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IIProductionUnknown (version 0.0.3)

Analyzing Data Through of Percentage of Importance Indice (Production Unknown) and Its Derivations

Description

The Importance Index (I.I.) can determine the loss and solution sources for a system in certain knowledge areas (e.g., agronomy), when production (e.g., fruits) is known (Demolin-Leite, 2021). Events (e.g., agricultural pest) can have different magnitudes (numerical measurements), frequencies, and distributions (aggregate, random, or regular) of event occurrence, and I.I. bases in this triplet (Demolin-Leite, 2021) . Usually, the higher the magnitude and frequency of aggregated distribution, the greater the problem or the solution (e.g., natural enemies versus pests) for the system (Demolin-Leite, 2021). However, the final production of the system is not always known or is difficult to determine (e.g., degraded area recovery). A derivation of the I.I. is the percentage of Importance Index-Production Unknown (% I.I.-PU) that can detect the loss or solution sources, when production is unknown for the system (Demolin-Leite, 2024) .

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Version

Install

install.packages('IIProductionUnknown')

Monthly Downloads

138

Version

0.0.3

License

GPL-3

Maintainer

Alcinei Mistico Azevedo

Last Published

February 1st, 2023

Functions in IIProductionUnknown (0.0.3)

DataDefoliation

Data defoliation
IIProductionUnknown package

Analyzing data through of percentage of importance indice-production unknown and its derivations.
EffectivenessOfSolution

Function to estimate the effectiveness of solution sources (S.S.) by loss source (Percentage_I.I. > 0.00) in the production system.
ReductionAbundance

Estimate of the abundance reduction
ReductionDamage

Estimate of the damage reduction
DataSolutionSource

Solution sources data
SelectEffectivenessOfSolution

Determine the pair by pair effects that are important for the analysis.
SolutionSource

Obtaining indexes associated with the solution sources.
LossSource

Obtaining indices associated with sources of loss
DataLossSource

Loss sources data
ChisqTest_Distribution

Loss and solution sources distribution informations
DataDamage

Data damage