2017 1st International Workshop on Arabic Script Analysis and Recognition (ASAR) 2017
DOI: 10.1109/asar.2017.8067771
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Arabic language sentiment analysis on health services

Abstract: -The social media network phenomenon leads to a massive amount of valuable data that is available online and easy to access. Many users share images, videos, comments, reviews, news and opinions on different social networks sites, with Twitter being one of the most popular ones. Data collected from Twitter is highly unstructured, and extracting useful information from tweets is a challenging task. Twitter has a huge number of Arabic users who mostly post and write their tweets using the Arabic language. While … Show more

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Cited by 129 publications
(85 citation statements)
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References 12 publications
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“…This is our own Arabic sentiment analysis dataset collected from Twitter. It was first presented in [9] and it has two classes (positive and negative). The dataset contains 2026 tweets and it is an unbalanced dataset that has 1398 negative tweets and 628 positive tweets.…”
Section: Arabic Health Services Dataset (Main-ahs and Sub-ahs)mentioning
confidence: 99%
“…This is our own Arabic sentiment analysis dataset collected from Twitter. It was first presented in [9] and it has two classes (positive and negative). The dataset contains 2026 tweets and it is an unbalanced dataset that has 1398 negative tweets and 628 positive tweets.…”
Section: Arabic Health Services Dataset (Main-ahs and Sub-ahs)mentioning
confidence: 99%
“…These approaches have increased the sentiment classification for our Arabic Health Services dataset (AHS) from 0.85 to 0.92 for the Main dataset, and from 0.87 to 0.95 for the Sub-dataset. Finally, this paper presents an improved accuracy, reaching 0.92, compared to our previous results in [1] that were 0.90 on the Main-Dataset.…”
Section: Resultsmentioning
confidence: 45%
“…In this experiment, the Main dataset is our previously proposed dataset of Arabic tweets about health services described in [1]. The dataset was collected from Twitter and contains 628 positive tweets, and 1398 negative tweets, to give a total of 2026.…”
Section: A Datasetmentioning
confidence: 99%
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