Dataset Feasibility Analysis Method based on Enhanced Adaptive LMS method with Min-max Normalization and Fuzzy Intuitive Sets
Budisusila E.N., Prasetyowati S.A.D., Setiadi D.R.I.M., Ismail M., Purnomo M.H.
Abstract
A good dataset was required for attaining good accuracy in machine learning, especially in prediction, so that prediction accuracy was high. The imbalanced or too small dataset was a common problem in machine learning. This study proposed a method for determining the dataset's quality. If the dataset is not feasible, preprocessing can be performed to improve the dataset's quality before making predictions. Adaptive Least Mean Square (LMS) was merged with Min-max Normalization and Fuzzy Intuitive Sets (FIS) algorithms to create the proposed technique. This method might assess the value of uncertainty and information, which will influence the dataset's feasibility. If the dataset has an uncertainty value closed 1.5 and an information value of less than 0.5, it is usable. The method has been tested on both public and private datasets. According to all experiments conducted, the uncertainty value and information value on the stated threshold can have prediction accuracy above 70% with various methodologies.
No Title
Kominfo B.
No Title
Is social distancing a boon or bane for persons who stutter during COVID-19 pandemic?
Almudhi A.
Data Cleaning-A Thorough Analysis and Survey on Unstructured Data
Khosla C., Kumar V.
A data fusion and data cleaning system for smart grids big data
Deng W., Guo N., Lv Z., Yan G., Zhang Z.
No Title
No Title
Cano A., Member S., Ventura S., Zafra A.
Hybrid FLC-LMS Algorithm for Predicting Sediment Volume in the River
Ardalli J., Arifin B., Ismail M., Prasetyowati S.A.D., Purnomo M.H., Subroto I.M.I.
Prediction in LMS-type adaptive algorithms for smoothly time varying environments
Gazor S., Gazor S., Gazor S., Gazor S.
Performance Analysis of LMS Adaptive Prediction Filters
Zeidler J.R., Zeidler J.R., Zeidler J.R., Zeidler J.R.
Riza B.S., Thanri Y.Y., Iriani J., Tanti L., Triandi B., Pusapasari R.
2024 6th International Conference on Cybernetics and Intelligent System Icoris 2024
Praynlin E., Vijayabaskar S., Aravinda K., Kumari K.S.N.
Biomedical Signal Processing and Control
Remote Sensing
Zhang J., Wang X., Yu X., Li Q., Yao L., Zhang S.
Remote Sensing
Liu L., Li J., Zhang H., Qi X.
Smart Innovation Systems and Technologies
Liu L., Li J., He Y., Qi X.
Reliability Engineering and System Safety
Neelima N., Ozer T., Das A., Deepa K.
IEEE Access
Athavale V.A., Muliadi, Saragih T.H., Indriani F., Mazdadi M.I., Rezki M.K.
Journal of Electronics Electromedical Engineering and Medical Informatics
Srinivasulu B.V., Moon S.A., Kumar P.S., Reddy V.K., Kumar P.K.P.
International Journal of Intelligent Engineering and Systems