Program

Wednesday, 13th July


8:00am - 8:30am

Introduction to WiNS and Diversify NetSci

8:30am - 9:30am

Keynote Session I


Brooke Foucault Welles: Gendered Patterns of Voice and Attention in COVID Discussion

To be announced soon !

9:30am - 10:30am

Lightning Talk Session I

9:30-9:40am

Katie Spoon: Explaining gendered retention patterns in academia

Women remain underrepresented as faculty in nearly all academic fields, a pattern often attributed to a “leaky pipeline,” in which women leave academic jobs at higher rates than men at every career stage. However, evidence for the leaky pipeline, as well as its magnitude, ubiquity, and causes, remains controversial. By integrating a statistical retention study of 279,419 tenure-track faculty across 391 PhD-granting U.S. institutions with a broad social survey of 10,050 current and former faculty, we show that gendered retention is systemic, and reflects significant gendered experiences of work stress and climate. Across disciplines, women at every career stage are less likely to be promoted or to persist in their faculty job, and women leave their positions for different reasons than men. Women, especially non-white women, experience substantially greater stress due to workplace culture, and are more likely to feel pushed out than pulled into better jobs. These results quantify and highlight the systemic and persistent nature of gendered retention, and its origins.

9:40-9:50am

Aleksandra Kaye: Visualising Historical Migrant Networks – Polish professionals in Latin America, 1830-1889

As part of my historical research, I have mapped in a series of networks the connections between 146 Polish professionals who operated as public figures in Latin America between 1830 and 1889. Many of these individuals knew each other and created knowledge networks that provided a means through which scientific solutions, ideas and practices could be developed, discussed, and applied across national borders in Latin America and the partitioned Polish territories. I have attempted to better understand the structure of the community of migrants through the application of Social Network Analysis methods to my historical research, creating different visualisations that map: [1] the verified connections between the individuals illustrating the structure of the Polish knowledge network, [2] co-location networks to show the network of potential connections that could have existed between the migrants who were in the same country at the same time and [3] multi-partite networks illustrating the association between the migrants’ main professions and their main country of settlement in Latin America. Together the visualisations help to get a better understanding of the structure of the Polish knowledge networks and the factors contributing to their structure.

9:50-10:00am

Paris Wicker: Who gets to be well? Analyzing well-being affiliation networks of Black and Indigenous College Students

While previous scholarship suggests that campus climate and faculty and peer interactions play a role in student well-being, understudied is how individual, institutional and social network composition structures shape well-being support connections. This exploratory study used secondary survey data (n=1500) from the Healthy Mind Study to analyze relational determinants of well-being connections for Black and Indigenous college students from 2018-2021, using bipartite block modelling and exponential random graph modelling. Findings revealed how well-being network compositions have changed both pre-and peri covid-19 pandemic as well as what factors increase the likelihood of well-being support connections while in university.

10:00-10:10am

Kelly Finke: Sustained transitions: linking individual actions and collective social change

Some of today’s largest global challenges – from pandemics to climate change – persist despite the existence of technological solutions, stagnated by social and political resistance. Thus, robust theories of social change are increasingly important for developing responses to collective challenges. In this project, I model the role of small, individual actions in facilitating – or hindering – collective social change. Some dismiss individual action as ineffective or intentionally distracting, and others view the accumulation of small actions – e.g. recycling – as solutions in themselves; I investigate repeated, habitual actions as a potential tool for changing norms across a social network. Psychological theories of cognitive dissonance and self-perception predict that, just as our values, beliefs, and opinions influence our actions, the actions we take can modify our attitudes. Informed by this literature, I model a link between actions, reinforced by habit formation, and attitudes, influenced by social interactions. I identify conditions under which policies targeting actions (e.g. incentives, penalties) can have a larger effect on changing a population’s attitudes than policies directly targeting values, beliefs, and opinions (e.g. information campaigns, propaganda).

10:10-10:20am

Alicia Boyd: QUINTA Network Analysis and the #metoo movement

In this presentation, we demonstrate how to implement the network analysis methodology guided by Quantitative Intersectional Data (QUINTA). QUINTA is a methodological framework used to reconceptualize what it means to step away from a conventionally prescribed and perfunctory approach to a problem and consider how processes and algorithms impact vulnerable communities (Boyd, 2021). The existing network analysis methods capture global conversations which are helpful but may occultation the smaller, more meaningful conversations. Therefore, utilizing a QUINTA approach allows us to identify smaller networks that are otherwise concealed by conventional approaches. In this presentation, we use the #metoo movement as an example of such exploration.

