Integrating behavioral experimental findings into dynamical models to inform social change interventions (2405.13224v1)
Abstract: Addressing global challenges -- from public health to climate change -- often involves stimulating the large-scale adoption of new products or behaviors. Research traditions that focus on individual decision making suggest that achieving this objective requires better identifying the drivers of individual adoption choices. On the other hand, computational approaches rooted in complexity science focus on maximizing the propagation of a given product or behavior throughout social networks of interconnected adopters. The integration of these two perspectives -- although advocated by several research communities -- has remained elusive so far. Here we show how achieving this integration could inform seeding policies to facilitate the large-scale adoption of a given behavior or product. Drawing on complex contagion and discrete choice theories, we propose a method to estimate individual-level thresholds to adoption, and validate its predictive power in two choice experiments. By integrating the estimated thresholds into computational simulations, we show that state-of-the-art seeding methods for social influence maximization might be suboptimal if they neglect individual-level behavioral drivers, which can be corrected through the proposed experimental method.
- Scaling up change: A critical review and practical guide to harnessing social norms for climate action. Psychological Science in the Public Interest, 23(2):50–97, 2022.
- Demand-side solutions to climate change mitigation consistent with high levels of well-being. Nature Climate Change, 12(1):36–46, 2022.
- Kenneth E Train. Discrete choice methods with simulation. Cambridge University Press, 2009.
- Daniel Kahneman. Thinking, fast and slow. Macmillan, 2011.
- Using large-scale experiments and machine learning to discover theories of human decision-making. Science, 372(6547):1209–1214, 2021.
- Jon Elster. Explaining social behavior: More nuts and bolts for the social sciences. Cambridge University Press, 2015.
- Mark Granovetter. Threshold models of collective behavior. American Journal of Sociology, 83(6):1420–1443, 1978.
- DJ Watts. A simple model of global cascades on random networks. Proceedings of the National Academy of Sciences of the United States of America, 99(9):5766–5771, 2002.
- Complex adaptive systems. In Complex Adaptive Systems. Princeton university press, 2009.
- Saving human lives: What complexity science and information systems can contribute. Journal of Statistical Physics, 158(3):735–781, 2015.
- Jean-Philippe Bouchaud. Crises and collective socio-economic phenomena: simple models and challenges. Journal of Statistical Physics, 151:567–606, 2013.
- What models can and cannot tell us about covid-19. Proceedings of the National Academy of Sciences, 117(28):16092–16095, 2020.
- Simulating macro-level effects from micro-level observations. Management Science, 64(11):5405–5421, 2018.
- Scale-free correlations in starling flocks. Proceedings of the National Academy of Sciences, 107(26):11865–11870, 2010.
- Swarm robotics: a review from the swarm engineering perspective. Swarm Intelligence, 7:1–41, 2013.
- The promise and the peril of using social influence to reverse harmful traditions. Nature Human Behaviour, 4(1):55–68, 2020.
- Social influence maximization under empirical influence models. Nature Human Behaviour, 2(6):375–382, 2018.
- Stewardship of global collective behavior. Proceedings of the National Academy of Sciences, 118(27), 2021.
- Innovation diffusion and new product growth models: A critical review and research directions. International Journal of Research in Marketing, 27(2):91–106, 2010.
- Human social sensing is an untapped resource for computational social science. Nature, 595(7866):214–222, 2021a.
- Integrating social and cognitive aspects of belief dynamics: towards a unifying framework. Journal of the Royal Society Interface, 18(176):20200857, 2021b.
- Complex contagions and the weakness of long ties. American journal of Sociology, 113(3):702–734, 2007.
- Complex contagions: A decade in review. Complex Spreading Phenomena in Social Systems, pages 3–25, 2018.
- Damon Centola. How behavior spreads: The science of complex contagions, volume 3. Princeton University Press Princeton, NJ, 2018.
- Damon Centola. Change: How to make big things happen. Hachette UK, 2021.
- The collective dynamics of smoking in a large social network. New England Journal of Medicine, 358(21):2249–2258, 2008.
- Damon Centola. The spread of behavior in an online social network experiment. Science, 329(5996):1194–1197, 2010.
- Content-driven analysis of an online community for smoking cessation: integration of qualitative techniques, automated text analysis, and affiliation networks. American Journal of Public Health, 105(6):1206–1212, 2015.
- Exercise contagion in a global social network. Nature communications, 8(1):1–8, 2017.
- Structural diversity in social contagion. Proceedings of the National Academy of Sciences, 109(16):5962–5966, 2012.
- Modeling the adoption of innovations in the presence of geographic and media influences. PLOS ONE, 7(1):e29528, 2012.
