineering Point of View

Mental illness and mental disorders represent an increasing burden affectingthepopulation of all ages at all places, challenging mental health and health systems and contributing to the onset or to the acceleration of ma...

Combining Overall and Target Oriented Sentiment Analysis over Portuguese Text from Social Media

This document describes an approach to perform sentiment analysis on social media Portuguese content. In a single system, we perform polarity classification for both the overall sentiment, and target oriented sentiment....

Download PDF file
  • EP ID EP275560
  • DOI 10.14738/tmlai.52.2842
  • Views 40
  • Downloads 0

How To Cite

Nikhat Akhtar (2017). A Model- Based Research Material Recommendation System For Individual Users. Transactions on Machine Learning and Artificial Intelligence, 5(2), 1-8. https://europub.co.uk/articles/-A-275560