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An Information Theoretic Analysis of Neural MultiplexingWilliams, Ezekiel 21 April 2020 (has links)
How the brain encodes information in sequences of voltage spikes is an open question. Past literature suggests the importance of bursts, high-frequency spike events, as a key step towards answering this question. In particular, it was recently shown that neurons could use bursts to communicate two streams of information simultaneously, resulting in higher information rates than seen with other neural code theories. However, it is unknown how a neuron’s spiking statistics might affect communication via this new code. To investigate the influence of spike statistics, we study a bursting neuron model with the goal of estimating its information rate as a function of its spike statistics. To this end we extend a recently proposed method for estimating information rate. We find the information rate in our burst-multiplexing model is robust to changes in spike-train statistics, providing evidence for the utility of a burst-multiplexing code to diverse brain networks.
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Reconstructing Historical Earthquake-Induced Tsunamis: Case Study of 1852 Event Using the Adjoint Method Combined with HMCNoorda, Chelsey 22 June 2023 (has links) (PDF)
Seismic hazard analysis aims to estimate human risk due to natural disasters such as earthquakes. To improve seismic hazard analysis, our group is focused on earthquake induced tsunamis and the use of statistical models to reconstruct historical earthquakes. Based on the estimated wave heights given in anecdotal historical descriptions, we created observational probability distributions to model the historically recorded observations and constructed a prior distribution on the relevant earthquake parameters based on known seismicity of a given region. Then we used the software package GeoClaw, and a Metropolis-Hastings sampler to obtain a posterior distribution of earthquake parameters that most closely matches the historically recorded tsunami. Our method was tested on two main events that occurred in 1820 and 1852 in central and eastern Indonesia respectively. The random walk Metropolis-Hastings sampler we employed appeared to recover the causal earthquake quite well, but the computational costs were prohibitive even though both scenarios we considered were relatively simple. To improve the sampling procedure, we have focused on advanced sampling techniques such as Hamiltonian Monte Carlo (HMC) where the gradient of the forward model (Geoclaw) is required. This is problematic however as this gradient is not available computationally. To mitigate this problem, we make use of a linearized adjoint solver for the shallow water equations, and exact gradient calculations for the Okada earthquake rupture model, yielding a surrogate gradient that leads to improved sampling.
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Improving Separation of Signals from Multiple Physical Quantities Detected by Sensor ArraysMorgan, Sarah Elizabeth 31 May 2022 (has links)
Modern array sensing systems, such as distributed fiber optic sensing, are used in many applications which may record a mixture of responses to multiple physical quantities. In these applications, it may be helpful to be able to separate this mixture of responses into the signals resulting from the individual sources. This is similar to the cocktail party problem posed with Independent Component Analysis (ICA), in which we use gradient ascent and fixed point iteration optimization algorithms to achieve this separation. We then seek to apply the problem setup from ICA to mixed signals resulting from a sensor array with the goal of maintaining coherence throughout resulting spatial arrays. We propose a new post-processing technique after separation to pair up the signals from different types of physical quantities based on the Symmetric Reverse Cuthill-McKee (SRCM) and Symmetric Approximate Minimum Degree (SAMD) permutations of the coherence matrix. / Master of Science / Some modern sensing systems are able to collect data resulting from different types of sources, such as vibrations and electromagnetic waves, at the same time. This means we have signals resulting from a mixture of sources. An example of one such modern sensing system is distributed fiber optic sensors used in geoscience applications, such as seismology and subsurface imaging, which measures strain along the fiber optic cable. In many applications, it may be helpful to obtain the signals from each of these sources separately, instead of having a mixture of these sources. We propose the use of optimization algorithms, in particular two algorithms arising from Independent Component Analysis (ICA), which seek to maximize a function in order to separate these signals. We then explore changes required to the algorithms for scenarios in which we have multiple sensors spaced some distance away from each other which record signals from two different sources. We also present a method of determining which separated signals correspond to which sensors after performing signal separation.
