1. bookVolume 8 (2023): Edition 1 (January 2023)
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Abnormal Behavior of Fractional Differential Equations in Processing Computer Big Data

Publié en ligne: 06 Jun 2023
Volume & Edition: Volume 8 (2023) - Edition 1 (January 2023)
Pages: 291 - 298
Reçu: 18 Jan 2022
Accepté: 27 Mar 2022
Détails du magazine
License
Format
Magazine
eISSN
2444-8656
Première parution
01 Jan 2016
Périodicité
2 fois par an
Langues
Anglais

Figure 1

Basic model of association rule mining
Basic model of association rule mining

Figure 2

Algorithm flow of association rules
Algorithm flow of association rules

Figure 3

Improved model structure for association mining
Improved model structure for association mining

Figure 4

The relationship between the number of transmitted bytes, the partition book, the minimum support, and the communication load
The relationship between the number of transmitted bytes, the partition book, the minimum support, and the communication load

Figure 5

The relationship between support, number of nodes, partition book, and sent bytes
The relationship between support, number of nodes, partition book, and sent bytes

Figure 6

The number of messages sent, the number of bytes, and the rate of message usage are related to changes in the buffer
The number of messages sent, the number of bytes, and the rate of message usage are related to changes in the buffer

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