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. 2012 Mar 20;7(3):e33215. doi: 10.1371/journal.pone.0033215

Evolution of Opinions on Social Networks in the Presence of Competing Committed Groups

Jierui Xie 1,3, Jeffrey Emenheiser 2,3, Matthew Kirby 2,3, Sameet Sreenivasan 1,2,3,*, Boleslaw K Szymanski 1,3, Gyorgy Korniss 2,3
Editor: Petter Holme4
PMCID: PMC3308977  PMID: 22448238

Abstract

Public opinion is often affected by the presence of committed groups of individuals dedicated to competing points of view. Using a model of pairwise social influence, we study how the presence of such groups within social networks affects the outcome and the speed of evolution of the overall opinion on the network. Earlier work indicated that a single committed group within a dense social network can cause the entire network to quickly adopt the group's opinion (in times scaling logarithmically with the network size), so long as the committed group constitutes more than about Inline graphic of the population (with the findings being qualitatively similar for sparse networks as well). Here we study the more general case of opinion evolution when two groups committed to distinct, competing opinions Inline graphic and Inline graphic, and constituting fractions Inline graphic and Inline graphic of the total population respectively, are present in the network. We show for stylized social networks (including Erdös-Rényi random graphs and Barabási-Albert scale-free networks) that the phase diagram of this system in parameter space Inline graphic consists of two regions, one where two stable steady-states coexist, and the remaining where only a single stable steady-state exists. These two regions are separated by two fold-bifurcation (spinodal) lines which meet tangentially and terminate at a cusp (critical point). We provide further insights to the phase diagram and to the nature of the underlying phase transitions by investigating the model on infinite (mean-field limit), finite complete graphs and finite sparse networks. For the latter case, we also derive the scaling exponent associated with the exponential growth of switching times as a function of the distance from the critical point.

Introduction

Since the seminal work of Gabriel Tarde [1] in the late 1800 s, the shaping of public opinion through interpersonal influence and conformity has been a subject of significant interest in sociology. This topic is especially relevant today due to the preponderance of online social media where individuals can influence and be influenced by their numerous and geographically scattered contacts. Public opinion on an issue is often shaped by the actions of groups that rigidly advocate competing points of view. The most evident example of such a process occurs during elections when multiple parties campaign to influence and win over the majority of voters. In this as well as other common scenarios, the predominant means of influencing public opinion involves some form of broadcast outreach such as television advertising, public demonstrations etc. However, even though factors exogenous to the network may have a significant effect on individuals becoming informed and engaged in particular issues [2], there is reason to believe that large scale changes in behavior or opinion are driven primarily through interpersonal influence events occurring within the network. Specifically in the context of rural campaigns, there is evidence that interpersonal channels constitute the dominant pathways for effecting individual behavior change, even when direct external influence is present [3]. Furthermore, with data on social networks becoming increasingly accessible, there has been a surge of interest in understanding how campaigns can be successfully won by leveraging pathways of social influence within the network, thus diminishing the need for, or complementing the effect of broadcast outreach.

Motivated by these observations, we study a simple model that enables us to draw useful insights on the evolution of opinions on a social network in the presence of two groups within the network that are committed to distinct, competing opinions on an issue. Within the limits of our model, one of the questions our work answers is the following. Suppose the majority of individuals on a social network subscribe to a particular opinion on a given issue, and additionally some fraction of this majority are unshakeable in their commitment to the opinion. Then, what should be the minimal fractional size of a competing committed group in order to effect a fast reversal in the majority opinion? In addition to answering this question quantitatively, we show the existence of two distinct types of phase transitions that can occur in the space of committed fraction pair values.

