Andria Tattersfield

Claremont McKenna College

Mentors: Andy Rominger | Hajime Shimao | Vicky Yang

What Could Hold All Of Us? Class Segregation and Interaction in North American Restaurants

As wealthier residents take Ubers to work instead of public transit, and shop at organic grocery stores instead of Walmart, common spaces for cross-class interaction decrease. A subtle form of segregation arises in which people’s social networks do not overlap. This project uses restaurant and review data from the Yelp Academic Dataset to investigate this phenomenon of segregation of urban consumption. First, we define a measure of restaurant consumer segregation based on the statistical measure of entropy. We use this entropy measure to explore several scales, spanning individual users, businesses, cities and metro areas. By aggregating the data in different ways, we compare different cities, different categories of businesses, and map spatial distributions to understand what factors cause a place to be more segregated or integrated. Simultaneously, this project functions as an exploration of the potential for data from digital platforms to provide real-time, fine-grained insights on neighborhood change.


Aram Moghaddassi

University of California, Berkeley

Mentors: Albert Kao | Maria Riolo

A Robust and Realistic Model for Associative Memory

The Hopfield network (HN) is a popular model for associative memory and is a seminal example of fixed point attractor dynamics. The model has been studied in both a computational setting, for image recognition, optimization, and other problems, and from a neuroscience perspective; Brunel 2016 showed that these attractor dynamics are likely at work in the brain. However, these two views are often quite disconnected; namely, our computational models are based on network architectures that are very dissimilar from true neural networks in the brain. Our goal is to bridge this gap using a very simple pruning rule for HNs, where we progressively prune out the low magnitude edges from a fully connected HN. We find that these networks demonstrate a high degree of clustering based on correlated activity across stored states, a pattern that is very similar to the organization of neurons in the brain. Further, these pruned networks highly outperform the random benchmark across all metrics we considered.


David Armendariz

University of Texas El Paso

Mentor: Joshua Garland

Topological Reconstruction of Antarctica's Paleoclimate System Using a Deep Polar Ice Core

Overview: The core concept behind the theory of delay-coordinate embedding is that, given an observable deterministic dynamical system and some assumptions, one can reconstruct the dynamics of the system using a scalar time series of observations. The dynamical properties of the reconstructed system are invariant under diffeomorphism and therefore are identical (up to diffeomorphism) to the dynamical properties of the original system. 


Elisa Heinrich Mora*

Minerva Schools at KGI

Mentors: Chris Kempes | Vicky Yang

Understanding Urban Inequality through the Reinforcing Stochastic Schelling Model

More than half of the global population is currently urbanized. This rapid urbanization expansion while boosting economic growth, negatively affects the ability of cities to keep up with the demands of the growing population, affecting the access to opportunities, infrastructure, and basic services. While urban areas generate more than 75% of global GDP, they also include over 863 million urban dwellers living in slums and informal settlements. In this project, I simulate and analyze a simplified model of urban wealth inequality in cities. This model builds a general statistical dynamics of cities that includes growth and heterogeneity across scales, from single agents to urban systems. The model implements these dynamics by using stochastic differential equations, to show how it naturally leads to emergent statistical properties deriving from standard limit theorems. The goal of this project is to identify the macroscopic dynamics of urban inequality from the stochastic behavior of the individuals while also considering the effect of a spatial dimension through a Schelling Model.


Gabriel Goren*

Universidad de Buenos Aires (UBA)

Mentors: Cris Moore | Joshua Garland

Inferring Finite State Machines from Time Series

How can one extract structure out of a sequence of observations, while using minimal assumptions? And what is structure, anyway? During this summer, I’ve been working with a very general inference framework based around the concept of the epsilon-machine of a process, in which the main idea is that structure in a system emerges from discarding all information about its history that is not predictive of its future. My project revolves around how the theory of epsilon-machines translates to a realistic scenario, in which one has access to a limited amount of data and computing power, and trying to understand how these limitations induce failures in the process of inferring an epsilon-machine.


Gülce Kardeş*

Middle East Technical University

Mentor: David Wolpert

Algorithmic Identification of Observers in Arbitrary Dynamical System

Since Shannon’s introduction to information theory, we have tended to fix our attention to a syntactic analysis of information. Yet a profound disclosure of meaning in information is reported by a group of systems (e.g. biological organisms) that use information from their environment which causally contributes to their ability of maintaining existence. In this study, we consider the problem of identifying such systems, called observers, that render a priori companion of semantic information (Kolchinsky and Wolpert, 2018) possible. We introduce spin models as a platform in which we construct an identification procedure. Our findings present the physical properties of spin systems that have determinant role in specifying observers. We also investigate further characteristics of semantic information, and list several implications to discuss the applicability of our work to any physical system.


