Muhanad Abdul Elah Al-Khalisy, Hashem B. Jehlol, Terrorist Affiliations Identifying Through Twitter Social Media Analysis Using Data Mining and Web Mapping Techniques, Journal of Engineering and Applied Sciences, Volume 13,Issue 17, 2018, Pages 7459-7464, ISSN 1816-949x, jeasci.2018.7459.7464, (https://makhillpublications.co/view-article.php?doi=jeasci.2018.7459.7464) Abstract: With the increase in number of users on each day on a social media platform that generates a huge amount of data today data analysis plays a vital role. We focus on Twitter’s mining role in extracting useful information that provides terrarium supporter data such as location, account name and terrarium propaganda. The proposed methods utilize Twitter streaming API to collect data, preprocessing and cleansing were performed on Tweet’s data, wordlist of synonyms and antonyms words relating to terrorism get it from the dictionary, these words classified as positive and negative words. The proposed methods base on “Bag-of-Word” characteristic extraction to compute the total score of each Tweet that represents training data. Depending on the training data, the Naive Bayes classifiers classify each Tweet to positive, negative and natural. GeoJSON used to find and visualize where terrarium is located online. The results can be used by the governments and security agencies to determine relevant data to find terrarium users. Keywords: streaming API;terrarium;machine learning;social media;sentiment analysis;Text mining;GeoJSON;Naive Bayes