Labelled Classifier with Weighted Drift Trigger Model using Machine Learning for Streaming Data Analysis

被引:0
|
作者
Prasad, Gollanapalli, V [1 ]
Rao, S. Krishna Mohan [2 ]
Sharma, Kapil [3 ]
Venkatadri, M. [4 ]
Krishna, B. Rama [1 ]
机构
[1] GNI Tech Campus, Hyderabad, Telangana, India
[2] Sidartha Inst Enginiring Techol, Hydeabad, Telangana, India
[3] Amity Univ, Comp Sci & Engn, Gwalior, India
[4] Amity Sch Engn & Technol ASET Gwalior, Gwalior, India
关键词
Data Clustering; Data Classification; Data Stream Mining; Streaming Data; Drift Detection; Drift Trigger Model; Labelled Classifier; ENSEMBLE;
D O I
暂无
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The term "data-drift " refers to a difference between the data used to test and validate a model and the data used to deploy it in production. It is possible for data to drift for a variety of reasons. The track of time is an important consideration. Data mining procedures such as classification, clustering, and data stream mining are critical to information extraction and knowledge discovery because of the possibility for significant data type and dimensionality changes over time. The amount of research on mining and analyzing real-time streaming data has risen dramatically in the recent decade. As the name suggests, it's a stream of data that originates from a number of sources. Analyzing information assets has taken on increased significance in the quest for real-time analytics fulfilment. Traditional mining methods are no longer effective since data is acting in a different way. Aside from storage and temporal constraints, data streams provide additional challenges because just a single pass of the data is required. The dynamic nature of data streams makes it difficult to run any mining method, such as classification, clustering, or indexing, in a single iteration of data. This research identifies concept drift in streaming data classification. For data classification techniques, a Labelled Classifier with Weighted Drift Trigger Model (LCWDTM) is proposed that provides categorization and the capacity to tackle concept drift difficulties. The proposed classifier efficiency is contrasted with the existing classifiers and the results represent that the proposed model in data drift detection is accurate and efficient.
引用
收藏
页码:349 / 356
页数:8
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