ASU Electronic Theses and Dissertations
This collection includes most of the ASU Theses and Dissertations from 2011 to present. ASU Theses and Dissertations are available in downloadable PDF format; however, a small percentage of items are under embargo. Information about the dissertations/theses includes degree information, committee members, an abstract, supporting data or media.
In addition to the electronic theses found in the ASU Digital Repository, ASU Theses and Dissertations can be found in the ASU Library Catalog.
Dissertations and Theses granted by Arizona State University are archived and made available through a joint effort of the ASU Graduate College and the ASU Libraries. For more information or questions about this collection contact or visit the Digital Repository ETD Library Guide or contact the ASU Graduate College at gradformat@asu.edu.
- He, Jingrui
- 22 Arizona State University
- 9 Tong, Hanghang
- 6 Davulcu, Hasan
- 6 Liu, Huan
- 5 Xue, Guoliang
- 4 Ye, Jieping
- more
- 3 Li, Baoxin
- 3 Li, Jing
- 3 Maciejewski, Ross
- 2 Wang, Yalin
- 1 Alostad, Hana
- 1 Ameresh, Ashish
- 1 Barron, Trevor Paul
- 1 Ben Amor, Heni
- 1 Chen, Zhen
- 1 Cook, Curtiss B
- 1 Cooke, Nancy
- 1 Corman, Steven
- 1 Dani, Harsh
- 1 Faloutsos, Christos
- 1 Haddad, Bashar Muneer
- 1 Helms Tillery, Stephen
- 1 Karam, Lina
- 1 Lamkin, Thomas J
- 1 Lee, Joohyung
- 1 Levihn, Martin
- 1 Li, Jundong
- 1 Li, Qingyang
- 1 Liang, Jianming
- 1 Lin, Rongyu
- 1 Lu, Yafeng
- 1 Ma, Weichao
- 1 Madiraju, NaveenSai
- 1 Mittelmann, Hans D
- 1 Nelakurthi, Arun Reddy
- 1 Nie, Zhi
- 1 Papandreou-Suppappola, Antonia
- 1 Peng, Ruiyue
- 1 Shahapurkar, Som
- 1 Si, Jennie
- 1 Thies, Cameron
- 1 Trevino, Robert
- 1 Turaga, Pavan
- 1 Tuv, Eugene
- 1 Wang, Hong Xiang
- 1 Xiang, Shuo
- 1 Yang, Tao
- 1 Yang, Yezhou
- 1 Ying, Lei
- 1 Yu, Haichao
- 1 Zhang, Junshan
- 1 Zhang, Xiaoyu
- 1 Zhu, Lingfang
- 22 English
- 19 Computer science
- 4 Machine Learning
- 2 Artificial intelligence
- 2 Electrical engineering
- 2 Feature Selection
- 2 Social Media
- 2 Statistics
- more
- 2 Visual Analytics
- 1 Analytics
- 1 Applications
- 1 Attributed Networks
- 1 Bioinformatics
- 1 CRISP-DM
- 1 Causality
- 1 Computer engineering
- 1 Convolution Neural Network
- 1 Cyberbullying
- 1 Data Science
- 1 Dictionary Learning
- 1 Distributed Computing
- 1 Engineering
- 1 Event Visualization
- 1 Graph Mining
- 1 High Content Screening
- 1 Imaging Genetics
- 1 Industrial
- 1 Medical Imaging
- 1 Molecular biology
- 1 Movie Box Office
- 1 Multi-layered Networks
- 1 Natural gradient descent
- 1 Network Embedding
- 1 Online Algorithms
- 1 Optimization
- 1 Parallel Computing
- 1 Policy gradient methods
- 1 Predictive Analytics
- 1 Ranking
- 1 Robotics
- 1 Semiconductor
- 1 Sentiment
- 1 Sparse Learning
- 1 Sparse Models
- 1 Structured Sparse Methods
- 1 Systems science
- 1 Temporal clustering
- 1 Time Series
- 1 Truncated Newton methods
- 1 Twitter analysis
- 1 Twitter volume spike
- 1 Unsupervised deep learning
- 1 User-in-the-Loop
- 1 Visualization
- 1 block-wise missing data
- 1 breaking news mining
- 1 data heterogeneity
- 1 domain adaptation
- 1 feature selection
- 1 graph connectivity optimization
- 1 graph mining
- 1 hard-thresholding
- 1 information diffusion
- 1 large networks
- 1 multi-source
- 1 node centrality
- 1 optimization
- 1 robustness
- 1 rumor source
- 1 similar users
- 1 social networks
- 1 stock prediction
- 1 stock trading systems
- 1 task heterogeneity
- 1 transfer learning
- 1 user modeling
- Dwarf Galaxies as Laboratories of Protogalaxy Physics: Canonical Star Formation Laws at Low Metallicity
- Evolutionary Genetics of CORL Proteins
- Social Skills and Executive Functioning in Children with PCDH-19
- Deep Domain Fusion for Adaptive Image Classification
- Software Defined Pulse-Doppler Radar for Over-The-Air Applications: The Joint Radar-Communications Experiment
Causality analysis is the process of identifying cause-effect relationships among variables. This process is challenging because causal relationships cannot be tested solely based on statistical indicators as additional information is always needed to reduce the ambiguity caused by factors beyond those covered by the statistical test. Traditionally, controlled experiments are carried out to identify causal relationships, but recently there is a growing interest in causality analysis with observational data due to the increasing availability of data and tools. This type of analysis will often involve automatic algorithms that extract causal relations from large amounts of data and rely on expert …
- Contributors
- Wang, Hong Xiang, Maciejewski, Ross, He, Jingrui, et al.
