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Validating Word Embedding as a Tool for the Psychological Sciences.
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Validating Word Embedding as a Tool for the Psychological Sciences./
作者:
Swift, Victor.
面頁冊數:
1 online resource (151 pages)
附註:
Source: Dissertations Abstracts International, Volume: 82-10, Section: B.
Contained By:
Dissertations Abstracts International82-10B.
標題:
Quantitative psychology. -
電子資源:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=28262079click for full text (PQDT)
ISBN:
9798597082370
Validating Word Embedding as a Tool for the Psychological Sciences.
Swift, Victor.
Validating Word Embedding as a Tool for the Psychological Sciences.
- 1 online resource (151 pages)
Source: Dissertations Abstracts International, Volume: 82-10, Section: B.
Thesis (Ph.D.)--University of Toronto (Canada), 2021.
Includes bibliographical references
Word Embedding (WE) represents a class of machine learning techniques used to model the relative meaning of words, based on the contextual interchangeability of those words within text corpora. Because the measurement of meaning is fundamental to the psychological sciences, psychologists have begun to adapt this tool from computational linguistics to study the human mind. While WE has been validated as a means to recover the meanings contained in text, this tool has not been successfully validated as a means to recover the meanings contained in our heads. Accordingly, in this dissertation I seek to determine the extent to which WE is applicable to psychological research. In Study 1, I investigate convergent validity between models of semantic memory based on word associations and models based on WE vectors, in three languages. Without parameterization, pre-trained WE vectors were found to recover more than 75% of the concepts (i.e., clusters) contained in word association networks. In Study 2, I explore the maximal degree of convergence between WE and word association models that can be achieved by applying different restrictions to WE models. At best, WE models were found to recover more than 95% of the concepts contained in word association networks. This level of accuracy was achieved when utilizing K-means clustering, focusing on specific parts-of-speech, and modelling concepts based on reliable word associations. In Study 3, I test whether psychological models can be recovered from WE vectors and probed. I found that the Big Five model of personality is largely recoverable from the personality descriptive space produced by WE, and that the Big Five trait factors function as attractors in this space. Implications for personality theory and research ensue. In the final chapter, I review the possible applications of WE modelling in the social and physical sciences by demonstrating how WE modelling can be used to answer broad questions regarding the content and nature of concepts. Taken together, my results justify WE as a means to probe the human mind, at a depth and scale that has been unattainable using self-report and observational methods.
Electronic reproduction.
Ann Arbor, Mich. :
ProQuest,
2023
Mode of access: World Wide Web
ISBN: 9798597082370Subjects--Topical Terms:
2144748
Quantitative psychology.
Subjects--Index Terms:
EmotionIndex Terms--Genre/Form:
542853
Electronic books.
Validating Word Embedding as a Tool for the Psychological Sciences.
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Word Embedding (WE) represents a class of machine learning techniques used to model the relative meaning of words, based on the contextual interchangeability of those words within text corpora. Because the measurement of meaning is fundamental to the psychological sciences, psychologists have begun to adapt this tool from computational linguistics to study the human mind. While WE has been validated as a means to recover the meanings contained in text, this tool has not been successfully validated as a means to recover the meanings contained in our heads. Accordingly, in this dissertation I seek to determine the extent to which WE is applicable to psychological research. In Study 1, I investigate convergent validity between models of semantic memory based on word associations and models based on WE vectors, in three languages. Without parameterization, pre-trained WE vectors were found to recover more than 75% of the concepts (i.e., clusters) contained in word association networks. In Study 2, I explore the maximal degree of convergence between WE and word association models that can be achieved by applying different restrictions to WE models. At best, WE models were found to recover more than 95% of the concepts contained in word association networks. This level of accuracy was achieved when utilizing K-means clustering, focusing on specific parts-of-speech, and modelling concepts based on reliable word associations. In Study 3, I test whether psychological models can be recovered from WE vectors and probed. I found that the Big Five model of personality is largely recoverable from the personality descriptive space produced by WE, and that the Big Five trait factors function as attractors in this space. Implications for personality theory and research ensue. In the final chapter, I review the possible applications of WE modelling in the social and physical sciences by demonstrating how WE modelling can be used to answer broad questions regarding the content and nature of concepts. Taken together, my results justify WE as a means to probe the human mind, at a depth and scale that has been unattainable using self-report and observational methods.
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