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  1. MOI-bias-correction MOI-bias-correction Public

    Repository of R functions and files to derive etimates and generate simulated data according to the methods and models described in "Bias-corrected maximum-likelihood estimation of multiplicity of …

    R

  2. mhashemihsmw mhashemihsmw Public

    Config files for my GitHub profile.

  3. MLMOI MLMOI Public

    The package reaches out to scientists that seek to estimate MOI and lineage frequencies at molecular markers using the maximum-likelihood framework described in https://doi.org/10.1371/journal.pone…

    R

  4. maximum-likelihood-estimation-for-MOI-and-lineage-frequency-estimates-accounting-for-incomplete-data maximum-likelihood-estimation-for-MOI-and-lineage-frequency-estimates-accounting-for-incomplete-data Public

    R script and documentation of maximum-likelihood estimation for MOI and lineage frequency estimates accounting for incomplete data

    R

  5. VaR VaR Public

    Value-at-risk it is a standard financial method used to estimate the potential losses you could experience as market prices move. Its strength lies in its ability to aggregate risks, so that you ca…

  6. Modeling-Claim-Severity-for-Motor-Liability-Insurance Modeling-Claim-Severity-for-Motor-Liability-Insurance Public

    This task involves modeling the expected damage per policyholder per year based on their risk characteristics. The goal is to develop accurate predictive models to determine fair insurance premiums…

    Python