- Created Date
- 2019
Attributes - that delineating the properties of data, and connections - that describing the dependencies of data, are two essential components to characterize most real-world phenomena. The synergy between these two principal elements renders a unique data representation - the attributed networks. In many cases, people are inundated with vast amounts of data that can be structured into attributed networks, and their use has been attractive to researchers and practitioners in different disciplines. For example, in social media, users interact with each other and also post personalized content; in scientific collaboration, researchers cooperate and are distinct from peers by their …
- Contributors
- Li, Jundong, Liu, Huan, Faloutsos, Christos, et al.
- Created Date
- 2019
In recent years, the rise in social media usage both vertically in terms of the number of users by platform and horizontally in terms of the number of platforms per user has led to data explosion. User-generated social media content provides an excellent opportunity to mine data of interest and to build resourceful applications. The rise in the number of healthcare-related social media platforms and the volume of healthcare knowledge available online in the last decade has resulted in increased social media usage for personal healthcare. In the United States, nearly ninety percent of adults, in the age group 50-75, …
- Contributors
- Nelakurthi, Arun Reddy, He, Jingrui, Cook, Curtiss B, et al.
- Created Date
- 2019
Despite the fact that machine learning supports the development of computer vision applications by shortening the development cycle, finding a general learning algorithm that solves a wide range of applications is still bounded by the ”no free lunch theorem”. The search for the right algorithm to solve a specific problem is driven by the problem itself, the data availability and many other requirements. Automated visual inspection (AVI) systems represent a major part of these challenging computer vision applications. They are gaining growing interest in the manufacturing industry to detect defective products and keep these from reaching customers. The process of …
- Contributors
- Haddad, Bashar Muneer, Karam, Lina, Li, Baoxin, et al.
- Created Date
- 2019
This thesis presents a family of adaptive curvature methods for gradient-based stochastic optimization. In particular, a general algorithmic framework is introduced along with a practical implementation that yields an efficient, adaptive curvature gradient descent algorithm. To this end, a theoretical and practical link between curvature matrix estimation and shrinkage methods for covariance matrices is established. The use of shrinkage improves estimation accuracy of the curvature matrix when data samples are scarce. This thesis also introduce several insights that result in data- and computation-efficient update equations. Empirical results suggest that the proposed method compares favorably with existing second-order techniques based on …
- Contributors
- Barron, Trevor Paul, Ben Amor, Heni, He, Jingrui, et al.
- Created Date
- 2019
Spike sorting is a critical step for single-unit-based analysis of neural activities extracellularly and simultaneously recorded using multi-channel electrodes. When dealing with recordings from very large numbers of neurons, existing methods, which are mostly semiautomatic in nature, become inadequate. This dissertation aims at automating the spike sorting process. A high performance, automatic and computationally efficient spike detection and clustering system, namely, the M-Sorter2 is presented. The M-Sorter2 employs the modified multiscale correlation of wavelet coefficients (MCWC) for neural spike detection. At the center of the proposed M-Sorter2 are two automatic spike clustering methods. They share a common hierarchical agglomerative modeling …
- Contributors
- Ma, Weichao, Si, Jennie, Papandreou-Suppappola, Antonia, et al.
- Created Date
- 2019
Unsupervised learning of time series data, also known as temporal clustering, is a challenging problem in machine learning. This thesis presents a novel algorithm, Deep Temporal Clustering (DTC), to naturally integrate dimensionality reduction and temporal clustering into a single end-to-end learning framework, fully unsupervised. The algorithm utilizes an autoencoder for temporal dimensionality reduction and a novel temporal clustering layer for cluster assignment. Then it jointly optimizes the clustering objective and the dimensionality reduction objective. Based on requirement and application, the temporal clustering layer can be customized with any temporal similarity metric. Several similarity metrics and state-of-the-art algorithms are considered and …
- Contributors
- Madiraju, NaveenSai, Liang, Jianming, Wang, Yalin, et al.
- Created Date
- 2018
Network mining has been attracting a lot of research attention because of the prevalence of networks. As the world is becoming increasingly connected and correlated, networks arising from inter-dependent application domains are often collected from different sources, forming the so-called multi-sourced networks. Examples of such multi-sourced networks include critical infrastructure networks, multi-platform social networks, cross-domain collaboration networks, and many more. Compared with single-sourced network, multi-sourced networks bear more complex structures and therefore could potentially contain more valuable information. This thesis proposes a multi-layered HITS (Hyperlink-Induced Topic Search) algorithm to perform the ranking task on multi-sourced networks. Specifically, each node in …
- Contributors
- Yu, Haichao, Tong, Hanghang, He, Jingrui, et al.
- Created Date
- 2018
Diffusion processes in networks can be used to model many real-world processes, such as the propagation of a rumor on social networks and cascading failures on power networks. Analysis of diffusion processes in networks can help us answer important questions such as the role and the importance of each node in the network for spreading the diffusion and how to top or contain a cascading failure in the network. This dissertation consists of three parts. In the first part, we study the problem of locating multiple diffusion sources in networks under the Susceptible-Infected-Recovered (SIR) model. Given a complete snapshot of …
- Contributors
- Chen, Zhen, Ying, Lei, Tong, Hanghang, et al.
- Created Date
- 2018
The game held by National Basketball Association (NBA) is the most popular basketball event on earth. Each year, tons of statistical data are generated from this industry. Meanwhile, managing teams, sports media, and scientists are digging deep into the data ocean. Recent research literature is reviewed with respect to whether NBA teams could be analyzed as connected networks. However, it becomes very time-consuming, if not impossible, for human labor to capture every detail of game events on court of large amount. In this study, an alternative method is proposed to parse public resources from NBA related websites to build degenerated …
- Contributors
- Zhang, Xiaoyu, Tong, Hanghang, He, Jingrui, et al.
- Created Date
- 2017