Analysis and research on the integrated English teaching effectiveness of internet of things based on stochastic forest algorithm.

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Author: Xiaoying Hu
Date: Feb. 18, 2022
Publisher: Inderscience Publishers Ltd.
Document Type: Brief article
Length: 158 words

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Abstract :

In order to overcome the problem of low accuracy in the analysis of teaching effect, this paper proposes a new method for English teaching effect analysis. The decision tree model is constructed through data training, and the stochastic forest algorithm framework is built on this basis. Based on the binary data classification project, relying on data parallel units provided by the internet of things, and relying on integrated data, the sample division of current education data is completed and an open source platform to complete the internet of things docking is designed. The random algorithm is combined with the data indicators of the internet of things to obtain data clusters. According to the classification points of stochastic forest algorithm, datasets are merged to complete sub-aggregation, and the effect evaluation is achieved. The experimental results show that the aggregation rate of the evaluation data of the stochastic forest algorithm is 50% âß 80%, which is effective. Byline: Xiaoying Hu

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Gale Document Number: GALE|A695399668