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Planar Anchoring for a Colloid in Nematic Liquid Crystal with a Magnetic FieldLouizos, Dean January 2024 (has links)
We study minimizers of the Landau-de Gennes energy in the exterior region around a smooth 2-manifold in R3 with a constant external magnetic field present. Uniaxial boundary data and a strong tangential anchoring are imposed on the surface of the manifold and we consider the large particle limit in a regime where the magnetic field is relatively weak. Before studying the general manifold, we analyze a more simple case in which the manifold is spherical. After deriving a lower bound for the energy in this limiting regime, we prove that a director field on the boundary which maximizes its vertical component yields a minimal lower bound. We then construct a recovery sequence to show that this lower bound is in fact the optimal energy bound. These steps are later repeated in more generality for a larger class of smooth manifolds. / Thesis / Master of Science (MSc)
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Hyperbolic Geometry and Hierarchical Representation LearningGrisaitis, William 01 January 2024 (has links) (PDF)
This thesis explores the application of hyperbolic geometry to deep variational autoencoders (VAEs) for learning low-dimensional latent representations of data. Hyperbolic geometry has gained increasing attention in machine learning due to its potential to embed hierarchical data structures in continuous, differentiable manifolds. We extend previous work investi- gating the Poincaré ball model of hyperbolic geometry and its integration into VAEs. By evaluating hyperbolic VAEs on the MNIST handwritten digit dataset and a single-cell RNA sequencing dataset of metastatic melanoma, we assess whether the inductive bias and math- ematical properties of hyperbolic spaces result in improved data representations compared to standard Euclidean VAEs, especially for single-cell RNA sequencing data. Our findings demonstrate the potential advantages of leveraging hyperbolic geometry for representation learning, while also highlighting some challenges. This work contributes to the growing field of geometric deep learning and provides insights for future research on non-Euclidean approaches to representation learning.
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Toward a predictive model of tumor growthHawkins-Daarud, Andrea Jeanine 16 June 2011 (has links)
In this work, an attempt is made to lay out a framework in which models of
tumor growth can be built, calibrated, validated, and differentiated in
their level of goodness in such a manner that all the uncertainties
associated with each step of the modeling process can be accounted for in
the final model prediction.
The study can be divided into four basic parts. The first involves the
development of a general family of mathematical models of interacting
species representing the various constituents of living tissue, which
generalizes those previously available in the literature. In this theory,
surface effects are introduced by incorporating in the Helmholtz free `
gradients of the volume fractions of the interacting species, thus
providing a generalization of the Cahn-Hilliard theory of phase change in
binary media and leading to fourth-order, coupled systems of nonlinear
evolution equations. A subset of these governing equations is selected as
the primary class of models of tumor growth considered in this work.
The second component of this study focuses on the emerging and
fundamentally important issue of predictive modeling, the study of model
calibration, validation, and quantification of uncertainty in predictions
of target outputs of models. The Bayesian framework suggested by Babuska,
Nobile, and Tempone is employed to embed the calibration and validation
processes within the framework of statistical inverse theory. Extensions of
the theory are developed which are regarded as necessary for certain
scenarios in these methods to models of tumor growth.
The third part of the study focuses on the numerical approximation of the
diffuse-interface models of tumor growth and on the numerical
implementations of the statistical inverse methods at the core of the
validation process. A class of mixed finite element models is developed for
the considered mass-conservation models of tumor growth. A family of time
marching schemes is developed and applied to representative problems of
tumor evolution.
