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Why Do You Want to Be a Teacher? A Natural Language Processing Approach

Heightened concerns about the health of the teaching profession highlight the importance of studying the early teacher pipeline. This exploratory, descriptive paper examines preservice teachers' (PST) expressed motivation for pursuing a teaching career and its relationship with PST characteristics and outcomes. Using data from one of the largest teacher education programs in Texas, we use a natural language processing algorithm to categorize into topical groups roughly 2,800 essay responses to the prompt, "Explain why you decided to become a teacher.'' We identify 11 topics that largely reflect altruistic and intrinsic (though not extrinsic) reasons for teaching. The frequency of motivation topics varied substantially by PST gender, race/ethnicity, and certification area. While topics collectively explained little of the variance in PST outcomes, we found preliminary evidence that intrinsic enjoyment of teaching and prior experiences with adversity predicted higher performance during clinical teaching and lower attrition as a full-time K–12 teacher.

Keywords
Teacher motivation, teacher preparation, teacher supply, natural language processing
Education level
Document Object Identifier (DOI)
10.26300/zc1d-9s84

EdWorkingPaper suggested citation:

Bartanen, Brendan, Andrew Kwok, Andrew Avitabile, and Brian Heseung Kim. (). Why Do You Want to Be a Teacher? A Natural Language Processing Approach. (EdWorkingPaper: 23-789). Retrieved from Annenberg Institute at Brown University: https://doi.org/10.26300/zc1d-9s84

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