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This thesis examines the role of the media and popular culture in defining the shape and scope of what we think of today as "science." As a source of cognitive authority the scientific establishment is virtually beyond dispute. The intellectual clout of science seemingly elevates it to a position outside

This thesis examines the role of the media and popular culture in defining the shape and scope of what we think of today as "science." As a source of cognitive authority the scientific establishment is virtually beyond dispute. The intellectual clout of science seemingly elevates it to a position outside the influence of the general population. Yet in reality the emergence and evolution of the public sphere, including popular culture, has had a profound impact on the definition and application of science. What science is and how it relates to the life of the ordinary person are hardly static concepts; the public perception of science has been molding its boundaries since at least the 18th century. During the Enlightenment "natural philosophy" was broadly accessible and integrated nicely with other forms of knowledge. As the years passed into the 19th century, however, science became increasingly professionalized and distinct, until the "Two Cultures" had fully developed. The established scientific institution distanced itself from the nonscientific community, leaving the task of communicating scientific knowledge to various popularizers, who typically operated through the media and often used the mantle of science to further their own social or political agendas. Such isolation from orthodox science forced the public to create an alternate form of science for popular consumption, a form consisting mainly of decontextualized facts, often used in contrast to other forms of thought (i.e. religion, art, or pseudoscience). However, with the recent advent of "Web 2.0" and the increasing prominence of convergence culture, the role of the public sphere is undergoing a dramatic revolution. Concepts such as "collective intelligence" are changing consumers of information into simultaneous producers, establishing vast peer networks of collaboration and enabling the public to bypass traditional sources of authority. This new hypermobility of information and empowerment of the public sphere are just now beginning to break down science's monolithic status. In many ways, it seems, we are entering a new Enlightenment.
ContributorsSmith, Robert Scott (Author) / Lussier, Mark (Thesis advisor) / Broglio, Ronald (Committee member) / Bivona, Daniel (Committee member) / Arizona State University (Publisher)
Created2012
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Description
Graph theory is a critical component of computer science and software engineering, with algorithms concerning graph traversal and comprehension powering much of the largest problems in both industry and research. Engineers and researchers often have an accurate view of their target graph, however they struggle to implement a correct, and

Graph theory is a critical component of computer science and software engineering, with algorithms concerning graph traversal and comprehension powering much of the largest problems in both industry and research. Engineers and researchers often have an accurate view of their target graph, however they struggle to implement a correct, and efficient, search over that graph.

To facilitate rapid, correct, efficient, and intuitive development of graph based solutions we propose a new programming language construct - the search statement. Given a supra-root node, a procedure which determines the children of a given parent node, and optional definitions of the fail-fast acceptance or rejection of a solution, the search statement can conduct a search over any graph or network. Structurally, this statement is modelled after the common switch statement and is put into a largely imperative/procedural context to allow for immediate and intuitive development by most programmers. The Go programming language has been used as a foundation and proof-of-concept of the search statement. A Go compiler is provided which implements this construct.
ContributorsHenderson, Christopher (Author) / Bansal, Ajay (Thesis advisor) / Lindquist, Timothy (Committee member) / Acuna, Ruben (Committee member) / Arizona State University (Publisher)
Created2018
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Description
Availability of affordable image and video capturing devices as well as rapid development of social networking and content sharing websites has led to the creation of new type of content, Social Media. Any system serving the end user’s query search request should not only take the relevant images into consideration

Availability of affordable image and video capturing devices as well as rapid development of social networking and content sharing websites has led to the creation of new type of content, Social Media. Any system serving the end user’s query search request should not only take the relevant images into consideration but they also need to be divergent for a well-rounded description of a query. As a result, the automated optimization of image retrieval results that are also divergent becomes exceedingly important.



The main focus of this thesis is to use visual description of a landmark by choosing the most diverse pictures that best describe all the details of the queried location from community-contributed datasets. For this, an end-to-end framework has been built, to retrieve relevant results that are also diverse. Different retrieval re-ranking and diversification strategies are evaluated to find a balance between relevance and diversification. Clustering techniques are employed to improve divergence. A unique fusion approach has been adopted to overcome the dilemma of selecting an appropriate clustering technique and the corresponding parameters, given a set of data to be investigated. Extensive experiments have been conducted on the Flickr Div150Cred dataset that has 30 different landmark locations. The results obtained are promising when evaluated on metrics for relevance and diversification.
ContributorsKalakota, Vaibhav Reddy (Author) / Bansal, Ajay (Thesis advisor) / Bansal, Srividya (Committee member) / Findler, Michael (Committee member) / Arizona State University (Publisher)
Created2020
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Description
Globalization is driving a rapid increase in motivation for learning new languages, with online and mobile language learning applications being an extremely popular method of doing so. Many language learning applications focus almost exclusively on aiding students in acquiring vocabulary, one of the most important elements in achieving fluency in

Globalization is driving a rapid increase in motivation for learning new languages, with online and mobile language learning applications being an extremely popular method of doing so. Many language learning applications focus almost exclusively on aiding students in acquiring vocabulary, one of the most important elements in achieving fluency in a language. A well-balanced language curriculum must include both explicit vocabulary instruction and implicit vocabulary learning through interaction with authentic language materials. However, most language learning applications focus only on explicit instruction, providing little support for implicit learning. Students require support with implicit vocabulary learning because they need enough context to guess and acquire new words. Traditional techniques aim to teach students enough vocabulary to comprehend the text, thus enabling them to acquire new words. Despite the wide variety of support for vocabulary learning offered by learning applications today, few offer guidance on how to select an optimal vocabulary study set.

This thesis proposes a novel method of student modeling which uses pre-trained masked language models to model a student's reading comprehension abilities and detect words which are required for comprehension of a text. It explores the efficacy of using pre-trained masked language models to model human reading comprehension and presents a vocabulary study set generation pipeline using this method. This pipeline creates vocabulary study sets for explicit language learning that enable comprehension while still leaving some words to be acquired implicitly. Promising results show that masked language modeling can be used to model human comprehension and that the pipeline produces reasonably sized vocabulary study sets.
ContributorsEdgar, Vatricia Cathrine (Author) / Bansal, Ajay (Thesis advisor) / Acuna, Ruben (Committee member) / Mehlhase, Alexandra (Committee member) / Arizona State University (Publisher)
Created2020