10:20-10:30am

Yuliia Kazmina: Capturing socio-economic bubbles

Segregation is a widely studied issue traditionally explored from the point of the spatial distribution of different groups as defined by any individual attribute such as race, religion, social class, etc. Nevertheless, we argue that the issues of persistent segregation, specifically socio-economic segregation, are networked phenomena and should be studied as such. In this paper, we make a methodological contribution that would allow the scholarship and policymakers to move away from a traditional spatial understanding of segregation that ignores interactions beyond neighborhoods and shift the focus of segregation measurement to the social network aspect applied to a diverse set of previously unexplored distinct social contexts. The study is based on the Dutch population register data sourced from multiple existing sub-registers that contain information on formal ties and affiliations of ~17 million legal residents in multiple social contexts such as kinship, household, neighborhood, school, and work. With the multiplex network of geospatially embedded formal ties in hand, we aim to observe to what extent areas of social segregation are clustered in geospatially embedded social networks, and how each network layer contributes to the issue. More specifically, we measure to what extent Dutch residents in different municipalities are exposed to individuals of different socio-economic statuses in diverse social contexts and what social contexts provide diverse social contact opportunities with respect to the socio-economic status and, on the contrary, what social contexts play a role of socio-economic bubbles. Our findings suggest great heterogeneity in socio-economic assortativity between different social contexts (the layers of the analysed network) as well as different municipalities.

10:30am - 12:00pm

WiNS Online Social

Thursday, 14th July


8:00am - 8:50am

Diversify Your Syllabus

8:50am - 9:50am

Lightning Talk Session II

8:50-9:00am

Jisha Mariyam John: Need for a Realistic Measure of Attack Severity in Centrality Based Node Attack Strategies

Complex networks are robust to random failures; but not always to targeted attacks. The resilience of complex networks towards different node targeted attacks are studied immensely in the literature. Many node attack strategies were also proposed, and their efficiency was compared. However, in each of these proposals, the scientists used different measures of efficiency. So, it doesn't seem easy to compare them and choose the one most suitable for the system under examination. Here, we review the main results from the literature on centrality based node attack strategies. Our focus is only on the works on undirected and unweighted networks. We want to highlight the necessity of a more realistic measure of attack efficiency.

9:00-09:10am

Maria Pope: Multivariate Information Theory Uncovers Synergistic Subsystems of the Human Brain

In many fields, networks are well-established tools for modelling complex systems. In neuroscience, brain activity is often summarized as a functional connectivity network, which examines the correlations between pairs of interacting brain regions. While powerful, the network model is limited by the restriction that only pairwise dependencies are visible and potentially higher-order structures are missed. In this talk, I will explore how multivariate information theory can reveal higher-order, synergistic dependencies in the human brain. We calculate the O-information, a measure of whether the structure of a system is redundancy- or synergy-dominated, and show that synergistic subsystems are widespread in the human brain. Highly synergistic subsystems typically sit between canonical functional networks and may serve to integrate those networks. We then use simulated annealing to find maximally synergistic subsystems, finding that such systems typically comprise ~10 brain regions, also recruited from multiple canonical brain systems. Though ubiquitous, highly synergistic subsystems are invisible when considering traditional, pairwise functional connectivity, and form a structure that has been unrecognized by established network-based analyses. Higher-order interactions in the brain represent a vast and under-explored space that, made accessible with tools of multivariate information theory, may offer novel scientific insights. The O-information is a widely applicable framework, and analyses like the one presented here of other systems may reveal synergistic structures formerly undisclosed by bivariate network analyses.

9:10-9:20am

Julia Barnett: Intersectional Inequalities in the Impact of Online Visibility on Citations

A key unexamined area of the citation gap and bias in visibility including the online dissemination of scholars’ work is how the intersectional relationship between co-author teams’ gender and ethnic diversity potentially influences the link between online visibility and citation impact. To address this gap in the literature, we compile a comprehensive data set that includes 14 different broad research areas to examine longitudinally (over 7 years) the relationship between articles’ online visibility and their citations for teams of varying gender and ethnic diversity. Though the average diversity of co-author teams has not changed significantly between 2013 and 2019, our findings suggest that teams with higher gender or ethnic diversity are more likely to produce articles among the top 25% most cited, but there is an intersectional penalty for teams with high gender and ethnic diversity. Even taking online visibility into account, intersectional diversity predicts lower success. Our work points to the need to recognize the disadvantages diverse research groups face and to promote them with specific funds, calls, and opportunities since the scientific community is less likely to cite them regardless of the online visibility they receive.

