rslife 0.2.0

A comprehensive Rust library for actuarial mortality table calculations and life insurance mathematics
Documentation
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<ProviderDomain>soa.org</ProviderDomain>
<ProviderName>Susie Lee</ProviderName>
<TableReference>
Office for National Statistics, “English Life Table No. 15, 1990-92”, United Kingdom Statistics Authority, (England, 1997). Accessed: May, 2013 from http://www.ons.gov.uk/ons/rel/lifetables/decennial-life-tables/english-life-tables-no--15/english-life-tables--no--15.pdf
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<ContentType tc="84">Population Mortality</ContentType>
<TableName>ELT No. 15 (1990-92) – Female, ANB</TableName>
<TableDescription>
English Life Tables (ELT) Number 15 (1990-92) – Female. Basis: Age Nearest Birthday. Minimum Age: 0. Maximum Age: 112
</TableDescription>
<Comments>
Study Data: Estimates of the ‘central exposed to risk of death’ have been derived from the Office of National Statistics (ONS) estimates of the home population (that is, the persons usually resident in England and Wales, excluding foreign visitors and UK Armed Forces stationed elsewhere, but including civilian residents temporarily elsewhere, and all Armed Forces stationed in England and Wales) in mid-1990, mid-1991 and mid-1992. The reason for treating ages 90 and over differently is the problem of mis-statement of age of elderly people in censuses. Methodology: Crude central rates of mortality (mx) were constructed. In graduating the ELT 15, a variable-knot spline regression approach, as was used for ELT 14 (See SOA Table Identities 520 and 521) was adopted. The values for tqx at age 0 were obtained directly from the records of births and deaths in the years 1990-92. For the oldest ages, rates were found by extrapolation from the values of tqx obtained for age 85 to 103 for males and from 85 to 104 for females. Graduated central rates of mortality along with the extrapolated rates were converted to initial mortality rates (tqx). Data Transcription Errors: None. Data Certified: 05/2013.
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<KeyWord>Aggregate</KeyWord>
<KeyWord>Population Mortality</KeyWord>
<KeyWord>United Kingdom</KeyWord>
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English Life Tables (ELT) Number 15 (1990-92) – Female. Basis: Age Nearest Birthday. Minimum Age: 0. Maximum Age: 112
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