“…Gao et al [82] propose a tweet-based spam detection approach based on the social degree of the tweet's sender, the history of interaction, the size of the cluster, the average time interval, the average number of URL in tweets, and the unique number of URL in tweets. Chen et al [83] present a real-time spam detection method for Twitter based on 12 lightweight features which are extracted from a dataset contains 6.5 million spam tweets. The features they consider detecting spam on Twitter are age of the account, the number of followers, the number of following, the number of likes the account received, the number of the account's lists, the number of tweets of the account, the number of retweets of the tweet, the number of hashtags used in the tweet, the number of mentioned users in the tweet, the number of URLs used in the tweet, the number of characters used in the tweet, and the number of digits used in the tweet.…”