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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

KNOWLEDGE COPRODUCTION IN DISCOGS MUSIC DATABASE : A study of the motivations behind a crowdsourced online discography

Sicilia, Maria January 2020 (has links)
Discogs  is  a crowdsourced  online  discography  that  has  become  one  the  largest music databases   and   marketplace   used   by   collectors   and   enthusiasts. To   learn   about   what motivates Discogs community users to contribute, the answers provided by the respondents(n=135)   to an   online   survey with   Likert-scaled   items   measuring different types   of motivations  and  some  open-ended  questions were analysed.  The  results  suggested that Discogs contributors are primarily driven by altruistic reasons (intrinsic motivation) followed by  pragmatism  (extrinsic  motivation).   While  sellers  contributed to  the  database mostly  to sell in the Marketplace, they were equally motivated by intrinsic factors, with similar rates to respondents who  did  not  have  economic  interests  in  the  website. Open-ended  questions indicated  that  conflicts  with  other  users  could  decrease  the  motivation  to  contribute.  In addition,   respondents   revealed   that during   their   trajectory   ascontributors,   intrinsic motivation increased over time. Also, experience and expertise were the reasons why some contributors had roles recognised by other members in the Discogs community
2

Price Prediction of Vinyl Records Using Machine Learning Algorithms

Johansson, David January 2020 (has links)
Machine learning algorithms have been used for price prediction within several application areas. Examples include real estate, the stock market, tourist accommodation, electricity, art, cryptocurrencies, and fine wine. Common approaches in studies are to evaluate the accuracy of predictions and compare different algorithms, such as Linear Regression or Neural Networks. There is a thriving global second-hand market for vinyl records, but the research of price prediction within the area is very limited. The purpose of this project was to expand on existing knowledge within price prediction in general to evaluate some aspects of price prediction of vinyl records. That included investigating the possible level of accuracy and comparing the efficiency of algorithms. A dataset of 37000 samples of vinyl records was created with data from the Discogs website, and multiple machine learning algorithms were utilized in a controlled experiment. Among the conclusions drawn from the results was that the Random Forest algorithm generally generated the strongest results, that results can vary substantially between different artists or genres, and that a large part of the predictions had a good accuracy level, but that a relatively small amount of large errors had a considerable effect on the general results.

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