We model the dynamics of social influence using a two-opinion variant of the Naming Game [4][6] which also corresponds to a special case of the game introduced and studied in [7], [8]. The same model was referred to as the binary-agreement model in [9]. In this model, at any time, a node possesses either one of the two competing opinions (i.e. the node is in state Inline graphic or state Inline graphic), or both opinions simultaneously (state Inline graphic). In a given time step, we choose a node randomly, designate it as the speaker and choose one of its neighbors randomly and designate it as the listener. The speaker proceeds to convey its opinion to the listener (chosen randomly if it possesses two) to the listener. If the listener possesses this opinion already, both speaker and listener retain it while eliminating all other opinions; otherwise, the listener adds the opinion to his list. A table of possible interactions and outcomes between node-pairs is provided in Table S1. We emphasize that each node interacts and is influenced only by its neighbors on the network. There is no element in our model that represents an external influence mechanism such as the use of media, public demonstrations, or door-to-door campaigns by members of the competing groups. Except for their being un-influencable, the committed nodes are assumed to be identical in all other respects to uncommitted nodes. In particular, committed nodes do not influence their neighbors at a different rate or with a higher strength than uncommitted nodes.

Opinion dynamics models involving committed individuals all subscribing to a unique opinion have been studied previously in [9][12]. The situation pertinent to this paper - that of two competing committed groups - has received considerably greater attention [11], [13][16]. Mobilia et al. [14] studied how the presence of zealots (equivalent to committed individuals) affected the eventual distribution of opinions (stationary magnetization) in the case of the voter model. They demonstrated that the distribution for a finite sized network was Gaussian, with a width inversely proportional to the square root of the number of zealots, and centered at Inline graphic where Inline graphic, Inline graphic, represent the fraction of zealots in the two competing states. Similarly to [14], Yildiz et al. [16] studied the properties of steady-state opinion distribution for the voter model with stubborn agents, but additionally considered the optimal placement of stubborn agents so as to maximally affect the steady-state opinion on the network. Interestingly, unlike in the model studied here, in the voter model, no transitions in steady-state magnetization are observed as the committed fraction pair values are smoothly varied. Biswas et al. [15] considered the effect of having rigid individuals in a one-dimensional system of binary opinion evolution, and demonstrated a power-law dependence for the decay of steady-state magnetization on the fraction of rigid individuals.The work done in [11], [13] is similar in spirit to our work here; however, an important difference is that these studies only considered the infinite-network size limit for complete graphs. We study finite networks, both complete and sparse, and provide semi-analytical arguments regarding timescales that become relevant when the network size is finite.

Analysis

First, we study the mean-field version of the model, also being equivalent to the dynamics on the complete graph in the limit of infinite system size. We designate the densities of uncommitted agents in the states Inline graphic, Inline graphic and Inline graphic by Inline graphic, Inline graphic and Inline graphic. We also designate the fraction of nodes committed to state Inline graphic, Inline graphic by Inline graphic, Inline graphic respectively. These quantities naturally obey the condition: Inline graphic. In the asymptotic limit of network size, and neglecting fluctuations and correlations, the system can be described by the following mean-field equations, for given values of the parameters Inline graphic and Inline graphic:

graphic file with name pone.0033215.e026.jpg
graphic file with name pone.0033215.e027.jpg (1)

The evolution of Inline graphic follows from the constraint on densities defined above. In general, the evolution of the system depends on the relative values of Inline graphic and Inline graphic. In the case of Inline graphic, Inline graphic (or equivalently, Inline graphic, Inline graphic) there is only a single group of committed nodes in the network, all of whom subscribe to the same opinion. This was the case studied in [9], [11], [12]. In this scenario, a transition is observed when this committed group constitutes a critical fraction of the total network. Specifically, the transition point separates two dynamical scenarios in the phase space, Inline graphic, of uncommitted node densities. Below the critical value, the absorbing state (e.g., Inline graphic, Inline graphic when Inline graphic) coexists in phase space with a stable mixed steady-state and an unstable fixed (“saddle”) point. At or above the critical value, the latter non-absorbing steady-state and the saddle point cease to exist. Consequently, for a finite system, reaching the (all Inline graphic) consensus state requires an exponentially long time when Inline graphic is less than the critical value. Beyond the critical value this time grows only logarithmically with network size. Note that this critical value or threshold is analogous to a spinodal point [17], [18] associated with an underlying first-order (or discontinuous) transition in equilibrium systems.

