TL;DR
This paper introduces an improved Turkish social media dataset for sentiment analysis, utilizing Hadoop-based spelling correction to enhance data quality and processing efficiency for machine learning applications.
Contribution
It presents a novel Hadoop-based spelling correction algorithm and a processed Turkish dataset suitable for sentiment analysis and other text mining tasks.
Findings
Effective spelling correction improves data quality
Hadoop-based processing handles large social media datasets
Dataset is suitable for sentiment analysis applications
Abstract
A public dataset, with a variety of properties suitable for sentiment analysis [1], event prediction, trend detection and other text mining applications, is needed in order to be able to successfully perform analysis studies. The vast majority of data on social media is text-based and it is not possible to directly apply machine learning processes into these raw data, since several different processes are required to prepare the data before the implementation of the algorithms. For example, different misspellings of same word enlarge the word vector space unnecessarily, thereby it leads to reduce the success of the algorithm and increase the computational power requirement. This paper presents an improved Turkish dataset with an effective spelling correction algorithm based on Hadoop [2]. The collected data is recorded on the Hadoop Distributed File System and the text based data is…
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