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Ø A.bi() |
Split a low-frequency categorical enumerated sequence variable that contains a number of categories not greater than 6 into multiple binary variables during modeling |
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Correct skewness of a numeric sequence |
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Generate multiple derivative variables from a datetime sequence variable |
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Generate multiple date difference variables for a datetime sequence/table sequence variable |
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Fill missing values using the specified constant value |
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Fill missing values with the specified values |
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Fill missing values according to the specified method |
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Impute missing values to a sequence type variable during modeling |
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Find missing values in a vector |
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Find missing values in a matrix |
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Ø A.mi() |
Create indicator variable for missing values in a sequence variable |
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Fill missing values with moving window method |
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Ø A.mvp() |
Create indicator variables for the MVP analysis and automatically perform the subsequent handling according to a sequence of indicator variables for missing values |
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Normalize a sequence type numeric variable during modeling |
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Delete missing values from a vector |
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Delete rows or columns containing missing values from a matrix |
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Ø A.sert() |
Remove outliers from a sequence type numeric variable during modeling |
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Map enumerated values as integers |
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Perform smoothing on a sequence type variable during modeling |
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Correct skewness of a sequence of numeric target variables |
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Ø chi_p() |
Calculate p-value of chi-square test |
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A chi-square inverse cumulative distribution function |
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Ø comabs() |
Calculate the modulus of a sequence of complex numbers |
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Calculate angles of complex numbers |
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Calculate a complex number’s complex conjugate |
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Ø comexp() |
Create complex exponentials |
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Get a complex number’s imaginary part |
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Sort complex numbers in the form of complex conjugate pairs |
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Create a sequence of complex numbers |
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Get a complex number’s real part |
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A sign function that only handles complex number |
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Ø comstr() |
Output complex numbers as strings in the form of a+bi |
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Shift phase angles |
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Ø cov() |
Calculate the covariance between two vectors |
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Ø covm() |
Calculate the covariance matrix for a matrix |
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Ø dism() |
Calculate Mahalanobis distance between two vectors on covariance matrix |
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Build models and perform predictions using the elastic net regression method |
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Ø eye() |
Create a matrix whose major diagonal element is 1 and other elements are 0 |
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Ø finv() |
An inverse cumulative distribution function F |
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Calculate p-value for Fisher’s exact test |
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Ø freq() |
Calculate the frequency of a specified member in a sequence |
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Ø kmeans() |
Perform an unsupervised clustering algorithm that divides a dataset into predetermined number of clusters based on the minimum error function |
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Ø lasso() |
Build models and perform predictions using the Lasso regression method |
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For linear programming and calculate minimum value in linear objective function under linear constraints |
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Correct Akima piecewise cubic Hermite interpolation |
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Perform cumulative sum on a matrix or a multidimensional matrix |
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Ø mfind() |
Search for positions of non-zero members in a vector or matrix |
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Ø mmean() |
Calculate the mean value within a matrix or a multidimensional matrix |
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Ø mnorm() |
Normalize a matrix or a multidimensional matrix |
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Ø mstd() |
Calculate the standard deviation on a matrix or a multidimensional matrix |
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Ø msum() |
Calculate sum on a matrix or a multidimensional matrix |
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An inverse normal distribution function |
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Ø ones() |
Create a multidimensional matrix where all the elements are1 |
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Ø P.bi() |
Split a low-frequency categorical enumerated table sequence/record sequence variable that contains a number of categories not greater than 6 into multiple binary variables during modeling |
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Correct skewness of a numeric variable |
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Generate multiple derivative variables from a date table sequence/record sequence variable |
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Generate multiple date difference variables for a datetime table sequence/record sequence variable |
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Impute missing values to a table sequence/record sequence type variable during modeling |
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Ø P.mi() |
Create indicator variable for missing values for a table sequence/record sequence variable during modeling |
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Ø P.mvp() |
Create indicator variables for the MVP analysis and automatically perform the subsequent handling according to a table sequence/record sequence of indicator variables for missing values |
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Normalize a table sequence/record sequence numeric variable during modeling |
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Ø P.sert() |
Remove outliers from a table sequence/record sequence numeric variable during modeling |
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Map enumerated variable values as integers |
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Perform smoothing on a table sequence/record sequence variable of a table sequence/ record sequence during modeling |
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Correct skewness of a table sequence/record sequence numeric variable |
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Ø pca() |
Perform PCA on a matrix and return data for dimensionality reduction |
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Piecewise cubic Hermite interpolating polynomial |
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Ø pls() |
Fit together matrices using PLS technique |
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Ø ridge() |
Build models and perform predictions using the ridge regression method |
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Ø se() |
Calculate the standard error of a numeric sequence |
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Ø sg() |
Perform SG smoothing on each row of a vector or a matrix |
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Ø skew() |
Calculate the skewness of a sequence of numeric data |
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Get cubic spline interpolation |
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Ø svm() |
Solve binary classification problems and regression problems by supporting vector machines |
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Ø tinv() |
T inverse cumulative distribution function |
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Calculate t-test’s p-value |
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Ø zeros() |
Create a multidimensional matrix where all the elements are zero |