9:20-9:30am

Shriya V. Nagpal: Designing Robust Networks of Coupled Phase-Oscillators

Networks of coupled phase-oscillators are often used to describe and analyze a broad array of phenomena running from heartbeats to flashing fireflies, to the high voltage electric grid. In many of these phenomena, it is desirable for the oscillators participating in the network to not only achieve but maintain a particular type of behavior called frequency synchronization. To this end, we propose a novel mathematical framework for designing robust networks of coupled phase oscillators by leveraging a vulnerability measure that quantifies how much a small perturbation to a phase oscillator's natural frequency impacts the system's global synchronized frequencies. Given a fixed complex network topology with specific governing dynamics, the proposed framework finds an optimal allocation of edge weights that minimizes such vulnerability measure(s) at the node(s) for which we expect perturbations to occur by solving a tractable semi-definite programming problem.

9:30-9:40am

Rafiazka Hilman: COVID Induces Inequality in Mobility Response Across Socioeconomic Classes

COVID outbreak emerges as an external shock that alters typical mobility configuration. Commencing from outside the system, its catastrophic impact may perpetuate individual mobility that is already constrained by socioeconomic stratification. We aim to study the variability of how an adjustment in mobility is made by individuals and whether the response level to deal with the changing condition is dictated by their socioeconomic status. Mobility data is retrieved from the CUEBIQ dataset, covering temporal transitions during pandemics namely Before Lockdown (BL), Lockdown (L), and Reopening (R). Bogota retains the longest temporal observation until May 2021 with 55K people/25 million trajectories, followed by London (February 2021) comprising 200K people/115 million trajectories, Jakarta (December 2020) constituting 65K/26 million trajectories, and New York (July 2020) with 277K/30 million trajectories. We rely on income data from the Central Bureau of Statistics at census tract (or unit of comparable size) to determine the socio-economic status of both people (based on home inference) and places. We refer to the stringency index on Oxford Covid-19 Government Response Tracker (OxCGRT) dataset to identify the responsiveness of behavioural change by SES classes. These results show that the first lockdown induced a considerable increase in mobility segregation, but the attempt to loosening mobility restriction (BL-R) did not necessarily diminish isolation within the own neighbourhood (as previously induced by lockdown), indicating that recovery is not fully made.

9:40-9:50am

Alyssa Smith: Attentional Cat-pital: Jorts the Cat & Disruptive Triad Closure

Some online fame is a function of offline fame (e.g. Barack Obama’s Twitter account), but other accounts come to prominence more organically. They then have attentional capital that they can use for personal gain or lift up causes important to them. Jorts the cat, originally the subject of a viral Reddit Am I The Asshole post, has become the nominal author of a humorous Twitter account that often posts pro-labor content. Jorts was never a famous celebrity offline; his fame is strictly from social media. We use Jorts’ Twitter as a case study in triad closure mechanisms, using the Twitter API to track following events over time; we note that Jorts’ amplification behavior disrupts existing patterns of triad closure and seek to understand how this behavior fits into the existing theory on triad closure in dynamic social networks.

10:00am - 11:00am

Keynote Session II


Julia Lane: Women are Credited Less in Science than are Men

There is a well-documented gap in the observed number of scientific works produced by women and men in science, with clear consequences for the retention and promotion of women in science1. The gap might be a result of productivity differences2-5, or it might be due to women’s contributions not being acknowledged6,7. This paper finds that at least part of this gap is due to the latter: women in research teams are significantly less likely to be credited with authorship than are men. The findings are consistent across three very different sources of data. Analysis of the first source - large scale administrative data on research teams, team scientific output, and attribution of credit - show that women are significantly less likely to be named on any given article or patent produced by their team relative to their peers. The gender gap in attribution is found across almost all scientific fields and career stages. The second source – an extensive survey of authors – similarly shows that women’s scientific contributions are systematically less likely to be recognized. The third source – qualitative responses – suggests that the reason is that their work is often not known, not appreciated, or ignored. At least some of the observed gender gap in scientific output may not be due to differences in scientific contribution, but to differences in attribution.

11:00am - 12:00pm

Keynote Session III


Carrie Diaz Eaton: Communities, Networks, Advocacy, and Change in Higher Education

To be announced soon !