In order to effectively characterize the behavior of the system governed by Eqs. (1) for Inline graphic, we systematically explore the parameter space Inline graphic by dividing it into a grid with a resolution of Inline graphic along each dimension. We then numerically integrate Eqs. (1) for each Inline graphic pair on this grid, assuming two distinct initial conditions, Inline graphic and Inline graphic, representing diagonally opposite extremes in phase space. The results of this procedure reveal the picture shown in Fig. 1 in different regions of parameter space. As is obvious, with non-zero values for both Inline graphic, consensus on a single opinion can never be reached, and therefore all fixed points (steady-states) are non-absorbing. With Inline graphic values within the region denoted as Inline graphic which we refer to as the “beak” (borrowing terminology used in [19]), the phase space contains two stable fixed points, separated by a saddle point, while outside the beak, in region Inline graphic, only a single stable fixed point exists in phase space. In region I, one fixed point corresponds to a state where opinion Inline graphic is the majority opinion (Inline graphic-dominant) while the other fixed point corresponds to a state where opinion Inline graphic constitutes the majority opinion (Inline graphic-dominant). Figure 1 shows representative trajectories and fixed points in phase space, in different regions of parameter space. Similar phase diagrams have been found in other two-parameter systems in different contexts including chemical reactions [19] and genetic switches [20].

Figure 1. Mean-field picture in parameter space.

Figure 1

The phase diagram obtained by integrating the mean-field Eqs. (1). The two lines indicate saddle-node bifurcation lines which form the boundary between two regions with markedly different behavior in phase space. For any values of parameters within the beak, denoted as region I, the system has two stable fixed points separated by a saddle point. Outside of the beak, in region II, the system has a single stable fixed point. The saddle-node bifurcation lines meet tangentially and terminate at a cusp bifurcation point.

In order to study the nature of the transitions that occur when we cross the boundaries of the beak, we parametrize the system by denoting Inline graphic where Inline graphic is a real number. Then, we systematically analyze the transitions occurring in two cases: (i) Inline graphic and (ii) Inline graphic. It can be shown that along the diagonal line Inline graphic the system undergoes a cusp bifurcation at Inline graphic. The movement of the fixed points as Inline graphic and Inline graphic are smoothly varied along the diagonal line is shown in Figure S1. Henceforth, we denote the value of Inline graphic and Inline graphic at the cusp as Inline graphic. As is well known, at the cusp bifurcation two branches of a saddle-node (or fold) bifurcation meet tangentially [21]. These two bifurcation curves form the boundary of the beak shown in Fig. 1. A detailed analysis demonstrating that Inline graphic constitutes a cusp bifurcation, as well as a semi- analytical derivation of the bifurcation curves is provided in the Supporting Text S1 (Sections: 1, 2, 3). The cusp bifurcation point is analogous to a second-order (or continuous) critical point seen in equilibrium systems, while bifurcation curves are analogous to spinodal transition lines.

Next, we study the stochastic evolution of opinions on finite-sized complete graphs through simulations. Here, we systematically vary Inline graphic from Inline graphic to Inline graphic to obtain the right bifurcation curve, and therefore by virtue of the Inline graphic symmetry in the system, also obtain the left bifurcation curve. In particular for a given value of Inline graphic we obtain the transition point by varying Inline graphic (with Inline graphic) and measuring the quantity:

graphic file with name pone.0033215.e074.jpg (2)

which we utilize as an order parameter. The above order parameter is analogous to the “magnetization” in a spin system as it captures the degree of dominance of opinion Inline graphic over opinion Inline graphic and is conventionally used to characterize the nature of phase transitions exhibited by such a system (see Figs. 2(a),(b)).