Finally, in the fourth component of this investigation, a collection of
synthetic examples, mostly in two-dimensions, is considered to provide a
proof-of-concept of the theory and methods developed in this work. / text
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Decoding Book Barcode ImagesTao, Yizhou 01 January 2018 (has links)
This thesis investigated a method of barcode reconstruction to address the recovery of a blurred and convoluted one-dimensional barcode. There are a lot of types of barcodes used today, such as Code 39, Code 93, Code 128, etc. Our algorithm applies to the universal barcode, EAN 13. We extend the methodologies proposed by Iwen et al. (2013) in the journal article "A Symbol-Based Algorithm for Decoding barcodes." The algorithm proposed in the paper requires a signal measured by a laser scanner as an input. The observed signal is modeled as a true signal corrupted by a Gaussian convolution, additional noises, and an unknown multiplier. The known barcode dictionaries were incorporated into the forward map between the true barcode and the observed barcode. Unlike the one proposed by Iwen et al., we take dictionaries of different patterns into account, specifically for decoding book barcodes from images which are captured with smartphones. We also presented numerical experiments that examined the performance of the proposed algorithm and illustrated that the unique determination of barcode digits is possible even in the presence of noise.
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Razão e proporção para além da sala de aulaAlmeida, Ricardo Guimarães de 15 August 2015 (has links)
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Previous issue date: 2015-08-15 / CAPES - Coordenação de Aperfeiçoamento de Pessoal de Nível Superior / Este estudo tem como objetivo descrever os conceitos de razão e proporção através de
situações que estão presentes no cotidiano popular, buscando estabelecer relações da
vida prática do leitor com a matemática ensinada nas escolas por análise e resolução de
problemas. Os modelos ora apresentados podem ser utilizados por professores e aplicados
em salas de aula do ensino fundamental, sendo úteis àqueles que desejam compreender
esses conceitos para aplicá-los em situações matemáticas que possam ser resolvidas através
do uso dessas importantes ferramentas. Foi desenvolvido um estudo detalhado, aplicado e
diversificado das razões, com a finalidade de garantir ao leitor fundamentos sólidos para
a compreensão e resolução dos problemas de proporções, conhecidos por Regra de Três
e Porcentagem, através de métodos que utilizam análises lógicas de fácil compreensão,
inclusive para os não simpatizantes da matemática. / This study has as its objective to describe the concepts of ration and proportion through
everyday situations, seeking to establish matches in the reader’s practical life with mathematics
taught in schools by analysis and problem solving. The presented models can
be used by teachers and applied in classes of elementary school, and also may be useful
to those who wish to comprehend the concepts in order to apply them in mathematical
situations which can be solved by the use of these important means. We aimed to develop
a detailed study, applied and diversified, of the ratios with the objective of guaranteeing
to the reader solid fundaments for its comprehension and to solve proportion problems,
known as The Rule of Three and Percentage, through methods which use logical analysis
of easy comprehension, even for those who are not familiar with mathematics.
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Applying Mathematical Modeling to the Study of Family SystemsMaxwell, Dahlia 03 April 2024 (has links) (PDF)
Mathematical modeling provides a powerful framework for insight into current scientific theories as well as hypothesis generation for further research. Despite its undeniable potential to enrich scientific advancement, the application of mathematical modeling remains conspicuously scarce in the field of family science. The complexity inherent in family dynamics, coupled with the intricate interplay of emotions in the individual, underscores the necessity of a robust analytical approach. Addressing this critical gap in the literature, this thesis introduces a sophisticated mathematical model of family dynamics integrating essential elements from family systems theory, emotion dynamics, and appraisal theory. The model is implemented as a versatile computer program capable of simulating family interaction over time, and allows for customization to suit specific research needs. Noteworthy outcomes from the current model parameters include the emergence of both asymptotic and periodic emotion dynamics, the significant influence of family roles on behavior and rapport, and the ripple effect of a single individual's behavior on the system as a whole. Through the exploration of emergent behaviors, this model offers invaluable insights and paves the way for future mathematical modeling and advancements in family science research.
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Subgroups of Finite Wreath Product Groups for p=3Gonda, Jessica Lynn 10 June 2016 (has links)
No description available.
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