Attention Harvesting for Knowledge Production

abstract: This dissertation seeks to understand and study the process of attention harvesting and knowledge production on typical online Q&A communities. Goals of this study include quantifying the attention harvesting and online knowledge, damping the effect of competition for attention on know...

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Other Authors: Yu, Fan (Author)
Format: Doctoral Thesis
Language:English
Published: 2019
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.55485
id ndltd-asu.edu-item-55485
record_format oai_dc
spelling ndltd-asu.edu-item-554852020-01-15T03:01:05Z Attention Harvesting for Knowledge Production abstract: This dissertation seeks to understand and study the process of attention harvesting and knowledge production on typical online Q&A communities. Goals of this study include quantifying the attention harvesting and online knowledge, damping the effect of competition for attention on knowledge production, and examining the diversity of user behaviors on question answering. Project 1 starts with a simplistic discrete time model on a scale-free network and provides the method to measure the attention harvested. Further, project 1 highlights the effect of distractions on harvesting productive attention and in the end concludes which factors are influential and sensitive to the attention harvesting. The main finding is the critical condition to optimize the attention harvesting on the network by reducing network connection. Project 2 extends the scope of the study to quantify the value and quality of knowledge, focusing on the question answering dynamics. This part of research models how attention was distributed under typical answering strategies on a virtual online Q&A community. The final result provides an approach to measure the efficiency of attention transferred into value production and observes the contribution of different scenarios under various computed metrics. Project 3 is an advanced study on the foundation of the virtual question answering community from project 2. With highlights of different user behavioral preferences, algorithm stochastically simulates individual decisions and behavior. Results from sensitivity analysis on different mixtures of user groups gives insight of nonlinear dynamics for the objectives of success. Simulation finding shows reputation rewarding mechanism on Stack Overflow shapes the crowd mixture of behavior to be successful. In addition, project proposed an attention allocation scenario of question answering to improve the success metrics when coupling with a particular selection strategy. Dissertation/Thesis Yu, Fan (Author) Janssen, Marcus A (Advisor) Kang, Yun (Committee member) Castillo-Chavez, Carlos (Committee member) Arizona State University (Publisher) Applied mathematics Social research Sustainability Attention Complex system Crowdsourcing diversity Online Q&A community online social behavior eng 123 pages Doctoral Dissertation Applied Mathematics for the Life and Social Sciences 2019 Doctoral Dissertation http://hdl.handle.net/2286/R.I.55485 http://rightsstatements.org/vocab/InC/1.0/ 2019
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Applied mathematics
Social research
Sustainability
Attention
Complex system
Crowdsourcing
diversity
Online Q&A community
online social behavior
spellingShingle Applied mathematics
Social research
Sustainability
Attention
Complex system
Crowdsourcing
diversity
Online Q&A community
online social behavior
Attention Harvesting for Knowledge Production
description abstract: This dissertation seeks to understand and study the process of attention harvesting and knowledge production on typical online Q&A communities. Goals of this study include quantifying the attention harvesting and online knowledge, damping the effect of competition for attention on knowledge production, and examining the diversity of user behaviors on question answering. Project 1 starts with a simplistic discrete time model on a scale-free network and provides the method to measure the attention harvested. Further, project 1 highlights the effect of distractions on harvesting productive attention and in the end concludes which factors are influential and sensitive to the attention harvesting. The main finding is the critical condition to optimize the attention harvesting on the network by reducing network connection. Project 2 extends the scope of the study to quantify the value and quality of knowledge, focusing on the question answering dynamics. This part of research models how attention was distributed under typical answering strategies on a virtual online Q&A community. The final result provides an approach to measure the efficiency of attention transferred into value production and observes the contribution of different scenarios under various computed metrics. Project 3 is an advanced study on the foundation of the virtual question answering community from project 2. With highlights of different user behavioral preferences, algorithm stochastically simulates individual decisions and behavior. Results from sensitivity analysis on different mixtures of user groups gives insight of nonlinear dynamics for the objectives of success. Simulation finding shows reputation rewarding mechanism on Stack Overflow shapes the crowd mixture of behavior to be successful. In addition, project proposed an attention allocation scenario of question answering to improve the success metrics when coupling with a particular selection strategy. === Dissertation/Thesis === Doctoral Dissertation Applied Mathematics for the Life and Social Sciences 2019
author2 Yu, Fan (Author)
author_facet Yu, Fan (Author)
title Attention Harvesting for Knowledge Production
title_short Attention Harvesting for Knowledge Production
title_full Attention Harvesting for Knowledge Production
title_fullStr Attention Harvesting for Knowledge Production
title_full_unstemmed Attention Harvesting for Knowledge Production
title_sort attention harvesting for knowledge production
publishDate 2019
url http://hdl.handle.net/2286/R.I.55485
_version_ 1719308485625118720