Figure 2. Behavior of typical order parameters as a function of linear trajectories of slope Inline graphic that pass through the origin, in parameter space for a complete graph.

Figure 2

(a)–(b) Steady-state magnetization Inline graphic defined in the text, for successive Inline graphic pairs along lines of slope Inline graphic and Inline graphic respectively that pass through the origin. The Inline graphic line in parameter space passes through the cusp point and gives rise to a second-order phase transition, while the Inline graphic line passes through a point on the (right) bifurcation line giving rise to a first-order phase transition. Here Inline graphic realizations of social influence dynamics were performed for each Inline graphic pair, starting from the initial condition Inline graphic, and the magnetization was measured conditioned on the system remaining in the steady state that it initially converged to. (c)–(d) Binder cumulant Inline graphic defined in the text for successive Inline graphic pairs along lines of slope Inline graphic and Inline graphic respectively, that pass through the origin. (e)–(f) Scaled variance, Inline graphic, defined in the text for successive Inline graphic pairs along lines of slope Inline graphic and Inline graphic respectively, that pass through the origin. Data for (c),(d),(e) and (f) were generated from Inline graphic realizations of the social influence dynamics, per Inline graphic pair, for each of two initial conditions: Inline graphic and Inline graphic.

Another quantity, the Binder cumulant, defined as

graphic file with name pone.0033215.e099.jpg (3)

for a system of size Inline graphic, is commonly used to distinguish between different types of phase transitions [17]. The utility of the Binder cumulant comes from the markedly different signatures we expect it to produce along a spinodal trajectory (e.g. Inline graphic) - one that passes through the spinodal line - and one along a trajectory that passes through the critical point (e.g., along the diagonal, Inline graphic). This difference arises from the following distinction in the evolution of the distribution of Inline graphic, Inline graphic, along these trajectories. Along a spinodal trajectory starting from a point where Inline graphic, an initially symmetric (about Inline graphic), bimodal Inline graphic becomes asymmetric and unimodal upon crossing the spinodal line, with the single mode eventually becoming a delta function. In contrast, along the diagonal trajectory in parameter space, Inline graphic is initially a double-delta distribution (for Inline graphic), symmetric about Inline graphic, and it smoothly transitions to a zero-centred gaussian distribution as the critical point is crossed. The definition of Inline graphic indicates that Inline graphic for a delta function distribution (also for a symmetric, double-delta distribution about Inline graphic), while Inline graphic for a zero-centered Gaussian distribution, and thus readily yields the limiting Inline graphic values at both extremes of the spinodal and diagonal trajectory. As illustrated in Figs. 2(c) and (d), Inline graphic as a function of Inline graphic shows distinct behaviors for Inline graphic and Inline graphic, indicating the existence of a second-order (or continuous) transition point at Inline graphic (Fig. 2(c)) and first-order (or discontinuous) phase transition points (Fig. 2(d)) along off-diagonal trajectories [17], respectively. The second-order critical point Inline graphic converges to the mean-field value, Inline graphic, as Inline graphic becomes larger. The dip observed in Inline graphic along the off-diagonal trajectory serves as an excellent estimator of the location of the first-order (spinodal) transition for a finite network. Thus, to reiterate, for a finite network, the second-order transition point and the first-order transition (spinodal) lines are respective analogues of the cusp bifurcation point and the saddle-node bifurcation curves observed in the mean-field case.

The fluctuations of the quantity Inline graphic can also be used to identify a transition point, particularly for the case of the second-order transition. In particular, in formal analogy with methods employed in the study of equilibrium spin systems, the scaled variance:

graphic file with name pone.0033215.e126.jpg (4)

serves as an excellent estimate for the second-order transition point Inline graphic for a finite network. As shown in Fig. 2(e), Inline graphic peaks at a particular value of Inline graphic, with the size of the peak growing with Inline graphic (and expected to diverge as Inline graphic). In the case of the spinodal transition, one studies fluctuations of Inline graphic (Inline graphic) restricted to the metastable state [22], [23] until the spinodal point (Fig. 2(f)) at which the metastable state disappears, and fluctuations of Inline graphic in the unique stable state beyond the spinodal point (Fig. 2(f)).

