Learning of High Dengue Incidence with Clustering and FP-Growth Algorithm using WHO Historical Data

01/12/2019
by   Franz Stewart V. Dizon, et al.
0

This paper applies FP-Growth algorithm in mining fuzzy association rules for a prediction system of dengue. The system mines its rules through input of historic predictor variables for dengue. The rules will be used to build a rule-based classifier to predict the dengue incidence for the next month for the years 2001-2006 in the Philippines. The FP-Growth Algorithm was compared to Apriori Algorithm by Sensitivity, Specificity, PPV, NPV, execution time and memory usage. The results showed that FP-Growth Algorithm is significantly better in execution time, numerically better in memory and comparable in Sensitivity, Specificity, PPV and NPV to Apriori Algorithm.

READ FULL TEXT
research
04/26/2023

Association Rules Mining with Auto-Encoders

Association rule mining is one of the most studied research fields of da...
research
03/18/2018

A Guided FP-growth algorithm for fast mining of frequent itemsets from big data

In this paper we present the GFP-growth (Guided FP-growth) algorithm, a ...
research
03/18/2018

A Guided FP-growth algorithm for multitude-targeted mining of big data

In this paper we present the GFP-growth (Guided FP-growth) algorithm, a ...
research
11/29/2021

US-Rule: Discovering Utility-driven Sequential Rules

Utility-driven mining is an important task in data science and has many ...
research
11/23/2009

Designing fuzzy rule based classifier using self-organizing feature map for analysis of multispectral satellite images

We propose a novel scheme for designing fuzzy rule based classifier. An ...
research
12/24/2019

Parallel optimization of fiber bundle segmentation for massive tractography datasets

We present an optimized algorithm that performs automatic classification...
research
08/03/2023

Algoritmos para Multiplicação Matricial

The goal of this article is to study algorithms that compute the product...

Please sign up or login with your details

Forgot password? Click here to reset