2021
DOI: 10.11591/ijeecs.v24.i1.pp600-610
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An improved Kohonen self-organizing map clustering algorithm for high-dimensional data sets

Abstract: <p>Manipulating high-dimensional data is a major research challenge in the field of computer science in recent years. To classify this data, a lot of clustering algorithms have already been proposed. Kohonen self-organizing map (KSOM) is one of them. However, this algorithm has some drawbacks like overlapping clusters and non-linear separability problems. Therefore, in this paper, we propose an improved KSOM (I-KSOM) to reduce the problems that measures distances among objects using EISEN Cosine correlati… Show more

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Cited by 6 publications
(3 citation statements)
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“…The objective is to represent multidimensional data sets in a two-or one-dimensional network. As shown in Figure 5, SOM architecture is composed of two layers of neurons, the input layer made up of N neurons (N input data) and an output layer made up of M neurons that is responsible for creating clusters, where each input neuron 𝑖 is connected to each of the output neurons 𝑗 by means of a weight 𝑊 𝑖𝑗 [28].…”
Section: Self-organizing Mapsmentioning
confidence: 99%
“…The objective is to represent multidimensional data sets in a two-or one-dimensional network. As shown in Figure 5, SOM architecture is composed of two layers of neurons, the input layer made up of N neurons (N input data) and an output layer made up of M neurons that is responsible for creating clusters, where each input neuron 𝑖 is connected to each of the output neurons 𝑗 by means of a weight 𝑊 𝑖𝑗 [28].…”
Section: Self-organizing Mapsmentioning
confidence: 99%
“…Throughout the investigation, considerable barriers arose, mostly owing to the physical closeness of particular coordinates, with a higher frequency on state boundaries (Cui et al, 2020). This occurrence resulted in point overlap in select places, as seen in the example of Amazonas state, where a point was categorized in the Acre state cluster (Begum et al, 2021). Despite these anomalies, the method was able to efficiently represent the data due to the prevailing spatial structure of the points and the acceptable distance between them.…”
Section: -Recurrent Neural Networkmentioning
confidence: 99%
“…To efficiently utilize the clustering mechanism, stable and balanced clusters are required. Some metrics, such as relative mobility (node speed and direction), node degree, residual energy, communication workload, and neighbor's behavior, are required to form good quality and optimized clusters [2]. In MANET, every node acts as an autonomous, and it transmits the data packet efficiently.…”
Section: Introductionmentioning
confidence: 99%