Figure 3 shows the bifurcation (spinodal) lines obtained via simulations of finite complete graphs by using the Binder cumulant (Fig. 2(d))to identify the location of the spinodal phase transition, and demonstrates that its agreement with the mean-field curves improves as Inline graphic grows. The cusp points shown here are identified in simulations as the locations where Inline graphic reaches its peak value (Fig. 2(e)).

Figure 3. Picture in parameter space for a complete graph obtained from analytical and simulation results.

Figure 3

The bifurcation lines and the cusp point in parameter space were obtained analytically from the mean field equations and are compared with those found using simulations for finite-sized complete graphs. Analytical and simulation curves show excellent agreement as Inline graphic increases. The location of the transition occurring across the bifurcation curve was obtained using the Binder cumulant Inline graphic (Fig. 2(d)), while the location of the cusp point was obtained by using variance of Inline graphic (Fig. 2(e)). For both analytical and simulation results, the bifurcation curves are obtained by identifying the critical points that lie on linear trajectories in parameter size described by Inline graphic. This process is carried out for different values of Inline graphic between Inline graphic and Inline graphic at intervals of Inline graphic, and for each value of Inline graphic, Inline graphic is varied at a resolution of Inline graphic. In simulations, for each such combination of Inline graphic obtained, we perform averages over Inline graphic realizations of the social influence dynamics, for each of two initial conditions, Inline graphic, and Inline graphic, with Inline graphic for each case.

In the region within the beak, the switching time between the co-existing steady-states represents the longest time-scale of relevance in the system. The switching time is defined as the time the system takes to escape to a distinct co-existing steady-state, after having been trapped in one of the steady-states. Figures 4(a) and (b) show sample evolutions of the system, demonstrating respectively, the switching between steady-states within the beak, and the fluctuations about the single steady state outside the beak. In stochastic systems exhibiting multistability or metastability, it is well known that switching times increase exponentially with Inline graphic for large Inline graphic (the weak-noise limit) [19], [24][26] Furthermore, the exponential growth rate of the switching time in such cases can be determined using the eikonal approximation [19], [27]. The basic idea in the approximation involves (i) assuming an eikonal form for the probability of occupying a state far from the steady-state and (ii) smoothness of transition probabilities in the master equation of the system. This allows the interpretation of fluctuational trajectories as paths conforming to an auxilliary Hamilton-Jacobi system. This in turn enables us to calculate the probability of escape allowing an optimal fluctuational path that takes the system from the vicinity of the steady-state to the vicinity of the saddle point of the deterministic system. The switching time is simply the inverse of the probability of escape along this optimal fluctuational path. We defer details of this procedure to Supporting Text S1: Section 4. Using this approach we find that for the symmetric case, Inline graphic, the exponential growth rate of the switching time Inline graphic with Inline graphic (Fig. 4 (c) ). Thus, along the portion of the diagonal within the beak:

graphic file with name pone.0033215.e158.jpg (5)

Outside the beak, the time to get arbitrarily close to the sole steady-state value grows logarithmically with Inline graphic (not shown).

Figure 4. Evolution of order parameter Inline graphic and the exponential growth in switching time as a function of distance from the second-order critical point.

