Predicting the probability of long-term unemployment and recalibrating Ireland’s Statistical Profiling Model
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DOI: https://doi.org/10.26504/rs149
Note: Publisher is ESRI
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References listed on IDEAS
- Bert van Landeghem & Sam Desiere & Ludo Struyven, 2021. "Statistical profiling of unemployed jobseekers," IZA World of Labor, Institute of Labor Economics (IZA), pages 483-483, February.
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