Abstract
The rise and fall of the so-called Islamic State of Iraq and Syria (ISIS) certainly represents one of the most salient political topics over these last few years (Byman, 2016). Just to give an idea, even during the campaign for the 2016 U.S. presidential elections, Donald Trump repeatedly referred to the need of a new counterterrorism strategy against ISIS and promised to “defeat the ideology of radical Islamic terrorism” (Brands & Feaver, 2017, p. 28).
Due to its fast territorial expansion, to the ostentation of cruelty against prisoners and war victims (Kraidy, 2017), but also to its innovative communication skills (Farwell, 2014) and, since 2015, to its strategy of frequent “hand-made” terrorist attacks in Western countries, the ISIS repeatedly grasped the media attention.
In the past, terrorist groups usually relied on traditional mass media to spread their message, let us think, for instance, of Al Qaeda, which addressed the public by sending declarations recorded on videotapes to Al-Jazeera (Klausen, 2015). Conversely, the communication strategy adopted by ISIS was rather different. It has been argued that ISIS was the first Islamic terrorist group that made a massive usage of Internet and it used social networking sites to spread its message to generate support (Klausen, 2015; Novenario, 2016) but also for proselytism (Greenberg, 2016).
In this regard, the debate around ISIS propaganda on social media, which started in 2014, was one of the first fire alarms related to the potential perils of social media, linked with the idea of the existence of a “dark web” of online crimes and violence. While, since the Arab spring, academic studies were in fact mainly focused on the potential positive effects of social media in terms of democratization (e.g., Howard & Hussain, 2011), the rise of ISIS (also online) questioned previous theories suggesting that social media can also produce turmoil and allow some political actors to pursue illiberal goals (Tucker, Theocharis, Roberts, & Barberá, 2017).
For all these reasons, and under the idea that ISIS has been particularly active online to generate consent and raise followers, it is worth investigating social media conversations about ISIS to evaluate the degree of support expressed within the online Arabic communities, to inspect what elements are able to affect its support, and to link online opinions with offline outcomes, such as the ability to successfully perform proselytism recruiting foreign fighters.
Using a supervised aggregated sentiment analysis approach, we analyzed 26.2 million comments published in Arabic language on Twitter, from July 2014 to January 2015, when ISIS’ strength reached its peak and the group was prominently expanding the territorial area under its control. By doing that, we were able to measure the share of support and aversion toward the Islamic State within the online Arab speaking communities. The fact that the language used by pro-ISIS accounts on Twitter is by far the Arabic one (in over the 90% of the cases; see Siegel & Tucker, 2018, p. 263) makes the choice to focus in the present article on posts written precisely in Arabic language particularly interesting. By applying statistical analysis to the results of sentiment analysis, we investigate two specific topics concerning the conversations on ISIS online. First, by exploiting the time granularity of the tweets, we link the opinions with daily events to understand the main determinants of the changing trend in support toward ISIS. Second, by taking advantage of the geographical locations of tweets, we explore the relationship between online opinions across countries and offline behavior, linking online sentiment (i.e., the ratio of positive comments about ISIS: see more below) with data about the number of foreign fighters joining ISIS from those countries.
With respect to the first topic, our analysis shows that the expressed online support toward ISIS mainly changes according to the specific target of ISIS actions, military events, the online volume of the discussion about ISIS, and the coverage of media about it. Second, our analysis shows the existence of a robust and negative relationship between the sentiment toward ISIS and the number of foreign fighters in a given country. In this sense, our results appear to unveil the existence of what we have called a “loneliness effect” that could make the “exit” option of becoming a foreign fighter more attractive for some given online users. The policy implications of this are far from being trivial: As we will discuss, this finding seems to suggest that censorship is not a solution to counter the ISIS threat. Quite the contrary, by decreasing expressed support for the terrorist group, censorship can favor radicalization.
This article is organized as follows. In “Social Media and Terrorism: Literature and Research Questions” section, we review the existing literature linking social media and sensitive topics (with an eye to terrorism) and we outline our main research questions and expectations. In “From Texts to Information: Our Approach” section, we present the technique of sentiment analysis that has been used to catch online opinions. In “Data Collection and Preliminary Results” section, we provide more details on data collection, illustrating our strategy to monitor the discussion about ISIS written in Arabic language. Sections “Determinants of Daily Positive Sentiment Toward ISIS” and “Positive Sentiment Toward ISIS and Foreign Fighters” describe the results of our statistical analyses with respect to the two topics highlighted above. A conclusion follows.
Social Media and Terrorism: Literature and Research Questions
One of the attractive feature of using big data is that they can allow to observe theoretically relevant social and political attitudes that are normally difficult (impossible?) to detect, what Nagler and Tucker (2015) call the “unfiltered” opinions of individuals.
This is the reason why social media texts have been widely used to study highly sensitive topics such as drug use, sexual behaviors, criminal behavior, and controversial political and social issues (e.g., Burnap & Williams, 2015; Zeitzoff, Kelly, & Lotan, 2015). To research directly such attitudes and preferences is extremely difficult (Monroe, Pan, Roberts, Sen, & Sinclair, 2015); however, more indirect approaches can be fruitful. As argued in Jamal, Keohane, Romney, and Tingley (2015), contemporary social media enable individuals to express their views in public in relatively safe ways producing as a consequence a set of discourses, possibly not deeply reflective, but still revealing about values, perspectives, and emotions of large numbers of people who have politically relevant views and are ready to express them (at least online). For instance, Berinsky (1999) showed that some individuals who harbor anti-integrationist sentiments are likely to hide their socially unacceptable opinions behind a “don’t know” response. Under these circumstances, aggregate public opinion may be a poor reflection of collective public sentiment. Bishop (2003) found comparable results with respect to opinion polls conducted on divisive policy issues, such as the teaching of creationism and intelligent design in American public schools. Similarly, Stephens-Davidowitz (2014) by examining Google searches conducted during the 2008 U.S. presidential race found that some U.S. states were more likely to use racial epithets in conjunction with searches on Barack Obama’s name, patterns that were not detected by standard survey techniques. In addition, social media data are less likely to be affected by social desirability bias than polling data (DiGrazia, McKelvey, Bollen, & Rojas, 2013; Fisher, 1993).
A growing number of studies have analyzed the relationship between social media and political sensitive topics (including terrorism) also in the context of Arab communities. For instance, Zeitzoff et al. (2015) used a network analysis to examine how foreign policy discussions about Israel–Iran are structured across different languages, including the Arabic one. Zeitzoff (2011) developed an hourly dyadic conflict intensity scores by drawing Twitter and other social media sources during the Gaza Conflict (2008–2009). Al-Rawi (2017) analyzed Facebook posts published in Syria in the aftermath of the Arab Spring to understand the online sentiment toward the regime of Bashar Assad. Jamal et al. (2015) investigated the attitudes expressed in Arabic on Twitter toward the United States and Iran and found that anti-Americanism is pervasive and intense, but they also suggest that this animus is directed less toward American society than toward the impingement of the United States on other countries.
The literature linking social media and terrorism has been boosted by the rise of ISIS (e.g., Farwell, 2014) as this group made a large use of social media for propaganda and proselytism, but also for leisure activities and interpersonal communication (Greenberg, 2016; Klausen, 2015; Novenario, 2016). In this regard, two main streams of research can be detected. One is related to the spread of propaganda and sympathy for ISIS, and the other with the actual effectiveness of online recruiting.
For instance, Mitts (2017) investigates whether the intensity of anti-Muslim hostility in four European countries (France, the United Kingdom, Germany, and Belgium) is linked to pro-ISIS radicalization on Twitter. This analysis shows that local-level measures of anti-Muslim animosity correlate significantly and substantively with indicators of online pro-ISIS radicalization. Siegel and Tucker (2018), via a dataset of over 70 million tweets including tweets containing pro- or anti-ISIS keywords between February 2015 and April 2016 (therefore, after the period covered in the present analysis), investigates how successful is the Islamic State’s online strategy and to what extent does the organization achieve its goals of attracting a global audience, broadcasting its military successes, and marketing the Caliphate. Similarly, Badawy and Ferrara (2018) explore how ISIS makes use of social media to spread its propaganda and recruit militants from the Arab world and across the globe using a dataset of over 1.9 million messages posted on Twitter by about 25,000 ISIS sympathizers (on this point, see also Ferrara, 2017; Ferrara, Wang, Varol, Flammini, & Galstyan, 2016). Klausen (2015) analyzed approximately around 30,000 Twitter accounts linked with ISIS and discovered that propaganda flew from accounts belonging to terrorist organizations in the insurgency zone, to ISIS sympathizers in Western countries. Indeed, ISIS employed social media (Twitter, Facebook and Instagram) to influence not only friends but also rivals and journalists and, to build support, ISIS distributed emotional messages depicting its members as fearsome warriors and claiming that ISIS victory was inevitable (Farwell, 2014).
However, “social media is a double-edged sword” for ISIS in terms of support (Farwell, 2014, p. 52). The ostentation of atrocities committed against prisoners and war victims (Kraidy, 2017) can generate a backlash effect: ISIS communication can be used by opponent groups to discredit the terrorists and mobilize criticism, reducing ISIS level of online support (Farwell, 2014). This could be particularly true when the victims are other Muslims. As is well known, when a terrorist group chooses a target that is viewed as illegitimate by its constituents, the group can suffer a significant loss in terms of popular respect, trust, and support (Cronin, 2009). Indeed, “during an earlier phase of conflict in Iraq, al-Qaeda realized that images of Muslims killing Muslims were counterproductive, and became critical of ISIS for carrying out such actions” (Farwell, 2014, p. 52).
This opens questions about the extent to which social media communication is able to build support for terrorism and suggests that different forms of communication, but also different strategies, behaviors, and offline events, can be more or less effective in fostering support. Accordingly, we formulate our first research question.
A second stream of research pays attention to social media activities devoted to recruitment and discusses counterterrorism strategies focusing on the idea of shutting down ISIS accounts on Twitter and Facebook. In this regard, some studies support the idea of taking ISIS sites down and banning their social media accounts (Cohen, 2015; Greenberg, 2016) as a strategy to reduce recruitment and “push the remaining rank and file into the digital equivalent of a remote cave” (Cohen, 2015). Similarly, others argue that “getting ISIS off of popular platforms diminishes their reach and their effectiveness.” If ISIS activists move to “dark web” platforms, people could in fact be less likely to actually join ISIS as the effect of propaganda in such low-populated shadow sites should be lower compared with widely used social networking sites where not-yet-indoctrinated users proliferate (Greenberg, 2016, p. 176). The fact that a relative large proportion of Western recruits have been shown to have consumed extremist content on the Internet and social media strengthens this conclusion (Carter, Shiraz, & Neumann, 2014).
Although this reasoning seems straightforward, censorship can produce unintended results and “relying on the Internet exclusively, or even too heavily, can have negative consequences” (Greenberg, 2016, p. 175). First, some scholars are worried because the open web is a source of information for intelligence services (Akhgar, Bayerl, & Sampson, 2016). Analyzing public comments posted on social media is a promising way for dealing with terroristic propaganda online (Neumann, 2013), whereas information shared on dark web platforms might no longer be accessible nor shut down and allows to protect the identity of ISIS supporters (Cox, 2015). Second, pushing ISIS supporters into a “digital cave” can actually transform this dark web in a stronger echo-chamber that reinforces radicalism and promote violent extremisms (e.g., Wojcieszak, 2010; for a review, see O’Hara & Stevens, 2015) increasing support for a pan-Islamic project (el-Nawawy & Khamis, 2009), like the one initially proposed by ISIS.
Third, and most relevant for the present study as we will discuss below, the literature on terrorism suggests that political violence is a substitute for nonviolent expression of harsh dissent (Frey & Luechinger, 2003; Gurr, 2006; Lichbach, 1987), which can be denied by shutting down ISIS accounts. Sympathizers only surrounded by anti-ISIS voices (an echo-chamber of a different kind) might feel isolated (a “lonely wolf effect”); in turn, the unavailability of a “voice” option could bring them to opt for the “exit,” entering into pro-ISIS echo-chambers and radicalizing their views to suddenly join ISIS.
This leads us to formulate our second research question:
From Texts to Information: Our Approach
To investigate the online opinions toward ISIS in this article we adopt the technique iSA (integrated Sentiment Analysis: Ceron, Curini, & Iacus, 2016), derived from the fundamental work of Hopkins and King (2010). iSA is a
The supervised methods aim either to classify the individual documents into categories, via machine learning algorithms, or measuring the proportion of documents in each category, as iSA does (Grimmer & Stewart, 2013). The choice between which of the two approaches to adopt is driven by both theoretical and statistical reasons. Regarding the former aspect, if the main aim of the research is, as in the present case, to focus on some aggregate generalizations about populations of objects (in our case, the percentage of support toward ISIS), then the task of quantification (i.e., estimating category percentages) is more coherent to it than the task of classification (i.e., classifying individual documents).
This is also strengthened by two further statistical points: (a) shifting focus to estimate directly proportions, rather than doing individual classification and only after aggregate such individual classifications to retrieve for example information about the aggregate sentiment, can lead to substantial improvements in accuracy on the final results; (b) no statistical property must be satisfied by the training set for this approach to work properly: that is, the training set is not required to be a representative sample of the population of texts, as it happens with machine learning algorithms. 1 Relaxing such assumption allows to dramatically reduce (by more than 20 times; Ceron et al. 2016) the required size of the training set needed with respect to a given test-set in order for the analysis to produce reliable estimates (Hopkins & King, 2010).
The statistical properties of iSA alone and in comparison with other machine learning tools have been shown in full details in Ceron et al. (2016) to which the reader is redirected. 2
Data Collection and Preliminary Results
In our analysis, we focused on Twitter data. As a social network, Twitter is popular within the Arabic community. Nearly 40% of the Arab public is now online, and of this population, 30% are on Twitter (Jamal et al., 2015). Of course, social media and similar data reflect only the population from which they were extracted, as well as the specific topic this population is debating about in a given time period (DiGrazia et al., 2013; Nagler & Tucker 2015). It remains however undisputable that social media debates affect participants’ expectations about how other online participants will respond to their own posts (Jamal et al., 2015). They are therefore likely to affect participants’ own expressions of views through persuasion and socialization and by shaping their incentives with respect to their own contributions. Hence, these discourses are politically important in their own right. Considering the percentage of people using Twitter within the Arab public just strengthens this point. Moreover, Twitter has been shown to be used repeatedly by ISIS as a propaganda tool (Berger & Morgan, 2015), given the technical advantages provided by this micro-blogging social media such as large-scale public dissemination of content (Klausen, 2015). Therefore, it becomes natural to focus on it. 3
As already noted, we decided to focus on a specific time period: the one between July 1, 2014, and the end of January 2015. There are three main reasons underlying such choice. First, this period represents the moment in which ISIS was at its apogee in terms of territorial expansion with the conquest of Sinjar (August 2014) in Iraq and symbolic power as the self-proclaimed Caliph Abu Bakr al-Baghdadi made its first (and last) public experience in a mosque of Mosul on July 5. During this period, ISIS was at the center of the media discourse of many Arab states, given that the International Coalitions, which has included some of those countries (Jordan, Morocco, Bahrain, Jordan, Qatar, Saudi Arabia, and the United Arab Emirates) started to target the Islamic State since August 8, 2014, in Iraq and September 22 in Syria. Second, although the suspension activity puts forward by Twitter itself against ISIS-supporting accounts started already in late 2014, its peak happened only several months later. 4 As a result of that, the period we covered in our analysis should be one in which people could feel less the pressure to reveal his or her true opinion toward ISIS without the risk of being censored for that. This is, after all, the reason why focusing on social media is interesting, as discussed above. Third, and finally, by extending the analysis till January 2015, we are able to capture the impact on the debate about ISIS within Arab online community of the major terrorist attack committed by a group of ISIS-inspired terrorists in Paris (i.e., Charlie Hebdo) that had a worldwide echo.
For the present article, Twitter data have been collected via Brandwatch, an official firehose company dealing with Twitter, on all Arabic language tweets that explicitly discussed ISIS (see the appendix for the list of keywords employed in our query). By relying on a firehose, and therefore by collecting the entire universe of tweets that satisfy our search query, our aim was to avoid the possible sampling bias introduced in the study of Twitter when collecting data through publicly available Application Programming Interfaces (APIs) (González-Bailón, Wang, Rivero, Borge-Holthoeferd, & Moreno, 2014). 5 Our final number of tweets was 26.2 million (on average 128,000 per day; median value: 99,000).
Applying sentiment analysis on Arabic posts has attracted a growing interest in recent years (e.g., Al-Moslmi, Albared, Al-Shabi, Omar, & Abdullah, 2018). As discussed in the previous section, we relied on iSA to discern the position expressed by users toward ISIS. For doing that, in the training set stage of the analysis, we employed three graduated Arabic native speaker students (one Syrian, one Egyptian, and one from Morocco) to ascribe the tone (that we call “sentiment”) toward ISIS with three options: positive, negative, or neutral. 6 The training set was compromised by 1,600 tweets extracted randomly from different days in the period here analyzed. 7 See Table 1 for some examples of tweets and their sentiment classification (expressing either a positive or a negative attitude toward ISIS).
Examples of Classified Tweets About ISIS in the Training Set.
Overall, the average positive sentiment value toward ISIS (the ratio between % of positive tweets over the sum of % of positive and negative tweets) is 25.1%. In the already quoted work by Jamal et al. (2015), the authors investigate the reactions to terrorist events (such as the Boston Marathon bombing in 2013 and an attack in London) within the Arabic Twittersphere by employing the algorithm developed by Hopkins and King (2010), that, as already highlighted, shares the same aggregated and supervised approach as iSA. Quite interestingly, they find that the degree of explicit support in each of the two abovementioned terrorist attacks was roughly one comment out of four, among those who took a clear and strong position on Twitter, therefore producing a result quite similar to ours. Although their result has been derived by focusing on a different subject in an earlier period than ours, we take this recurring percentage (25%) as an indirect corroboration of our recovered aggregate measure of (positive) sentiment toward ISIS in the Arabic Twittersphere.
Of course, an average value could mask a large variance in the data. Figure 1 in this regard focuses on the daily variation around the share of positive sentiment mean toward ISIS’s actions, a variable we label SENTIMENT DEVIATION. Any value higher than 0 means therefore that in that day the expressed (positive) sentiment toward ISIS was higher than the mean, the opposite for any value lower than 0. In the same graph, we have also reported the corresponding lowess function. Interestingly, this lowess function presents a rather flat trend, meaning than any extemporal shock in the value of SENTIMENT DEVIATION appears to be absorbed in a very fast rate. However, the lowess function begins to bend down in January 2015.

Daily variation around the share of positive sentiment mean toward ISIS’s actions (variable name: SENTIMENT DEVIATION).
Similarly, in Figure 2, we have plotted the daily variation around the average number of all tweets (including the neutral ones), a variable that is labeled ATTENTION DEVIATION. In this case, a positive number means on that day the volume of discussion about ISIS within the Arabic Twittersphere was larger than the mean (around 128,000 tweets, as noted above); a negative number indicates the opposite. Also in this figure we have plotted a lowess function that shows a substantial stability that begins to increase once again around January 2015.

Daily variation around the average number of tweets discussing ISIS (variable name: ATTENTION DEVIATION).
Determinants of Daily Positive Sentiment Toward ISIS
In our first econometric analysis, we aim to explain the temporal variation in the data recorded for the SENTIMENT DEVIATION variable. For doing that, we focus on a set of variables related to several major events. 8
First, we control for the
Correlates of Daily SENTIMENT DEVIATION.
Model 1 shows several interesting findings. First, it appears a kind of “us vs. them” effect: the
Also “war events” appear to matter: in particular,
In Model 3, on the contrary, we controlled how the number of articles published on Arabic online newspapers about ISIS affects the sentiment recorded on Twitter. We employed the same keywords employed to monitor the Twitter activity (see the appendix) to recover the online news written in Arabic language that were discussing about ISIS in the temporal period covered in our analysis. Also in this case, the data come from Brandwatch. The average number of articles discussing about ISIS on a daily basis is 737. In this respect, we found a positive media effect (the more news online discusses about ISIS, the higher is SENTIMENT DEVIATION). An extended literature shows how heavy media coverage of terrorist activities can increase the likelihood that similar actions will occur in the future (see Jenkins, 1981; Weimann & Winn, 1994). In this respect, the results reported in Model 3 show that the level of media attention on terrorist groups, beyond producing the just underlined positive effect on terrorist actions, could also increase the support expressed (at least online) toward such groups.
Positive Sentiment Toward ISIS and Foreign Fighters
The phenomenon of foreign fighters, that is, people who decide to leave their own country to go to fight for ISIS in Syria and Iraq, has attracted, as discussed earlier, a large attention in these last years, both at the academic level and on the popular press as already discussed above. A special focus has been devoted in particular on the reasons that could explain such radical choice. In this section, we exploit the geo-localization of tweets to understand whether there is any the relationship between the national online overall tone toward ISIS across countries with the number of foreign fighters for ISIS of those same countries.
To identify the national origin of a tweet, we followed these rules: (a) we considered the geo-coordinates meta-data attached to a tweet whenever they were available; (b) otherwise, to determine the location of a mention we took advantages either of the information provided directly by the user and/or the time zone meta-data that is sometimes attached to a tweet. Through this method, we were able to recover the national origin of 45% of tweets in our dataset. 12 Note that we included in the analysis reported below only those countries that present more than 1,000 tweets estimated according to the procedure just discussed. This allows us to have a reasonable amount of data to analyze from every country. The final sample of countries in the analysis reported below is 61.
The data source for foreign fighters comes from a study by International Center for the study of Radicalisation and Political violence published in January 2015. 13
Behind the
Given the characteristics of our dependent variable, we estimate a set of Negative Binomial models (see Table 3). Model 1 is our benchmark model where we include all countries presented in our dataset. Models 2 to 5 allow to control for the robustness of our findings. Let us start to discuss the results from Model 1.
Explaining the Number of Foreign Fighters by country.
As can be seen,

Predicted number of Foreign Fighters for different values of Sentiment toward ISIS.
The opposite is also true: The more negative a country’s Twitter discussion was about the Islamic State, the more of that country’s people left to fight with the group.
Why this result? The exit and voice seminal framework originally proposed by Albert Hirschman (1970) is useful in this regard. As is well known, Hirschman underlines how any member of an organization, whether a nation, a private business, or any other form of human grouping, have essentially two possible responses when she perceives a change in her social environment connected to some actions (or inactions) put forward by her organization: She can exit (withdraw from the relationship) or she can voice (attempt to repair or improve the relationship through communication of the complaint, grievance, or proposal for change).
Following exactly this same theoretical framework, our hypothesis is that when Islamic State sympathizers find (or at least perceive according to the online debate and the connected level of
We ran a set of further models to check for the robustness of our finding. In Model 2, we replicate Model 1 but including this time only those countries with a number of tweets discussing about ISIS in Arabic language larger than 15,000. Model 3 drops from the analysis the United States. The United States is in fact the country with the largest number of tweets (almost two thirds of the total) and, as already noted (Berger & Morgan, 2015), there are several reasons to treat with extra care the data geolocated in the United States when the discussion about ISIS is concerned. As can be seen, in both cases,
There could also be some alternative explanations behind the negative relationship that we found between
Both Models 4 and 5 are reassuring about the robustness of our explanation linking
With respect to the other variables included in Table 3, the fact that the
It is also interesting to note how everything that reduces the “transaction costs” of becoming a foreign fighter (such as
Conclusion
Compared with the time frame covered in the present analysis, the military campaign against ISIS in both Syria and Iraq has recorded an impressive series of victories in the months following January 2015, forcing ISIS to abandon almost all of the territory previously controlled. This, however, does not reduce the relevance of the results reported in the present study that focuses on the “glorious days” of the so-called “Islamic State”: not only in terms of better understanding an (almost) past phenomenon but also in terms of the lessons we can derive from it. After all, despite the current military defeat, concern that ISIS may remain viable in the long term, both as group and as an inspiration, has not faded away (Barrett, 2017).
Research suggested, as already underlined, that “social media is a double-edged sword” for ISIS because it allows spreading propaganda but also increases ISIS vulnerability—particularly when the victims are other Muslims, mobilizing the opponents and discrediting the terrorist group (Farwell, 2014, p. 52). Building on this debate, our results about the Arabic Twitter discourses on ISIS suggest—indeed—that the support toward ISIS drops, for example, when the group attacks rival Mosques and opponent Imams, killing other Muslims.
Furthermore, in line with the idea of a lonely wolf, our analysis shows that the number of foreign fighters is lower in countries that report a stronger positive sentiment toward ISIS. Conversely, ISIS sympathizers living in countries with a lower share of support might feel marginalized and end up radicalizing their views joining ISIS.
The policy implication of such finding is not trivial. After the tragic events in Paris, the group Anonymous hacked and shut down 5,000 Twitter accounts held by Islamic State sympathizers, with a great deal of media attention. Twitter itself and various security agencies (including Europol) had already been using similar strategies to limit the group’s followers’ ability to spread propaganda via social networks. Clearly their main and common aim was to neutralize the Islamic State’s ability to use Twitter to reach far beyond its own narrow audience and to reduce the violent radicals’ ability to manipulate public opinion and attract new recruits and sympathizers. The goal might be a good one. But we need to watch out for the unintended—and potentially serious—consequences of such a strategy. Torres Soriano (2012) and Benson (2014), for example, contend that the Internet creates as much vulnerabilities for terrorist organizations as it does strengths. On one hand, networked media provides an array of unprecedented advantages for terrorist groups, such as interconnectivity, anonymity, cheapness, power enhancement, access to new audiences (Whine, 1999). On the other hand, it also provides a host of disadvantages, among them being chiefly opportunities for tracing and monitoring, hacking, and individual and organizational attacks on sites and disinformation. In this sense, suspending Twitter accounts destroys an important source of intelligence (Akhgar et al., 2016; Neumann, 2013).
Second, as much as networked media facilitates communication between like-minded individuals, it also provides a forum for those who are persuasive against it (Torres Soriano, 2012).
Third, and finally, limiting debate in a digital forum could further radicalize and isolate possible Islamic State sympathizers. The resulting
This conclusion, moreover, keeps its relevance also nowadays: ISIS’s losses of terrain in the Middle East (and North Africa), seems, for example, to coincide to a growing online activity by ISIS itself targeting those populations more receptive to its message in several European countries. 24 The fact that ISIS appears successful at inspiring low-level attacks in Europe despite its territorial losses indicates in this sense that its messaging for a “call for lone jihad” remains potentially resonant. Such message, moreover, could be easily interpreted as a different factual translation of the “loneliness effect” we have highlighted in our article: by being deprived by the exit route represented by joining the Islamic State in the Islamic State controlled territory, the “loneliness effect” could risk to produce a new “(extreme) exit” option, that is, a suicide terrorist attack in one’s own native country. Adding to this scenario the growing number of returning Foreign Fighters (at least 5,600 citizens from 33 countries that have left Syria and Iraq to return back to their own community at the end of 2017; see Barrett, 2017) just increases the relevance of what underlined. This represents a future direction of research that should be investigated in greater details.
Our analysis is not without limitations: In particular, by focusing on the aggregate level, as we do in the present article, we cannot rule out the possible existence of an ecological fallacy in our results. Still, as we have shown, the fact that our results appear to be robust to several alternative checks is reassuring about our conclusion.
Moreover, our results are in line with those reported in a number of studies that consider political terrorism as a substitute for nonviolent expression of harsh dissent (Frey & Luechinger, 2003; Gurr, 2006; Lichbach, 1987). This can be also of interest to the growing literature discussing about censorship (King, Pan, & Roberts, 2013, 2014) and the effects of social media on democracy (Tucker et al., 2017). Finally, this study adds to the mounting evidence that online social networks are not ephemeral, spam-ridden sources of information (DiGrazia et al., 2013). Rather, social media activity can provide a valid indicator of political decision-making that could have relevant (and sometimes unfortunate) consequences.

English translation: “They are attacking the rules on stoning and taxing nonbelievers. They are fighting the Islamic State because they hate god’s shariah that Islamic State implements”
English translation: Either you’re with us or against us. These words were said by that monkey Bush and are put into effect by [Abu Bakr all] Bagdhadi’s mobs. #unjust #Islamicstate
English translation: “Why do you hate Islamic State soldiers? Who are you closer to Bush or ISIS? According to what you are saying I don’t believe you are Sunni and you talk in this way because those who hate Islamic State are Shia”
English translation: The Sunni people in Iraq and Syria disagree with you. They live within Islamic State and they love the state but you hate ISIS though you live in Qatar
English translation: The most beautiful thing in Syria is that you don’t need to raise the consciousness of the people because they have understood the lies of the media when they talk about ISIS