Figure 4

(a) Switches in the value of Inline graphic as a function of time Inline graphic for a sample evolution (with initial transient removed) of the system when Inline graphic (Inline graphic). This reflects the system repeatedly switching between the Inline graphic-dominant steady-state (Inline graphic) and the Inline graphic-dominant steady-state (Inline graphic). (b) Sample evolution of the system (with initial transient removed) for Inline graphic (Inline graphic). The system fluctuates randomly about the only existing steady-state in which densities of Inline graphic and Inline graphic nodes are equal. (c) The dependence of Inline graphic in the exponential scaling Inline graphic when Inline graphic (Inline graphic) as a function of Inline graphic, obtained using the eikonal approximation (see SI: Section 4).

The results presented so far show that there exists a transition in the time needed by a committed minority to influence the entire population to adopt its opinion, even in the presence of a committed opposition (i.e. in the case where both Inline graphic), as long as Inline graphic. (Note that the case Inline graphic was considered in [9]). For example, assume that initially all the uncommitted nodes adopt opinion Inline graphic, and that Inline graphic. Then, the steady-state that the system reaches in Inline graphic time is the one in which the majority of nodes hold opinion Inline graphic. Despite the fact that there exist committed agents in state Inline graphic continuously proselytizing their state, it takes an exponentially long time before a large (spontaneous) fluctuation switches the system to the Inline graphic-dominant steady-state. For identical initial conditions, the picture is qualitatively the same if we increase Inline graphic keeping Inline graphic fixed, as long as Inline graphic lies within the beak. However, when Inline graphic lies on the bifurcation curve or beyond, the Inline graphic-dominant steady-state vanishes, and with the same initial conditions - where Inline graphic is the initial majority - it takes the system only Inline graphic time to reach the Inline graphic-dominant state (the only existing steady-state). Thus, for every value of an existing committed fraction Inline graphic (Inline graphic) of Inline graphic nodes, there exists a corresponding critical fraction of Inline graphic nodes beyond which it is guaranteed that the system will reach an Inline graphic dominant state in Inline graphic time, irrespective of the initial conditions. However, for any trajectory in the parameter space in a region where either Inline graphic or Inline graphic is (or both are) greater than Inline graphic, no abrupt changes in dominance or consensus times are observed. Instead, the dominance of Inline graphic or Inline graphic at the single fixed point smoothly varies as the associated committed fractions are varied. Moreover, the system always reaches this single fixed point in Inline graphic time.

Finally, we study how opinions evolve in the presence of committed groups on sparse graphs, most relevant to social networks. We study Erdös-Rényi (ER) random graphs [28] as well as Barabási-Albert networks [29]. For each of these sparse networks, we find the same qualitative behavior as found for the complete graph. As shown in Figs. 5, 6, as the average degree of the sparse networks increases, the bifurcation lines in parameter space tend to approach their mean-field counterparts. Although we do not study sparse networks analytically here, we note that in another instance of a phase transition for a similar model studied in [7], it was demonstrated using heterogeneous mean-field equations that the behavior of sparse networks is qualitatively similar to that of complete graphs. Figure 7 visually depicts typical instances of the evolution of opinions on an ER random graph for Inline graphic values within and outside the beak.

Figure 5. Results for Erdös-Rényi random graphs.

Figure 5

(a) The bifurcation lines and cusp point in parameter space obtained through simulations of Erdös-Rényi random graphs of size Inline graphic with different average degrees. The mean-field analytical curve is shown for comparison. For simulation results, the bifurcation curves are obtained by identifying the critical points that lie on linear trajectories described by Inline graphic in parameter space. This process is carried out for different values of Inline graphic between Inline graphic and Inline graphic at intervals of Inline graphic, and for each value of Inline graphic, Inline graphic is varied at a resolution of Inline graphic. For each such combination of Inline graphic obtained, we perform averages for quantities of interest over Inline graphic realizations of networks (with a single realization of the social influence dynamics per network), for each of two initial conditions, Inline graphic and Inline graphic with Inline graphic in each case. (b)–(c) Steady-state magnetization for ER graphs with Inline graphic and different sizes Inline graphic, as parameter pair values are varied successively along slope Inline graphic and slope Inline graphic lines in parameter space respectively.

