Rapidly growing Global Positioning System (GPS) data plays an important role in trajectory and their applications (e.g., GPS-enabled smart devices). In order to employ K-means to mine the better origins and destinations (OD) behind the GPS data and overcome its shortcomings including slowness of convergence, sensitivity to initial seeds selection, and getting stuck in a local optimum, this paper proposes and focuses on a novel niche genetic algorithm (NGA) with density and noise for K-means clustering (NoiseClust). In NoiseClust, an improved noise method and K-means++ are proposed to produce the initial population and capture higher quality seeds that can automatically determine the proper number of clusters, and also handle the different s...
The widespread and increased use of smartphones, equipped with the global positioning system (GPS), ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
In solving the clustering problem, traditional methods, for example, the K-means algorithm and its v...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
Knowledge discovery from data can be broadly categorized into two types: supervised and unsupervised...
There are many techniques available in the field of data mining and its subfield spatial data mining...
In this article the new hybrid data clustering approach, Gravitational Genetic KHM, based on Genetic...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
With widespread availability of low cost GPS, cellular phones, satellite imagery, robotics, Web traf...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
The amount of geographic data has rapidly increased throughout the past decade. Impressive data coll...
Abstract. GA-based clustering algorithms often employ either simple GA, steady state GA or their var...
Many popular clustering techniques including K-means require various user inputs such as the number ...
As a primary data mining method for knowledge discovery, clustering is a technique of classifying a ...
With the increasing availability of GPS-enabled devices, a huge amount of GPS trajectories recording...
The widespread and increased use of smartphones, equipped with the global positioning system (GPS), ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
In solving the clustering problem, traditional methods, for example, the K-means algorithm and its v...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
Knowledge discovery from data can be broadly categorized into two types: supervised and unsupervised...
There are many techniques available in the field of data mining and its subfield spatial data mining...
In this article the new hybrid data clustering approach, Gravitational Genetic KHM, based on Genetic...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
With widespread availability of low cost GPS, cellular phones, satellite imagery, robotics, Web traf...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
The amount of geographic data has rapidly increased throughout the past decade. Impressive data coll...
Abstract. GA-based clustering algorithms often employ either simple GA, steady state GA or their var...
Many popular clustering techniques including K-means require various user inputs such as the number ...
As a primary data mining method for knowledge discovery, clustering is a technique of classifying a ...
With the increasing availability of GPS-enabled devices, a huge amount of GPS trajectories recording...
The widespread and increased use of smartphones, equipped with the global positioning system (GPS), ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
In solving the clustering problem, traditional methods, for example, the K-means algorithm and its v...