菲律宾使用预测分析的K到12教育转型的知识创造机会

Novie Joy, C. Pelobello, Raul Vincent W. Lumapas, Adrian D. Ablazo
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引用次数: 0

摘要

本研究使用twitter的简单决策树来运行预测模型,以了解人们对菲律宾新的K-12教育计划的看法。最初的研究是从Twitter微博中获得的情绪,用于发现预测模型是否可以实质性地产生知识,以支持菲律宾的K到12教育改革。RapidMiner被用作分析Twitter数据的工具。使用各种RapidMiner操作器对Twitter微博进行处理,以执行聚类和预测分析。它还利用AYLIEN作为RapidMiner的扩展模块进行文本分析,并从这些tweet中提取见解。该实验在聚类分析中发现,表达对K-12的情感的用户在他们发布的消息中使用了相似的单词。总的来说,结果表明推特数据具有相当特殊的性质。讨论话题中使用的词语创造了一种Twitter文化。结果表明,在生成的决策树中,只有K-12 tweet上的favorites变量或喜欢的数量才能强有力地表明将K-12 tweet分类为主观或客观。
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Knowledge creation opportunities for the K to 12 educationaltransformation in the Philippines using predictive analytics
This research runs a predictive model using a simple decision tree of the twitter mined about the opinion of the people towards the new K-12 education program of the Philippines. The initial study which acquired sentiments from Twitter microblogs was utilized to find out whether a predictive model can substantially generate knowledge to support the K to 12 educational reforms in the Philippines. RapidMiner was used as tool to perform analytics on Twitter data. Various RapidMiner operators were used to process the Twitter microblogs to perform clustering and predictive analytics. It also utilized AYLIEN as an extension module of RapidMiner for text analysis and extract insights from these tweets. The experiment reveals in word cluster analysis that users who expressed sentiments about K-12 used similar words on the messages they posted. Overall, the results suggest that tweet data have a quite peculiar nature. Words used in discussed topic create a sort of Twitter culture. The results showed that in the decision tree generated, only favorites variable or the number of likes on a K-12 tweet provides a strong indication of classifying a K-12 tweet as subjective or objective.
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