Figure 6. Results for Barabási-Albert networks.

Figure 6

(a) The bifurcation lines and cusp point in parameter space obtained through simulations of Barabási-Albert networks of size Inline graphic with different average degrees. For simulation results, the bifurcation curves are obtained by a similar method as described in the legend of Fig. 5(a). (b)–(c) Steady-state magnetization for BA networks with Inline graphic and different sizes Inline graphic, as parameter pair values are varied successively along slope Inline graphic and slope Inline graphic lines in parameter space respectively.

Figure 7. Visualization of opinion evolutions.

Figure 7

The evolution of opinions on an ER random graph with Inline graphic and Inline graphic for two Inline graphic pairs. In each case Inline graphic and Inline graphic. Nodes holding opinion Inline graphic are depicted in red, while nodes holding opinion Inline graphic are shown in green. Nodes with larger diameters are committed nodes. Top: The case Inline graphic for which the system is in region I in parameter space (following the terminology of Fig. 1, and the system is trapped in a Inline graphic-dominant steady-state. Even after Inline graphic time steps, the system continues to remain trapped in this state (inset) with Inline graphic. Bottom: The case Inline graphic and Inline graphic for which the system is in the region II, and undergoes an abrupt transition (inset) to the Inline graphic-dominant state within Inline graphic time steps.

Discussion

Using a simple model, we have explored and quantified possible outcomes for the evolution of opinions on a social network in the presence of groups committed to competing opinions. Broadly speaking, our results indicate that as long as the fraction, Inline graphic, of nodes committed to a given opinion Inline graphic is held fixed at a value less than a critical value Inline graphic, it is possible to induce the network to quickly tip over to a state where it widely adopts a competing opinion Inline graphic, by introducing a fraction of nodes committed to opinion Inline graphic. The value of the competing committed fraction, Inline graphic, at which this tipping point arises depends on the value of Inline graphic, and is determined by the bifurcation curve (see Fig. 1). Importantly, for a given value of Inline graphic, the excess commitment Inline graphic required for the network to tip over to Inline graphic is a decreasing function of Inline graphic that reaches zero when Inline graphic. While the critical value Inline graphic itself may depend on the network structure and its size, the feature described above holds for the three different classes of networks studied here. A corollary to this feature is that if the committed fraction Inline graphic is held fixed at a value greater than pc, increasing the competing committed fraction Inline graphic only yields continuous incremental gains in the adoption of A (i.e., no tipping point or discontinuous changes in opinions exist). We analytically determine that Inline graphic for infinite-sized complete graphs, which as observed from our simulation results in Figs. 5, 6 appears to constitute a good upper bound to the value of Inline graphic for sparse networks.

Our results could be of utility in situations where public opinion is deadlocked due to the influence of competing committed groups. Perhaps one example of such a situation is the observed lack of consensus in the U.S. on the existence of human-induced climate change. Indeed, there is evidence in this particular case that the commitment of individuals to particular political ideologies may have an effect on their opinions [30].

Another scenario to which our model could bear some relevance is the adoption of competing industrial standards. Particularly in situations where a network of entities collaborate or are interdependent, there is a natural attempt at agreement in standards or protocols between interacting members. A classic example of this scenario is the case of the Sellers' screw manufacturing standard that proliferated despite competition from the Whitworth standard [31]. A key factor responsible for the eventual success of the Sellers standard was William Sellers' leveraging of his connections to corporations and manufacturers [32], whom he persuaded to become adopters of his standard. Furthermore, the network of interdependencies between industries at the dawn of the mass-manufacturing era played an important role in the adoption of the standard becoming widespread. It should be pointed out that in this case, the uncommitted members of the population initially adhered to neither standard - this situation can however be accommodated in our model by assigning each uncommitted his own unique “opinion” to begin with in close analogy to initial conditions for the original Naming Game [4], [5].

A more recent example of such a scenario is the competition between Flash and HTML5 in web-development. There is speculation that Flash, which until recently was the predominant platform for animated web content, is gradually ceding its dominance to HTML5 as a result of the increasing market-share of Apple's mobile devices which exclusively support the latter [33].

A potential competition between DC fast charging standards is also expected as electric vehicles become increasingly popular with consumers. The front-runners in the mass manufacture of electric vehicles have opted for the CHAdeMO standard, and charging stations compatible with the standard have begun proliferating in the US, Europe and Japan [34], [35]. An alternative to CHAdeMO currently being developed by the Society for Automotive Engineers (SAE), which governs the development of standards in the US automotive industry, is being touted by some car manufacturers as more cost effective as well as technologically superior. However, by the time the first cars employing the SAE standard hit the market, CHAdeMO charging stations are expected to be rather widespread, thus making a competition between the two inevitable [34], [36]. As new collaborations are forged between car-makers especially in the area of electric vehicle development [37], [38] (in addition to collaborations with energy suppliers), the outcome of this competition could be significantly influenced by manufacturers who are already committed to one of the two standards through their investment in them.

To conclude, we have presented results from a simple, abstract model for understanding how opinions on a social network evolve through social influence when there are multiple groups within the network dedicated to competing opinions. Despite the simplicity of our model, we believe the insights provided here form a useful theoretical complement to data-driven studies [39] and randomized evaluations [40] aimed at understanding the spread of opinions.

Note: Subsequent to this paper's initial posting on arxiv.org on 12/31/2011 and its acceptance for publication with minor revisions on 1/26/2012, S. Jolad sent us independent unpublished results by D. Linford, P. Hochendoner, A. Reagan, and S. Jolad addressing competing committed groups on the complete graph.

Supporting Information

Figure S1

Movement of fixed points as Inline graphic and Inline graphic are smoothly varied along the diagonal line Inline graphic . For Inline graphic three fixed points exist, two of which are stable, and the third is unstable. For Inline graphic, only a single stable fixed point exists.

(EPS)

Table S1

Possible interactions and respective outcomes in the model of social influence - a two-opinion variant of the Naming Game - that we study. Nodes can possess opinion Inline graphic, Inline graphic or Inline graphic, and opinion updates occur through repeated selection of speaker-listener pairs. Shown in the left column are the opinions of the speaker (first) and listener (second) before the interaction, and the opinion voiced by the speaker during the interaction is shown above the arrow. The column on right shows the states of the speaker-listener pair after the interaction.

(PDF)

Supporting Text S1

Mean-field analysis for bifurcations in parameter space and scaling of switching time with system size.

(PDF)

Footnotes

Competing Interests: The authors have declared that no competing interests exist.

Funding: This work was supported in part by the Army Research Laboratory under Cooperative Agreement Number W911NF-09-2-0053, by the Army Research Office grant W911NF-09-1-0254 and by the Office of Naval Research Grant No. N00014-09-1-0607. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. No additional external funding was received for this study.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Figure S1

Movement of fixed points as Inline graphic and Inline graphic are smoothly varied along the diagonal line Inline graphic . For Inline graphic three fixed points exist, two of which are stable, and the third is unstable. For Inline graphic, only a single stable fixed point exists.

(EPS)

Table S1

Possible interactions and respective outcomes in the model of social influence - a two-opinion variant of the Naming Game - that we study. Nodes can possess opinion Inline graphic, Inline graphic or Inline graphic, and opinion updates occur through repeated selection of speaker-listener pairs. Shown in the left column are the opinions of the speaker (first) and listener (second) before the interaction, and the opinion voiced by the speaker during the interaction is shown above the arrow. The column on right shows the states of the speaker-listener pair after the interaction.

(PDF)

Supporting Text S1

Mean-field analysis for bifurcations in parameter space and scaling of switching time with system size.

(PDF)


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