Jacob Jackson

Brown University

Mentors: Vicky Yang | Chris Kempes | Tamara van der Does

Urban Externalities in an Urban Scaling Framework

At a time when countries are rapidly urbanizing across the globe, recent work in urban scaling theoryhas provided greater insight into developing a fundamental understanding of cities by modeling socioeconomic outcomes (e.g. GDP) as the outputs of only local social interactions. However, intoday’s highly Global world, a theory that isolates a city from the Global network of cities is missing a crucial part of the picture. This research demonstrates the significance of Urban Externalities for understanding cities through the urban scaling framework. Several models are proposed to incorporate externalities into a more comprehensive scaling model for cities and are shown to be significant improvements to the standard scaling model. The model which best fits the data suggests that local social interactions account for only about 70% of socioeconomic outputs in a city, whereas the other 30% can be attributed to non-local social interactions (externalities), things such as tourism, global business ventures, foreign investment, and more.


James Slaughter

University of Mississippi

Mentors: Hajime Shimao | Mike Price

Origins of Agriculture in the Middle East

Shortly after the end of the Pleistocene (colloquially known as the “Ice Age”), people began to intensively cultivate and domesticate plants at different sites all across the world. That is to say, people began to practice agriculture. These episodes of agriculture seem to have started at similar times but also independent of one another. Many explanations have been proposed for why this occurred. Using plant domestication data compiled from the Neolithic Middle East, we propose that a 500-year lag in climate variance is a major predictor of agriculture emerging. We illustrate the relationship between variance in climate and the failure to domesticate plants using a logistic regression model, which predicts the possibility of agriculture emerging during Pleistocene.


Nachama Stern

Brooklyn College, City University of New York

Mentors: Andy Rominger | Cris Moore | Chris Kempes

Inverto Cactido: The Ultimate Puzzle

What makes a good puzzle and how can we quantify it? This summer I established criteria for determining an interesting and fun spatial puzzle. With this, I designed and constructed Inverto Cactido, a cube with an internal network of tunnels. Using the holes on each face and different length pegs provided, the goal of the puzzle is to place all 15 pegs such that the intersections of the tunnels allow all pegs to fit inside the cube completely. Mathematizing and computationally solving for the solutions of my puzzle gave rise to an interesting theory behind the graph representation of puzzles, and the way in which one can adjust puzzle difficulty such that the player attains a state of flow.


Naomi Rankin

Howard University

Mentors: Maria Riolo | Tamara Van Der Does

The Effect of Age on the Spread of Vaccine Hesitancy

Despite the eradication of measles in the US in 2000, there have been a high number of cases over the past couple of years. This is due to vaccine hesitancy in parents, where they are less likely to support the vaccination of their children due to a variety of expected risks or side effects. The spread of misinformation between parents is an important reason for the lapse in vaccination rates. In order to decrease the impact of anti-vaccine people, one must study their impact on the community. In previous studies, researchers have examined the type of people that spread anti-vaccine sentiments. They have also examined the connections between people of different ages. We hypothesize that certain age groups might have a different effect on the spread of anti-vaccine beliefs because of age-based network clustering. In order to explore the impact of age on connections and the spread of beliefs, I created an agent-based model and explored some theoretical simulations to see what the most accurate scenario is, and to see which group is most influential in spreading information on a network.


Shaili Mathur*

University of California, Los Angeles (UCLA)

Mentor: Chris Kempes

Understanding Antibiotic Susceptibility across Bacterial Diversity through Metabolic Scaling Theory

How antibiotic efficacy varies with bacterial species is of basic and applied importance, including understanding of microbial dynamics in clinical and ecological contexts with possible consequences for the community structure of the microbiome. The scaling of cellular components in bacteria and their impact on metabolic, cellular, and evolutionary processes will help illuminate this question and possibly reveal an important role for cell size across bacterial species. Cellular components that antibiotics target—DNA, proteins, mRNA, tRNA, cellular envelope, and ribosomes—all scale non-linearly with cell volume. Moreover, previous research has elucidated the mechanism by which antibiotics inhibit the functioning of these cellular components. We develop theory that shows how antibiotic efficacy may depend on cell size based on the specific cellular components targeted by the antibiotics and the nonlinearities between those components and cell size. Here, we present data, and predictive models for aminoglysocides and beta-lactam antibiotics.


Zhijie Feng*

Hong Kong University of Science and Technology

Mentor: Sidney Rednor

Stochastic Demand-Driven Transport

With the growth of cities, the role of elevators in daily transportation is becoming more and more important. In this work, we propose a minimal model of the elevator transport process for the opening-of-day, when people arrive at the ground floor as a Poisson process and take the elevator with the first-come-first-serve rule. We derived the mean value and distribution of waiting time and the critical rate for jamming transition. With an equivalence to biased random walk in semi-infinite interval, the number of people still waiting for the elevator after each transport follows an exponential distribution. We simulate the process and verify all the analytical solution by an event-driven algorithm that works for any number of elevators efficiently with unchanged complexity. Moreover, we report synchronization by measuring the inter-arrival time of elevators as an extra phase transition in multiple elevator systems.





*Non-NSF Funded Undergraduate Researcher