- Complex contagion process in spreading of online innovation. Journal of The Royal Society Interface, 11(101):20140694, 2014.
- Determinants of technology adoption: Peer effects in menstrual cup take-up. Journal of the European Economic Association, 10(6):1263–1293, 2012.
- Can network theory-based targeting increase technology adoption? American Economic Review, 111(6):1918–43, 2021.
- Differences in the mechanics of information diffusion across topics: idioms, political hashtags, and complex contagion on twitter. In Proceedings of the 20th International Conference on World Wide Web, pages 695–704, 2011.
- Critical phenomena in complex contagions. Social Networks, 34(4):451–461, 2012.
- Complex contagions and the diffusion of popular twitter hashtags in nigeria. Social Network Analysis and Mining, 6(1):1–19, 2016.
- Universality, criticality and complexity of information propagation in social media. Nature Communications, 13:1308, 2022.
- The dynamics of protest recruitment through an online network. Scientific Reports, 1(1):1–7, 2011.
- Zachary C Steinert-Threlkeld. Spontaneous collective action: Peripheral mobilization during the arab spring. American Political Science Review, 111(2):379–403, 2017.
- Topological measures for identifying and predicting the spread of complex contagions. Nature Communications, 12(1):1–9, 2021.
- Frank M Bass. A new product growth for model consumer durables. Management science, 15(5):215–227, 1969.
- Quantifying long-term scientific impact. Science, 342(6154):127–132, 2013.
- A reservation-price model for optimal pricing of multiattribute products in conjoint analysis. Journal of Marketing Research, 28(3):347–354, 1991.
- How should consumers’ willingness to pay be measured? an empirical comparison of state-of-the-art approaches. Journal of Marketing Research, 48(1):172–184, 2011.
- Steven N Durlauf. How can statistical mechanics contribute to social science? Proceedings of the national academy of sciences, 96(19):10582–10584, 1999.
- The chilling effects of network externalities. International Journal of Research in Marketing, 27(1):4–15, 2010.
- Everett M Rogers. Diffusion of Innovations. Simon and Schuster, 2010.
- Hierarchical bayes models. The handbook of marketing research: Uses, misuses, and future advances, pages 418–440, 2006.
- Vithala R Rao. Applied conjoint analysis. Springer Science & Business Media, 2014.
- Carbon capture and storage in the united states: perceptions, preferences, and lessons for policy. Energy Policy, 151:112149, 2021.
- What shapes public support for climate change mitigation policies? the role of descriptive social norms and elite cues. Behavioural Public Policy, 5(4):503–527, 2021.
- The diffusion of microfinance. Science, 341(6144):1236498, 2013.
- Influence maximization in complex networks through optimal percolation. Nature, 524(7563):65–68, 2015.
- Vital nodes identification in complex networks. Physics Reports, 650:1–63, 2016.
- The effect of social networks structure on innovation performance: A review and directions for research. International Journal of Research in Marketing, 36(1):3–19, 2019.
- When early adopters don’t adopt. Science, 357(6347):135–136, 2017.
- Algorithms for seeding social networks can enhance the adoption of a public health intervention in urban india. Proceedings of the National Academy of Sciences, 119(30):e2120742119, 2022.
- The role of hubs in the adoption process. Journal of Marketing, 73(2):1–13, 2009.
- Linton C Freeman. A set of measures of centrality based on betweenness. Sociometry, pages 35–41, 1977.
- Alex Bavelas. Communication patterns in task-oriented groups. The Journal of the Acoustical Society of America, 22(6):725–730, 1950.
- Spin glass theory and beyond: An Introduction to the Replica Method and Its Applications, volume 9. World Scientific Publishing Company, 1987.
- Milton Friedman. The use of ranks to avoid the assumption of normality implicit in the analysis of variance. Journal of the American Statistical Association, 32(200):675–701, 1937.
- Fast influencers in complex networks. Communications in Nonlinear Science and Numerical Simulation, 74:69–83, 2019.
- Climb or jump: Status-based seeding in user-generated content networks. Journal of Marketing Research, 56(3):361–378, 2019.
- Influentials, networks, and public opinion formation. Journal of Consumer Research, 34(4):441–458, 2007.
- Everyone’s an influencer: quantifying influence on twitter. In Proceedings of the Fourth ACM International Conference on Web Search and Data Mining, pages 65–74, 2011.
- Influencer marketing effectiveness. Journal of Marketing, 86(6):93–115, 2022.
- Network hubs cease to be influential in the presence of low levels of advertising. Proceedings of the National Academy of Sciences, 118(7):e2013391118, 2021.
