A Research on Prediction of Missing Sensor Data Using Association Rule
Keywords:
Window Association Rule Mining, K-nearest Neighbour Estimation, WSN, Data Reduction Mechanism, Data Mining, Sensor DataAbstract
Missing values is major problem in sensor network. Currently we have many existing approach to predict missing values in stream of data. But for pre fetched existing data we can’t use such techniques. So while querying in such data will lead to wrong results. So in this paper we will try to predict such missing data in existing sensor data using association rule mining techniques.
References
- Sneha Arjun Dhargalkar, A.D. Bapat “Determining Missing Values in Dimension Incomplete Databases using Spatial-Temporal Correlation Techniques”, In 2014, IEEE.
- Le Gruenwald, Hamed Chok, Mazen Aboukhamis, “Using Data Mining to Estimate Missing Sensor Data” In 2007 IEEE.
- Mihail Halatchev Le Gruenwald, “Estimating Missing Values in Related Sensor Data Streams” ADVANCES IN DATA MANAGEMENT 2005
- Anjan Das, “An Enhanced Data Reduction Mechanism to Gather Data for Mining Sensor Association Rules” In 2011 IEEE
- ”Tutorials point”,may 2014, http://tutorialspoint.com/
- https://www.techopedia.com/definition/30306/association-rule-mining
- https://en.wikipedia.org/wiki/Association_rule_learning.
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