Open Access. Powered by Scholars. Published by Universities.®
- Discipline
-
- Computer Sciences (3)
- Engineering (3)
- Data Science (2)
- Graphics and Human Computer Interfaces (2)
- Mathematics (2)
-
- Other Computer Sciences (2)
- Software Engineering (2)
- Statistical Models (2)
- Applied Mathematics (1)
- Bilingual, Multilingual, and Multicultural Education (1)
- Biomedical Engineering and Bioengineering (1)
- Categorical Data Analysis (1)
- Civil and Environmental Engineering (1)
- Clinical Trials (1)
- Computer Engineering (1)
- Curriculum and Instruction (1)
- Data Storage Systems (1)
- Design of Experiments and Sample Surveys (1)
- Discrete Mathematics and Combinatorics (1)
- Earth Sciences (1)
- Education (1)
- Educational Assessment, Evaluation, and Research (1)
- Educational Psychology (1)
- Geological Engineering (1)
- Geomorphology (1)
- Geotechnical Engineering (1)
- Hydrology (1)
- Keyword
-
- Color (1)
- Color space (1)
- Computational Neuroscience (1)
- Computer Science Education (1)
- Control Charts (1)
-
- Crowdsourcing (1)
- Debris Flow (1)
- Feature Extraction (1)
- Filemaker (1)
- Hypothesis Testing (1)
- Industry Case Study (1)
- Industry Questionnaire (1)
- Industry Survey (1)
- Interference (1)
- Machine Learning (1)
- Memory Capacity (1)
- Mobile (1)
- Neuroidal Model (1)
- Perception (1)
- Post-Fire (1)
- Predictive Model (1)
- Principal Components Analysis (1)
- Production Forecasting (1)
- Random Graphs (1)
- Shale Gas (1)
- Shear Resistance (1)
- Software Engineering Education (1)
- Software Globalization (1)
- Software Internationalization (1)
- Software Localization (1)
Articles 1 - 6 of 6
Full-Text Articles in Applied Statistics
Foundations Of Memory Capacity In Models Of Neural Cognition, Chandradeep Chowdhury
Foundations Of Memory Capacity In Models Of Neural Cognition, Chandradeep Chowdhury
Master's Theses
A central problem in neuroscience is to understand how memories are formed as a result of the activities of neurons. Valiant’s neuroidal model attempted to address this question by modeling the brain as a random graph and memories as subgraphs within that graph. However the question of memory capacity within that model has not been explored: how many memories can the brain hold? Valiant introduced the concept of interference between memories as the defining factor for capacity; excessive interference signals the model has reached capacity. Since then, exploration of capacity has been limited, but recent investigations have delved into the …
Incorporating Shear Resistance Into Debris Flow Triggering Model Statistics, Noah J. Lyman
Incorporating Shear Resistance Into Debris Flow Triggering Model Statistics, Noah J. Lyman
Master's Theses
Several regions of the Western United States utilize statistical binary classification models to predict and manage debris flow initiation probability after wildfires. As the occurrence of wildfires and large intensity rainfall events increase, so has the frequency in which development occurs in the steep and mountainous terrain where these events arise. This resulting intersection brings with it an increasing need to derive improved results from existing models, or develop new models, to reduce the economic and human impacts that debris flows may bring. Any development or change to these models could also theoretically increase the ease of collection, processing, and …
Combining Machine Learning And Empirical Engineering Methods Towards Improving Oil Production Forecasting, Andrew J. Allen
Combining Machine Learning And Empirical Engineering Methods Towards Improving Oil Production Forecasting, Andrew J. Allen
Master's Theses
Current methods of production forecasting such as decline curve analysis (DCA) or numerical simulation require years of historical production data, and their accuracy is limited by the choice of model parameters. Unconventional resources have proven challenging to apply traditional methods of production forecasting because they lack long production histories and have extremely variable model parameters. This research proposes a data-driven alternative to reservoir simulation and production forecasting techniques. We create a proxy-well model for predicting cumulative oil production by selecting statistically significant well completion parameters and reservoir information as independent predictor variables in regression-based models. Then, principal component analysis (PCA) …
A Proof Of Concept For Crowdsourcing Color Perception Experiments, Ryan Nathaniel Mcleod
A Proof Of Concept For Crowdsourcing Color Perception Experiments, Ryan Nathaniel Mcleod
Master's Theses
Accurately quantifying the human perception of color is an unsolved prob- lem. There are dozens of numerical systems for quantifying colors and how we as humans perceive them, but as a whole, they are far from perfect. The ability to accurately measure color for reproduction and verification is critical to indus- tries that work with textiles, paints, food and beverages, displays, and media compression algorithms. Because the science of color deals with the body, mind, and the subjective study of perception, building models of color requires largely empirical data over pure analytical science. Much of this data is extremely dated, …
Improvement Of Statistical Process Control At St. Jude Medical's Cardiac Manufacturing Facility, Christopher Lance Edwards
Improvement Of Statistical Process Control At St. Jude Medical's Cardiac Manufacturing Facility, Christopher Lance Edwards
Master's Theses
Sig sigma is a methodology where companies strive to reproduce results ending up having a 99.9996% chance their product will be void of defects. In order for companies to reach six sigma, statistical process control (SPC) needs to be introduced. SPC has many different tools associated with it, control charts being one of them. Control charts play a vital role in managing how a process is behaving. Control charts allow users to identify special causes, or shifts, and can therefore change the process to keep producing good products, free of defects.
There are many factories and manufacturing facilities having implemented …
Software Internationalization: A Framework Validated Against Industry Requirements For Computer Science And Software Engineering Programs, John Huân Vũ
Master's Theses
View John Huân Vũ's thesis presentation at http://youtu.be/y3bzNmkTr-c.
In 2001, the ACM and IEEE Computing Curriculum stated that it was necessary to address "the need to develop implementation models that are international in scope and could be practiced in universities around the world." With increasing connectivity through the internet, the move towards a global economy and growing use of technology places software internationalization as a more important concern for developers. However, there has been a "clear shortage in terms of numbers of trained persons applying for entry-level positions" in this area. Eric Brechner, Director of Microsoft Development Training, suggested …