- Albert-László Barabási. Network science. Cambridge University Press, 2016.
- Emergence of scaling in random networks. Science, 286(5439):509–512, 1999.
- Competition and multiscaling in evolving networks. EPL (Europhysics Letters), 54(4):436, 2001.
- Temporal effects in the growth of networks. Physical Review Letters, 107(23):238701, 2011.
- Popularity versus similarity in growing networks. Nature, 489(7417):537–540, 2012.
- Homophily influences ranking of minorities in social networks. Scientific Reports, 8(1):1–12, 2018.
- Matúš Medo. Statistical validation of high-dimensional models of growing networks. Physical Review E, 89(3):032801, 2014.
- Choosing to grow a graph: modeling network formation as discrete choice. In The World Wide Web Conference, pages 1409–1420, 2019.
- Frank Schweitzer. Sociophysics. Physics Today, 71(2):40–46, 2018.
- Determinants of emissions pathways in the coupled climate–social system. Nature, 603(7899):103–111, 2022.
- Ryan Sermas. ChoiceModelR: Choice Modeling in R, 2022. URL https://CRAN.R-project.org/package=ChoiceModelR. R package version 1.3.0.
- Daniel McFadden. Conditional logit analysis of qualitative choice behavior. In Paul Zarembka, editor, Frontiers in Econometrics, pages 105–142. Academic press, New York, 1974.
- Cbc questionnaires and design strategy, a. URL https://legacy.sawtoothsoftware.com/help/lighthouse-studio/manual/hid_web_cbc_designs_1.html. Accessed on May 16th, 2024.
- The basics of interpreting conjoint utilities, b. URL https://sawtoothsoftware.com/the-basics-of-interpreting-conjoint-utilities. Accessed on April 19th, 2024.
- Analyzing the capabilities of the hb logit model for choice-based conjoint analysis: a simulation study. Journal of Business Economics, 90(1):1–36, 2020.
- Mark Newman. Networks. Oxford University Press, 2018.
- Seeding strategies for viral marketing: An empirical comparison. Journal of Marketing, 75(6):55–71, 2011.
- Decomposing the value of word-of-mouth seeding programs: Acceleration versus expansion. Journal of Marketing Research, 50(2):161–176, 2013.
- Influencing the influencers: a theory of strategic diffusion. The RAND Journal of Economics, 40(3):509–532, 2009.
- The critical periphery in the growth of social protests. PLOS ONE, 10(11):e0143611, 2015.
- Beyond network centrality: Individual-level behavioral traits for predicting information superspreaders in social media. National Science Review, page nwae073, 2024.
- igraph: Network Analysis and Visualization in R, 2024. URL https://CRAN.R-project.org/package=igraph. R package version 2.0.1.1.
- Hema Yoganarasimhan. Impact of social network structure on content propagation: A study using youtube data. Quantitative Marketing and Economics, 10(1):111–150, 2012.
- Matteo Marsili. On the multinomial logit model. Physica A: Statistical Mechanics and its Applications, 269(1):9–15, 1999.
- Robert J MacCoun. The burden of social proof: Shared thresholds and social influence. Psychological Review, 119(2):345, 2012.
- Motivating the adoption of new community-minded behaviors: An empirical test in nigeria. Science Advances, 5(3):eaau5175, 2019.
- Changing cultural attitudes towards female genital cutting. Nature, 538(7626):506–509, 2016.
- Absence of influential spreaders in rumor dynamics. Physical Review E, 85(2):026116, 2012.
- Fame and obsolescence: Disentangling growth and aging dynamics of patent citations. Physical Review E, 95(4):042309, 2017.
- Success in books: a big data approach to bestsellers. EPJ Data Science, 7:1–25, 2018.
- Preferential attachment in the growth of social networks: The internet encyclopedia wikipedia. Physical Review E, 74(3):036116, 2006.
- Mark EJ Newman. Clustering and preferential attachment in growing networks. Physical Review E, 64(2):025102, 2001.
- Identification and impact of discoverers in online social systems. Scientific Reports, 6(1):34218, 2016.
- A sociological (de) construction of the relationship between status and quality. American Journal of Sociology, 115(3):755–804, 2009.
- A statistical construction of power-law networks. International Journal of Parallel, Emergent and Distributed Systems, 25(3):223–235, 2010.
- Michael Golosovsky. Mechanisms of complex network growth: Synthesis of the preferential attachment and fitness models. Physical Review E, 97(6):062310, 2018.
- Radu Tanase (3 papers)
- René Algesheimer (4 papers)
- Manuel S. Mariani (14 papers)