Comparing prediction algorithms in disorganized data

Main Article Content

Abstract

Real estate market is very effective in today’s world but finding best price for house is a big problem. This problem creates a propose of this work. In this study, we try to compare and find best prediction algorithms on disorganized house data. Dataset was collected from real estate websites and three different regions selected for this experiment. KNN, KSTAR, Simple Linear Regression, Linear Regression, RBFNetwork and Decision Stump algorithms were used. This study shows us KStar and KNN algorithms are better than the other prediction algorithms for disorganized data.

Keywords: KNN, simple linear regression, rbfnetwork, disorganized data, bfnetwork.

Downloads

Download data is not yet available.

Article Details

How to Cite
Comparing prediction algorithms in disorganized data. (2017). Global Journal of Computer Sciences: Theory and Research, 6(2), 26–35. https://doi.org/10.18844/gjcs.v6i2.1471
Section
Articles

References

Kilyeni, S. (2013). Numerical methods applied in computer aided power systems analysis, TimiÅŸoara: Orizonturi Universitare.

Kilyeni, S., Barbulescu, C., Simo, A. (2013). Numerical methods in power engineering. Applicative lectures, TimiÅŸoara: Orizonturi Universitare.

Thangaraj, P. (2014). Computer Oriented Numerical Methods, Prentice Hall of India Pvt Ltd.

Saha, R., Bera, J., Sarkar, G. (2015). Identification of running household appliances by a state-of-the-art energy meter for a change in consumption pattern.3rd International Conference Proceedings of the Computer, Communication, Control and Information Technology (C3IT)

Hatton, L., Charpentier, P., Matzner-Lober, E. (2015). Statistical Estimation of the Residential Baseline. IEEE Transactions on Power Systems, Issue 99.