PERHITUNGAN ANALISIS SENTIMEN BERBASIS KOMPARASI ALGORITMA NAIVE BAYES DAN K-NEAREST NEIGHBOUR BERBASIS PARTICLE SWARM OPTIMIZATION PADA KOMENTAR INSIDEN PEMBALAP MOTOGP 2015

Jehan Septia Kurnia

Sari


Media to get information about news MotoGP rider very much like media TV, radio, newspapers, magazines, websites and others. But from most of the media is a media website which is very flexible because it can be accessed from a wide variety of places connected to the Internet, the information provided is up to date and everyone can comment on articles related. The information spreads very fast and is accompanied by the freedom of speech can cause various types of opinions, either negative or positive opinion. Classification techniques of some of the most frequently used is Naive Bayes and k-Nearest Neighbour KNN). Naive Bayes classifier is a simple applying Bayes Theorem to independence (independent) high. K-Nearest Neighbor (KNN) classification algorithm predicts the category of the test sample in accordance with the training sample K nearest neighbor to the test sample, and a judge for the category that has the largest category of probability. Therefore, in this study using the merging feature selection methods, namely particle Swarm Optimization in order to improve the accuracy on Naive Bayes and k-Nearest Neighbour. As for the resulting accuracy Naive Bayes algorithm based on Particle Swarm Optimmization with an accuracy of 82.67%. and k-Nearest Neighbour-based Particle Swarm Optimmization with an accuracy of 71.33% It can be concluded that the application of optimization can improve accuracy. Model in Naive Bayes-based Particle Swarm Optimization can provide solutions to the problems of classification review of public opinion news MotoGP racer incident in order to more accurately and optimally. for the model-based k-Nearest Neighbour Particle Swarm Optimization accuracy decreases.

Keywords : Media, Classification, Naive Bayes, k-Nearest Neighbour, Particle Swarm Optimization, Text Mining.


Teks Lengkap:

PDF

Referensi


Basari et al. 2013. Opinion Mining of Movie Review using Hybrid Method of Support Vector Machine and Particle Swarm Optimization. Procedia Engineering, 53, 453-462.

Bijalwan, Vishwanath., Pinki, Kumari., Jordan, Pascual & Vijay, Bhaskar, Semwal. Machine learning approach for text and document mining. India.

Gupta, Vishal & Gurpreet, S. Lehal. 2009. A survey of Text Mining Techniques and Application. Journal of Emerging Technologies in Web Intelligence, Vol. 1, No.1, August 2009.

Han, J., & Kamber, M. 2007. Data Mining Concepts and Techniques. San.

Hashimi, Hussein; Alaaeldin, Hafez; Hassan Mathkour. 2015. Selection criteria for text mining approaches. Computers in Human Behaviour 51 (2015) 729-733.

He, Jie & Hui, Guo. 2013. A Modified Particle Swarm Optimization Algorithm. Telkomnika, Vol. 11, No. 10, October 2013, pp. 6209 ~ 6215. e-ISSN: 2087-278X.

Hwa Lu et al. - 2010 - Chinese text classification by the Naïve Bayes Classifier and the associative classifier with multiple confidence thr. Knowledge-Based Systems, 23, 598–604.

Jiang et al. 2012, An improved K-nearest-neighbor algorithm for text categorization. Expert Systems with Applications, 39, 1503-1509.

Jiawei, H., Kamber, M., & Pei, J. 2012. Data Mining: Concepts and Techniques Third Edition. Waltham, MA: Morgan Kaufmann

Kang, Yoo, Han. 2012, Senti-lexicon and improved Naïve Bayes algorithms for sentiment analysis of restaurant reviews. Expert Systems with Applications, 39, 6000-6010

Liu, Bing. 2012. Sentiment Analysis And Opinion Mining. Chicago: Morgan & ClaypoolPublisher.

L, Joe., Villa, Medina., Ricard, Boqué., Joan Ferré. 2009. Bagged k-nearest neighbours classification with uncertainty in the variables. Analytica Chimica Acta 646 (2009) 62–68.

Marinakis, Yannis. 2015. An Improved Particle Swarm Optimization Algorithm for the Capaciated Location Routing Problem and for The Location Routing Problem With StohasticDemands. Applied Soft Computeing 37 (2015) 680-710.

Moraes, R., Valiati, J. F., & Gavião Neto, W. P. 2013. Document-level sentiment.

Awaludin, Muryan & Yuhannes, Pengembangan Algoritma Neural Network Berdasarkan Rentang Waktu Untuk Prediksi Harga Perdagangan Valuta Asing. Jurnal SKI on SPOT

Ohana, Bruno. & Tierney, Brendan. 2009. Sentiment Classification of Reviews Using SentiWordNet. 9th.IT & T Conference, Dublin Institute of Technology, Dublin, Ireland, 22 – 23 October.

Padmavathi,S., & Ramanujam,E. 2015. Naive Bayes Classifier for ECG abnormalities using Multivariate Maximal Time Series Motif. Procedia Computer Science 47 ( 2015 ) 222 – 228.

S, Umajancy dan Antony, Selvadoss.T. 2013. An Analysis On Text Mining –Text Retrieval And Text Extraction. International Journal of Advanced Research in Computer and Communication Engineering Vol. 2, Issue 8, August 2013. ISSN (Print) : 2319-5940. ISSN (Online) : 2278-1021.

Syafitri, Nesi. 2010. Perbandingan Metode K-Nearest Neighbor (Knn) Dan Metode Nearest Cluster Classifier (Ncc) Dalam Pengklasifikasian Kualitas Batik Tulis. Jurnal Teknologi Informasi & Pendidikan Issn : 2086 – 4981 Vol. 2 No. 1 September 2010.

Tuegeh, Maickel., Soeprijanto., & Mauridhi, H. Purnomo. 2009. Modified Improved Particle Swarm Optimization For Optimal Generator Scheduling. Seminar Nasional Aplikasi Teknologi Informasi 2009(SNATI 2009). Yogyakarta, 20 Juni 2009.

Vercellis, C. 2009. Business Intelligence Data Mining And Optimization For Decision Making .United Kingdom: A John Wiley And Sons, Ltd.,Publication.

Wang, Aiguo; Ning, An; Guilin, Chen; Lian, Li; Gil Alterovitz. 2015. Accelerating wrapper-based feature selection with K-nearest-neighbor. Knowledge-Based Systems 83 (2015) 81–91.

Wu He; Shenghua Zha; Ling li.2013. Social Media Competitive Analysis and Text Mining: A Case Study In The Pizza Industry. International Journal of Information Management 33 (2013) 464-472.

Xiang et al. (2015), A novel hybrid system for feature selection based on an improved gravitational search algorithm and k-NN method. Applied Soft Computing, 31, 293-307.

Zhao, M., Fu, C., Ji, L., Tang, K., & Zhou, M. (2011). Feature selection and parameter optimization for support vector machines: A new approach based on genetic algorithm with feature chromosomes. Expert Systems with Applications, 38(5), 5197–5204. doi:10.1016/j.eswa.2010.10.041.




DOI: https://doi.org/10.35968/jsi.v6i2.317

Refbacks

  • Saat ini tidak ada refbacks.


Indexed by: