In political campaigns, tone matters. Scholarly research has suggested that negative political communication could affect both political preferencesFootnote 1 and voter turnoutFootnote 2, and accumulating evidence in psychology shows that negative emotions typically prevail over positive ones, both at the social and individual level.Footnote 3 Politicians thus have clear incentives to go negative: such messages generally attract more attention and are more likely to be remembered by voters than positive messages.Footnote 4 We should therefore expect political organizations to go negative when it serves their goals. But do they? And what explains tone variations of political communication within campaigns?
The present article examines online political communication of the official YES and NO umbrella organizations during the 2014 Scottish independence referendum campaign. This context offers unique opportunities to study political communication dynamics: two clearly defined sides competed to convince voters to choose between status quo and a hopeful but risky change. Previous research has shown that defenders of the status quo in independence referenda – here, the Better Together (NO) organization – have greater strategic incentives to go negative than pro-secession organizations like Yes Scotland (YES).Footnote 5 Accordingly, our sentiment analysis of social media posts shows that the NO campaign was generally more negative than the YES campaign during the Scottish independence referendum. However, results suggest that contextual factors were also at play. Indeed, the tightening of the race appears to have had a significant effect on Better Together’s campaigning tone. Moreover, data shows that Yes Scotland’s communication sentiment might have been impacted by the broadcasting of two televised leaders’ debates in August 2014.
LITERATURE REVIEW
Negativity in Political Campaigns
The use of negative political communication is a predominant characteristic of modern politics,Footnote 6 with research showing that approximately one-third of all campaign communication is negative.Footnote 7 This practice can be explained by the theory of negative voting, which states that vote choice is primarily determined by negative considerations and by the rejection of proposals rather than by their endorsement.Footnote 8 That line of reasoning seems to have found an echo on the field: nowadays, most political strategists consider negative communication as an effective strategy in electoral contexts,Footnote 9 even if accumulating evidence shows that negative messaging can often backfire and harm its users.Footnote 10
More broadly, by the use of framing, any given message can be considered through a variety of perspectives and be constructed so as to have implications for several values or considerations.Footnote 11 According to Hallahan,Footnote 12 framing distorts cognitive information processing by incorporating contextual clues in a message. One of the frames of Hallahan’s seminal framing typology – the framing of choice (or ‘framing of risk’ for Strömbäck and KiousisFootnote 13) – models reality by articulating a choice between two independent options involving a lower or higher degree of uncertainty. Independence referenda are an excellent example of this type of framing, as the status quo option is generally opposed to a radical (and unpredictable) change in a region’s legal status. Furthermore, prospect theory, which is intimately related to the framing of choice, states that the negative framing of a risky decision is reflected more fullyFootnote 14 and receives more attention,Footnote 15 when compared to a logically equivalent option that is positively framed. This may seem counterintuitive for two reasons: first, because the receiver should calculate gains and losses without being influenced by an arbitrary positive or negative reference point, and second, because the evocation of a gain or a loss should not affect attitude towards uncertainty.Footnote 16 Nonetheless, researchers are able to explain prospect theory by the fact that people generally tend to be risk averse.Footnote 17
In sum, the framing of choice presents each electoral outcome as a decision between multiple avenues among which adverse options are strategically being pictured as more risky.Footnote 18 Research shows that such framing can take up two different forms. First, political organizations may use fear arousal campaigning, which is typically ‘designed to scare people by describing the terrible things that will happen to them if they do not do what the message recommends’.Footnote 19 Second, political communication can rely on critical campaigning, which argues in a more civil manner against specific public policies.Footnote 20 In this article, data show that the Scottish referendum campaign communication generally lies within critical campaigning, with few extreme messages and less than half of all published messages framing the outcome of the referendum as either a gain or a loss.Footnote 21 Interestingly, for Better Together, most of the framed messages (65.45 per cent) concentrate on losses associated with a YES vote, while the reverse tendency is observable for Yes Scotland, which rather focuses on predicted gains in an independent Scotland (81.42 per cent). This is both consistent with our findings and with the work of Nadeau et al.,Footnote 22 which state that negative campaigning tends to be especially effective for the status quo option during independence referenda.
The 2014 Scottish Independence Referendum
Referenda are unique opportunities for the study of negative communication, for three main reasons. First, referenda focus, by definition, on positional issues. Even if they cannot always be considered as being cross-partisan, issue-based contests are necessarily more prone to campaign effects.Footnote 23 Second, political options in referenda are usually defined in two distinct camps, which eases direct comparison in the study of interactions. Third, dichotomous competition is thought to favour negative messaging by making the potential increase in public support for a certain camp directly dependent on deterring support for the other camp. For instance, ‘[if] there were only two brands of cereal, dissuading customers from purchasing the competitor’s brand would benefit the sponsor because it would leave only the sponsor’s brand to purchase’.Footnote 24
In 2011, the Scottish National Party formed the first majority government at the Scottish Parliament in Holyrood on the promise of holding a referendum on Scottish independence. On 15 October 2012, Scotland’s first minister Alex Salmond ratified the Edinburgh Agreement with the British government to set the terms of the Scottish independence referendum campaign, which was officially launched mid-2014. Two umbrella organizations representing the YES and NO forces were created: Yes Scotland and Better Together. Both were legally accredited and received public funding to transmit their messages on various platforms. Throughout the campaign, risks associated with the secession of Scotland occupied a central place in the arguments of the Better Together organization. More precisely, the NO camp favoured themes that were particularly focused on the insecurity related to the use of the British currency, the status of Scotland in the European Union and the transition of the national health system.Footnote 25
Figure 1 shows the evolution of public opinion in the referendum campaign from 16 June to 17 September 2014. In June 2014, the NO option was comfortably leading the polls with a 17 per cent advance on the YES, but gradually lost momentum during the last weeks of the campaign. In August, two televised debates took place between Scotland’s pro-independence First Minister Alex Salmond and Chairman of the Better Together campaign Alistair Darling. The first debate, which aired on Scottish Television on 5 August, was considered a win for the NO campaign by 56 per cent of viewers.Footnote 26 However, Salmond came out on top in the second debate broadcasted on BBC One Scotland on 25 August according to 71 per cent of viewers.Footnote 27 On referendum day 18 September, the Scottish electorate decided to remain within the Union by a clear 55.3 per cent majority.
DATA AND METHOD
Political parties increasingly craft their electoral strategies for the use of social media platforms in a top-down manner.Footnote 28 Indeed, despite the inter-user interactivity of social media and the framing of traditional media, political elites remain firmly in control of their messaging.Footnote 29 This article analyses the Twitter communication of the two official organizations involved in the 2014 Scottish referendum: Better Together and Yes Scotland. These textual data were collected throughout the campaign using the Twitter API. Twitter is a micro-blogging website based on real-time diffusion of short text messages and on interactivity between its users, which comprise both individuals and organizations. It constitutes a valuable source of data for the study of political communication, as it is largely used for political message diffusion and offers a unique opportunity for political figures to interact with potential voters.Footnote 30
Over the past few years, some doubt has been casted on the representativeness of Twitter users within the broader electorate. While it has been clearly demonstrated that these users have sociodemographic characteristics that are different from those of the general public,Footnote 31 researchers have developed various weighting methods to ensure their representativeness.Footnote 32 However, contrarily to this stream of literature, our analysis does not seek to infer characteristics of the general population by using Twitter data – instead, we regard organizational tweets as a proxy for the general political communication emitted by Yes Scotland and Better Together throughout the referendum campaign. Although the analysis of organizational political communication on Twitter has widely been neglected by the literature, Tumasjan et al.Footnote 33 demonstrate that Twitter message sentiment tends to reflect offline party positioning. These findings confirm our assumption that the social media communication diffused during the 2014 Scottish referendum approximately reflects each of the two official organizations’ global communication strategy.
Furthermore, the structure of Twitter data allows us to look at the interaction of political actors with other Twitter users, notably with regard to the ‘retweet’ function, which permits the sharing of messages composed by third parties. The real-time aspect of this platform also enables us to study the evolution of political actors’ messaging tone and content during every single day of the campaign. We collected all messages diffused by the two official Scottish referendum organization accounts (@YesScotland, N=3,078 and @UK_Together, N=1,230) during the last three months of the campaign. Our analyses are based on an automated sentiment analysis of these textual data, using the sentiment lexicons developed by Liu, Hu, and ChengFootnote 34 – a well-known method in the field of political communication. A polarity score was assigned to each individual tweet based on the words that compose it: messages were given a score point for each positive word recognized by the lexicons and lost one of these score points for each negative word recognized by the lexicons.
The literature using Twitter data frequently relies on similar lexicon-based sentiment analyses. Recent studies show that the reliability of such lexicons can be comparable to that of manual coding.Footnote 35 For instance, Chew and EysenbachFootnote 36 demonstrate that the evaluation of Twitter communication trends over time is typically similar with both methods. Research also shows that, by their very nature, short messages like tweets are easier to analyse efficiently using automated methods than larger texts or documents.Footnote 37 Furthermore, if the number of observations is relatively large, as is the case in our analysis, errors linked with automated sentiment coding typically cancel out.Footnote 38 Still, some authors have suggested that the simplicity of automated methods could make their results sensitive to noise.Footnote 39 This advocates for an adjustment of the lexicons to their specific application context. Thus, to avoid unnecessary bias, neither the word ‘Yes’ or ‘No’ were included in the lexicons used in our analysis, nor were the words related to slogans ‘Better’ (was removed from the original dictionary) and ‘Together’.Footnote 40 An example of coding can be found in the following tweet diffused by Better Together, which has a score of −3 due to the presence of three negative words (‘breaking’, ‘risk’ and ‘unwilling’):
@UK_Together: Brian Wilson says breaking away from the UK is a risk rural communities seem unwilling to take. (4 August 2014)
Similarly, the following Yes Scotland tweet holds a score of 2 since it contains two positive words (‘wealth’ and ‘decent’):
@YesScotland: With a Yes, we can make Scotland’s wealth work better – creating better jobs, providing decent pensions and investing in childcare. (15 July 2014)
In supplement to social media data, our analyses use commercial polling data publicly available on the ‘What Scotland Thinks?’ website run by the ScotCen Social Research.Footnote 41 It provides impartial, up-to-date information on public attitudes towards the issue of Scottish independence. Data show the answers to the following survey question for thirty-six polls throughout the campaign: ‘Should Scotland be an independent country?’ (N ∈ {705, 3,237}).
RESULTS
Our results show a sharp contrast in the communication tone of Better Together and Yes Scotland during the 2014 Scottish independence referendum campaign. As expected, the NO side’s political messaging was more negative than that of the YES side, but the tone of both organizations also fluctuated over time. Among others, Yes Scotland became distinctively more negative as time passed, especially after crucial events like the televised debates. What could explain such variations? At this point in time, scholars have not studied the impact of fluctuations in vote intentions – as reported by polls – on an organization’s use of negative communication during political campaigns. In the literature, public opinion is rather used as an explicative variable for other trends: turnout level,Footnote 42 mass media behaviourFootnote 43 or polling behaviour itself.Footnote 44 Our article builds on this previous work by analysing the effect of public opinion on political communication sentiment. We use a time-series regression analysis to sort out the potential determinants of tone variation. Results demonstrate that, controlling for momentum, campaign day, campaign events and the dates on which polls were released, tone scores correlate with standings in polls for the NO side, and with campaign periods for the YES side. These findings are discussed in more detail below.
Figure 2 shows tweet sentiment distribution of all messages diffused by both official Twitter accounts during the Scottish referendum campaign. Overall, for both campaigns, few tweets have extreme sentiment values; the majority are neutral or moderately positive. We also note that Yes Scotland’s tweets are clearly more positive than those of Better Together. As stated earlier, this is consistent with previous research looking at the 1995 Quebec independence referendum, which suggests that campaigning on the side of the status quo provides ‘an incentive to exploit [worst-case] scenarios’.Footnote 45 However, the fact that Better Together’s communication is only negative when compared to Yes Scotland, and not negative per se, confronts some separatists’ claim that Better Together’s campaign was outright ‘scaremongering’.Footnote 46
Figure 3 shows the daily evolution of tweet sentiment for both organizations from 16 June to 17 September 2014. Each dot represents the daily average sentiment score for each side. These dots are connected by a thin solid line representing the raw evolution of tweet sentiment. The thicker lines represent the results of non-parametric local regressions (lowess) used to uncover general trends, with 95 per cent confidence intervals calculated using a t-based approximation. Results clearly show that the YES side campaign tone gets more negative as time passes. At the beginning of the campaign, the difference in tone is marked: Yes Scotland’s campaign is clearly more positive than that of Better Together, which fits our theoretical expectations and the pattern presented in Figure 2. However, the difference in tone between both organizations vanishes near the end of the campaign.
Observational data indicate that this converging trend starts after the heated televised debates between Salmond and Darling in August 2014. As stated earlier, the first debate (5 August 2014) is known to have been won by the NO side unionist leader, while the second (25 August 2014) was allegedly won by the YES side separatist leader. Previous research has shown that televised debates can significantly affect voting preferences,Footnote 47 but generally fail to explore their impact on party strategy. In the Scottish case, could the debates themselves explain variations in campaign tone, or could this phenomenon rather be due to other factors, such as the tightening of the race? Indeed, various circumstances could explain a shift in campaigning tone. First, campaign timing could matter. Campaign events – such as leader debates – held at specific moments during the campaign might influence communication sentiment. The averages of both official campaigns’ daily tone (N = 188) are regressed on variables operationalizing these factors using a time-series regression analysis.Footnote 48 More precisely, dummies identifying post-debate periods are included in this model, as well as a daily time variable designed to capture the effect of getting closer to referendum day, thus controlling for time trends in tweet sentiment for both organizations.
Second, standings in the polls might push political organizations to change the tone of their messaging out of disappointment or enthusiasm. Therefore, in addition to variables indicating campaign timing, three other variables were created to test the potential effect of public opinion on political communication sentiment. First, the mere difference between the support for each option is used to test whether leading in polls affects campaign tones. Second, since polls also indicate momentum for an option when one of the sides improves its standings, the model includes a momentum variable that is calculated by subtracting the percentage of support for an option in the newest poll from the percentage in the previous poll. Third, polls were frequent during the campaign, but still not released every day. A dummy variable for poll release days is included in the model, since organizations might adopt a different communication strategy on such days. The latest poll numbers were used for days when polls were not released. This choice makes theoretical sense: an option is thought to be ahead in the polls until a new poll is released, and organizations should behave accordingly.
In order to evaluate the effect of each tone predictor, different models are estimated (see Table 1). First, the time-series regression analyses confirm that the NO side was on average more negative than the YES side during the referendum campaign.Footnote 49 But this effect disappears once variables related to public opinion are added to the model. Note that the variable indicating a day during which a poll was released is not statistically significant when considered individually (not shown). When the full model prescribed by theory is estimated, the only potential factor that ends up being statistically significant for the NO side is the effect of leading in polls, once controlled by the other factors. For the YES side, post-debate campaign periods are significantly correlated with political communication sentiment. The direction of the effect is the same for both sides: the more polls were favorable to the NO side, the more Better Together distributed negative messages, and after the first and second debates, the YES side also tended to distribute more negative messages.
*p<0.05; **p<0.01; ***p<0.001.
Source: Official Twitter accounts of Better Together (N=1,230) and of Yes Scotland (N=3,078), and What Scotland Thinks (16 June to 17 September 2014).
Another interesting finding is the existence of a short lagged effect for poll lead on Better Together’s communication tone during the campaign. Figure 4 presents the evolution of the effect of momentum and poll lead on message sentiment during the week following poll releases. No matter the time lapse following a reported change in momentum, this variable remains uncorrelated with the campaign sentiment of both organizations, which is consistent with the results presented in Table 1. Poll lead, on the other hand, appears to have a statistically significant effect on Better Together’s tone only on poll release days and during the following twenty-four hours, which is theoretically consistent with the instantaneity of Twitter communication.
DISCUSSION
What do these findings mean for the literature on political communication? Research has extensively studied voters’ responses to political campaigning. Our data shows that an analysis of the reverse relationship is possible. For instance, public opinion appears to be a predictor of Better Together’s communication sentiment during the referendum campaign. Moreover, our model suggests that campaign events such as televised leaders’ debates could also have a measurable effect on organizations’ communication strategy. In this case, Yes Scotland became more negative after the first debate between Alex Salmond and Alistair Darling, which was broadcasted on Scottish Television (STV) on 5 August 2014. More generally, at that exact point in time, the error margins of both organizations’ average sentiment score collided, mostly because of a tone decrease in Yes Scotland’s messages. Let’s underline again that the NO side had won this first debate, during which Alistair Darling had repeatedly urged Alex Salmond to give out his ‘Plan B’ if a currency union with the United Kingdom were to be rejected by Westminster. Thus, while our study demonstrates the relevance of using online social media data to analyse elites’ strategic political behaviour, results suggest that public opinion is only one of many influences over campaign tone in referendum campaigns.
Furthermore, this article focused on a single case – yet there might be something specific about Scotland or its political actors that explains the results shown in this research. For instance, there were substantial technical differences between both Scottish referendum organizations: the Yes Scotland account had more followers on social media and a greater follower increase than Better Together during the campaign,Footnote 50 and Better Together was ‘much more centralized and its grasp over both the message content and the means of communication used by activists more extensive than the Yes campaign, which allowed its activists and sub-campaigning groups more leeway and spontaneity’.Footnote 51 These two technical distinctions might have introduced some selection bias throughout the campaign. At the very least, such contextual factors deserve more attention in the developing of a general theory of communication sentiment in referenda.
Overall, online communication data have a great potential for multiple research angles in political science. Interestingly, our results show a sharp contrast of sentiment between primary and secondary political messages for both organizations. If one only looks at the primary messages written by the official accounts, messages produced by the YES side are substantially more positive than those produced by the NO side (see Figure 2). Surprisingly, perhaps, the secondary messages – written by third parties, or ‘retweets’ – shared by both accounts show the opposite pattern. This supports the conception that the main function of retweeting is to diffuse information that differs from politicians’ planned communication strategies.Footnote 52 More studies should be conducted to uncover the exact causes of the differences between primary and secondary social media messaging in such contexts. Past research already shows that emotional appeals in a tweet, either positive or negative, have positive effects on its ‘retweet’ rate.Footnote 53 This would imply that political organizations have a tendency to ‘retweet’ messages that have extreme sentiment scores. Here, in both cases, secondary messages rather tend to moderate the tone of official messages, even if they do not seem to be used for similar reasons by both organizations. For instance, we note that the Yes Scotland account retweeted a particularly high number of messages concerning events and happenings such as rallies or mobilization activities. Is this a planned political communication strategy? Or could it be simply that retweets are not monitored as tightly as primary messages by the campaign teams? After all, the real-time and interactive characteristics of social media make it very difficult to plan in advance a strategy to remain ‘on message’ based on retweets.
In order to evaluate the generalizability of the findings presented in this article, one would have to replicate this research in a number of other contexts. Yet, independence referenda are relatively rare events. We would therefore suggest focusing on identifying general structural determinants of communication tone in a variety of contexts. Are status quo defenders always more negative? Do polls always affect tone in similar ways and with a similar strength? More research needs to be done on this topic. Some could also reproduce our work in conventional electoral contexts by looking at incumbents as status quo defenders. Finally, on a more technical level, studying political communication in real time has only been recently made possible through social media. More efforts are thus required to explore these new types of publicly available data, which have the potential to contribute to our understanding of real-time political communication dynamics.