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Richard M. Ingersoll, Henry May
December 1, 2012
This study examines the magnitude, destinations, and determinants of mathematics and science teacher turnover. The data are from the nationally representative Schools and Staffing Survey and the Teacher Follow-Up Survey. Over the past two decades, rates of mathematics and science teacher turnover have increased but, contrary to conventional wisdom, have not been consistently different than those of other teachers. Also, contrary to conventional wisdom, mathematics and science teachers were also no more likely than other teachers to take noneducation jobs, such as in technological fields or to be working for private business or industry. The data also show there are large school-to-school differences in mathematics and science turnover; high-poverty, high-minority, and urban public schools have among the highest rates. In the case of cross-school migration, the data show there is an annual asymmetric reshuffling of a significant portion of the mathematics and science teaching force from poor to not-poor schools, from high-minority to low-minority schools, and from urban to suburban schools. A number of key organizational characteristics and conditions of schools accounted for these school differences. The strongest factor for mathematics teachers was the degree of individual classroom autonomy held by teachers. Net of other factors such as salaries, schools with less classroom autonomy lose math teachers at a far higher rate than other teachers. In contrast, for science teachers salary was the strongest factor, while classroom autonomy was not strongly related to their turnover.
Keywords: teacher career paths, teacher turnover, math teachers, science teachers
Richard M. Ingersoll, Henry May