International Journal of Information Engineering and Electronic Business (IJIEEB)

IJIEEB Vol. 12, No. 2, Apr. 2020

Cover page and Table of Contents: PDF (size: 637KB)

Table Of Contents

REGULAR PAPERS

An Interactive Cart with Analytics Recommendation and Tracking-iCART

By Sanath Bhargav R Meeradevi Monica R Mundada Sammed Gomatesh Ravanavar

DOI: https://doi.org/10.5815/ijieeb.2020.02.01, Pub. Date: 8 Apr. 2020

It is very common to use trolleys in supermarkets, they are machines which help us in easily carrying around a lot of items in the supermarket. iCart aims to extend the services offered by these trolleys by augmenting features such as indoor navigation, product recommendation and instantaneous reply to customer queries. For indoor navigation the RSSI values of the bluetooth modules are used to find the customers coordinates and dijkstra's algorithm is used for finding the shortest routes, for product recommendation age, gender and month of the year are passed as input parameters to a classification model and for replying to customer queries a chatbot is implemented using RASA framework. All the features mentioned will be integrated in a single LCD screen mounted on the trolley. This system not only wanes the energy spent by the customer foraging for items, but also increases the owner’s profits by providing product recommendations. This model is been implemented using IoT and Machine Learning techniques to save time of customer.

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Development Mobile Application of Bandung Tempo Doeloe based on Augmented Reality Using GPS Tracking Method

By Rafly Renaldy Azizah. Zakiah

DOI: https://doi.org/10.5815/ijieeb.2020.02.02, Pub. Date: 8 Apr. 2020

Bandung city is a tourism city in Indonesia, in addition there are historic buildings of the city of Bandung. The importance of knowing history so that history is not forgotten and lost. Augmented technology is technology that can create an interest in knowing something. Therefore, the authors make a mobile application in Bandung based on augmented reality with GPS tracking method, making it easier for those who want to know historical places and explain more interesting and deeper history in the city of Bandung.

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House Price Prediction Modeling Using Machine Learning

By M. Thamarai SP. Malarvizhi

DOI: https://doi.org/10.5815/ijieeb.2020.02.03, Pub. Date: 8 Apr. 2020

Machine Learning is seeing its growth more rapidly in this decade. Many applications and algorithms evolve in Machine Learning day to day. One such application found in journals is house price prediction. House prices are increasing every year which has necessitated the modeling of house price prediction. These models constructed, help the customers to purchase a house suitable for their need. Proposed work makes use of the attributes or features of the houses such as number of bedrooms available in the house, age of the house, travelling facility from the location, school facility available nearby the houses and Shopping malls available nearby the house location. House availability based on desired features of the house and house price prediction are modeled in the proposed work and the model is constructed for a small town in West Godavari district of Andhrapradesh. The work involves decision tree classification, decision tree regression and multiple linear regression and is implemented using Scikit-Learn Machine Learning Tool.

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Early Skin Cancer Detection Using Deep Convolutional Neural Networks on Mobile Smartphone

By Justice O. Emuoyibofarhe Daniel Ajisafe Ronke S. Babatunde Meinel Christoph

DOI: https://doi.org/10.5815/ijieeb.2020.02.04, Pub. Date: 8 Apr. 2020

Malignant melanoma is the most dangerous kind of skin cancer. It is mostly misidentified as benign lesion. The chance of surviving melanoma disease is high if detected early. In recent years, deep convolutional neural networks have attracted great attention owing to its outstanding performance in recognizing and classifying images. This research work performs a comparative analysis of three different convolutional neural networks (CNN) trained on skin cancerous and non-cancerous images, namely: a custom 3-layer CNN, VGG-16 CNN, and Google Inception V3.
Google Inception V3 achieved the best result, with training and test accuracy of 90% and 81% respectively and a sensitivity of 84%. This work contribution is mainly in the development of an android application that uses Google Inception V3 model for early detection of skin cancer.

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A Review on Ontology Development Methodologies for Developing Ontological Knowledge Representation Systems for various Domains

By Enesi Femi Aminu Ishaq Oyebisi Oyefolahan Muhammad Bashir Abdullahi Muhammadu Tajudeen Salaudeen

DOI: https://doi.org/10.5815/ijieeb.2020.02.05, Pub. Date: 8 Apr. 2020

The success of machine represented web known as semantic web largely hinges on ontologies. Ontology is a data modeling technique for structured data repository premised on collection of concepts with their semantic relationships and constraints on domain. There are existing methodologies to aid ontology development process. However, there is no single correct ontology design methodology. Therefore, this paper aims to present a review on existing ontology development approaches for different domains with the goal of identifying individual methodology’s weakness and suggests for hybridization in order to strengthen ontology development in terms of its content and constructions correctness. The analysis and comparison of the review were carried out by considering these criteria but not limited to: activities of each method, the initial domain of the methodology, ontology created from scratch or reuse, frequently used ontology management tools based on literature, subject granularity, and usage across different platforms. This review based on the literature showed some approaches that exhibit the required principles of ontology engineering in tandem with software development principles. Nonetheless, the review still noted some gaps among the methodologies that when bridged or hybridized a better correctness of ontology development would be achieved in building intelligent system.

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