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Fertility rates (age-specific, total, gross and net reproduction rate, crude birth rate) 1965 - 2024

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Informācijas un lietotāju atbalsta daļa, Central Statistics Bureau of Latvia
+371 67366922
6/4/2025
Total fertility rate:
rate
Gross reproduction rate:
rate
Net reproduction rate:
rate
Crude birth rate:
rate
Age-specific birth rate of females aged 15-49:
rate
Age-specific birth rates of females aged 15-19:
rate
Age-specific birth rate of females aged 20-24:
rate
Age-specific birth rate of females aged 25-29:
rate
Age-specific birth rate of females aged 30-34:
rate
Age-specific birth rate of females aged 35-39:
rate
Age-specific birth rate of females aged 40-44:
rate
Age-specific birth rate of females aged 45-49:
rate
Central Statistics Bureau of Latvia
IDK0101
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Field for searching for a specific value in the list box. This is examples of values you can search for.Total fertility rate , Gross reproduction rate , Net reproduction rate ,

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Field for searching for a specific value in the list box. This is examples of values you can search for.1965 , 1970 , 1971 ,

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In 2025, CSB changed the method for producing population estimates. Since 2012, a logistic regression model was used, but going forward, the SoL-logit model will be applied. The methods are similar, with the main difference being that the logistic regression model is a supervised model trained on data from the Population and Housing Census 2011, whereas the SoL-logit model is unsupervised model and does not require training data.
To ensure comparability, the data for 2023 and 2024 have also been recalculated using the new method.
Starting from the data on 1994, the birth rates are recalculated (average age of mother, total fertility rate, etc.) corresponding to the mother’s age in full years. Metadata ... = Data not available or too uncertain for presentation