Markus J. Hofmann
2024
Individual Text Corpora Predict Openness, Interests, Knowledge and Level of Education
Markus J. Hofmann
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Markus T. Jansen
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Christoph Wigbels
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Benny Briesemeister
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Arthur M. Jacobs
Proceedings of the Workshop on Cognitive Aspects of the Lexicon @ LREC-COLING 2024
Here we examine whether the personality dimension of openness to experience can be predicted from the individual google search history. By web scraping, individual text corpora (ICs) were generated from 214 participants with a mean number of 5 million word tokens. We trained word2vec models and used the similarities of each IC to label words, which were derived from a lexical approach of personality. These IC-label-word similarities were utilized as predictive features in neural models. For training and validation, we relied on 179 participants and held out a test sample of 35 participants. A grid search with varying number of predictive features, hidden units and boost factor was performed. As model selection criterion, we used R2 in the validation samples penalized by the absolute R2 difference between training and validation. The selected neural model explained 35% of the openness variance in the test sample, while an ensemble model with the same architecture often provided slightly more stable predictions for intellectual interests, knowledge in humanities and level of education. Finally, a learning curve analysis suggested that around 500 training participants are required for generalizable predictions. We discuss ICs as a complement or replacement of survey-based psychodiagnostics.
2020
Individual corpora predict fast memory retrieval during reading
Markus J. Hofmann
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Lara Müller
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Andre Rölke
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Ralph Radach
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Chris Biemann
Proceedings of the Workshop on the Cognitive Aspects of the Lexicon
The corpus, from which a predictive language model is trained, can be considered the experience of a semantic system. We recorded everyday reading of two participants for two months on a tablet, generating individual corpus samples of 300/500K tokens. Then we trained word2vec models from individual corpora and a 70 million-sentence newspaper corpus to obtain individual and norm-based long-term memory structure. To test whether individual corpora can make better predictions for a cognitive task of long-term memory retrieval, we generated stimulus materials consisting of 134 sentences with uncorrelated individual and norm-based word probabilities. For the subsequent eye tracking study 1-2 months later, our regression analyses revealed that individual, but not norm-corpus-based word probabilities can account for first-fixation duration and first-pass gaze duration. Word length additionally affected gaze duration and total viewing duration. The results suggest that corpora representative for an individual’s long-term memory structure can better explain reading performance than a norm corpus, and that recently acquired information is lexically accessed rapidly.
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Co-authors
- Lara Müller 1
- Andre Rölke 1
- Ralph Radach 1
- Chris Biemann 1
- Markus T. Jansen 1
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