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Time-Efficient Algorithm for Data Annotation using Deep Learning
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Current generation emphasis on the Digital world which creates a lot of unbeneficial data. The paper is about data annotation using deep learning as there is a lot of data available online but which data is useful can be labeled using these techniques. The unstructured data is labeled by many techniques but implementation of deep learning for labeling the unstructured data results in saving the time with high efficiency. In this paper introduce a method for data annotation, for that we can use unlabeled data as input and it is classified using the K-Nearest Neighbor algorithm. K-Nearest Neighbor is the fastest and its accuracy is very high compared to other classification algorithms. After classified the unlabeled data we use it as input and annotate data using deep learning techniques. In deep learning we use an auto annotator for annotating data. After annotating data, check the accuracy of annotated data and time efficiency of data annotation. In case the accuracy is low then we can retrain the data and make it more accurate.
Lattice Science Publication (LSP)
Title: Time-Efficient Algorithm for Data Annotation using Deep Learning
Description:
Current generation emphasis on the Digital world which creates a lot of unbeneficial data.
The paper is about data annotation using deep learning as there is a lot of data available online but which data is useful can be labeled using these techniques.
The unstructured data is labeled by many techniques but implementation of deep learning for labeling the unstructured data results in saving the time with high efficiency.
In this paper introduce a method for data annotation, for that we can use unlabeled data as input and it is classified using the K-Nearest Neighbor algorithm.
K-Nearest Neighbor is the fastest and its accuracy is very high compared to other classification algorithms.
After classified the unlabeled data we use it as input and annotate data using deep learning techniques.
In deep learning we use an auto annotator for annotating data.
After annotating data, check the accuracy of annotated data and time efficiency of data annotation.
In case the accuracy is low then we can retrain the data and make it more accurate.
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