cover
Contact Name
Rometdo Muzawi
Contact Email
jaia@sar.ac.id
Phone
-
Journal Mail Official
jaia@sar.ac.id
Editorial Address
jaia@sar.ac.id
Location
Kota pekanbaru,
Riau
INDONESIA
JAIA - Journal of Artificial Intelligence and Applications
ISSN : -     EISSN : 27467821     DOI : -
Core Subject : Science,
This journal publishes research results in the form of research articles, literature studies and articles in the form of concepts and policies in the field of computers in general: Machine Learning and Deep Learrning Clustering and Classification Prediction Document Mining and Text Mining Sentiment Analysis Spatial Data Mining Multi-Agent Systems Biologically Inspired Intelligence Intelligent control systems Complex Systems and Applications Computational Intelligence Soft Computing Image and Speech Signal Processing Computer Vision Pattern Recognition Numerical Computational Knowledge Based Systems and Knowledge Networks Knowledge discovery and Database Machine Learning Neural Networks and Applications Optimization and Decision Making Rough sets and Granular Computing Self-Organizing Systems Fuzzy Logic Decision Support and Expert System Business Intelligence Intelligence System Hybrid Algorithm Social Intelligence Social Media Analytic Stochastic Systems Support Vector Statistic and Matematic Modeling Web and mobile Intelligence
Articles 12 Documents
Search results for , issue "Vol. 2 No. 2 (2022): JAIA - Journal of Artificial Intelligence and Applications" : 12 Documents clear
Product Classification Based on Categories and Customer Interests on the Shopee Marketplace Using the Naïve Bayes Method Muhammad Oase Ansharullah; Wirta Agustin; Lusiana; Junadhi; Susi Erlinda; Fransiskus Zoromi
JAIA - Journal of Artificial Intelligence and Applications Vol. 2 No. 2 (2022): JAIA - Journal of Artificial Intelligence and Applications
Publisher : STMIK Amik Riau

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.33372/jaia.v2i2.888

Abstract

Marketplace is an electronic product marketing platform that brings together many sellers and buyers to transact with each other. The large variety of products sold on Shopee is one of the reasons this application is in great demand by all walks of life. However, the weakness of the large variety of products sold in a marketplace causes buyers who have no potential to buy these products. To overcome this problem, it is necessary to do a classification to determine which products are most in demand by customers. Product categories consist of: Clothing, Beauty Products, Daily Goods, Electronics, and Accessories. The classification method used is Naïve Bayes and the software used is WEKA. The next data collection is done by distributing questionnaires to the existing customers on social media namely, Whatsapp and Instagram, the distribution of the questionnaire is conducted through Google form. There are 90 questionnaires that will be distributed in this study. Some of the indicators asked in the questionnaire namely, do you like shopping online? And what marketplaces are commonly used. These results will be the training data. Interest categories are divided into 4 categories, namely: Very interested, Interested, Not interested, Very not interested. The results obtained in this study are clothing products (72 respondents) are products that are in great demand, daily goods products (7 respondents) are products of interest, beauty and electronic products (5 respondents) are products that are not in demand, and accessories (1 respondents ) is a product that is not very attractive to customers on the Shopee marketplace
Detection Of Malaria Parasites In Human Blood Cells Using Convolutional Neural Network Lusiana Efrizoni; Rais Amin; Ahmad Rizali
JAIA - Journal of Artificial Intelligence and Applications Vol. 2 No. 2 (2022): JAIA - Journal of Artificial Intelligence and Applications
Publisher : STMIK Amik Riau

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.33372/jaia.v2i2.947

Abstract

Malaria is a blood disease caused by the Plasmodium parasite which is transmitted by the bite of the female Anopheles mosquito. The diagnosis of malaria is carried out by a microscopist through examination of human blood cells. Their level of accuracy depends on the quality of the tool, expertise in classifying and counting infected and uninfected parasite cells. The disadvantages of examining this way include the difficulty in making a diagnosis on a large scale and the poor quality of the results. The dataset used in model evaluation is a dataset developed by LHNVBC which contains 27,558 cell image data. The malaria dataset will be processed through data science processing using a Convolutional Neural Network with the ResNet architecture. The model will conduct training on the dataset and then the model will be able to recognize malaria parasites in human blood cells. The model will be trained by optimizing multinomial logistic regression using Stochastic Gradient Descent (SGD) and Nesterov momentum values. The results of training data validation accuracy from model training with 50 epochs were obtained at 96.23% and 97% after being tested on data testing.

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