Use CategoryMapper to transform an iterator. No more passing iterator to SeriesEncoders

This commit is contained in:
gaxler
2021-02-03 13:42:27 -08:00
parent 374dfeceb9
commit 828df4e338
+33 -34
View File
@@ -1,12 +1,12 @@
//! # One-hot Encoding For [RealNumber](../../math/num/trait.RealNumber.html) Matricies
//! Transform a data [Matrix](../../linalg/trait.BaseMatrix.html) by replacing all categorical variables with their one-hot equivalents
//!
//! Internally OneHotEncoder treats every categorical column as a series and transforms it using [SeriesOneHotEncoder](../series_encoder/struct.SeriesOneHotEncoder.html)
//! Internally OneHotEncoder treats every categorical column as a series and transforms it using [CategoryMapper](../series_encoder/struct.CategoryMapper.html)
//!
//! ### Usage Example
//! ```
//! use smartcore::linalg::naive::dense_matrix::DenseMatrix;
//! use smartcore::preprocessing::categorical_encoder::{OneHotEnc, OneHotEncoderParams};
//! use smartcore::preprocessing::categorical_encoder::{OneHotEncoder, OneHotEncoderParams};
//! let data = DenseMatrix::from_2d_array(&[
//! &[1.5, 1.0, 1.5, 3.0],
//! &[1.5, 2.0, 1.5, 4.0],
@@ -15,7 +15,7 @@
//! ]);
//! let encoder_params = OneHotEncoderParams::from_cat_idx(&[1, 3]);
//! // Infer number of categories from data and return a reusable encoder
//! let encoder = OneHotEnc::fit(&data, encoder_params).unwrap();
//! let encoder = OneHotEncoder::fit(&data, encoder_params).unwrap();
//! // Transform categorical to one-hot encoded (can transform similar)
//! let oh_data = encoder.transform(&data).unwrap();
//! // Produces the following:
@@ -30,7 +30,7 @@ use crate::error::Failed;
use crate::linalg::Matrix;
use crate::preprocessing::data_traits::{CategoricalFloat, Categorizable};
use crate::preprocessing::series_encoder::{SeriesOneHotEncoder, SeriesEncoder};
use crate::preprocessing::series_encoder::CategoryMapper;
/// OneHotEncoder Parameters
#[derive(Debug, Clone)]
@@ -97,17 +97,18 @@ fn validate_col_is_categorical<T: Categorizable>(data: &[T]) -> bool {
/// Encode Categorical variavbles of data matrix to one-hot
#[derive(Debug, Clone)]
pub struct OneHotEncoder<E> {
series_encoders: Vec<E>,
pub struct OneHotEncoder {
category_mappers: Vec<CategoryMapper<CategoricalFloat>>,
col_idx_categorical: Vec<usize>,
}
impl<E: SeriesEncoder<CategoricalFloat>> OneHotEncoder<E> {
impl OneHotEncoder {
/// Create an encoder instance with categories infered from data matrix
pub fn fit<T: Categorizable, M: Matrix<T>>(
data: &M,
params: OneHotEncoderParams,
) -> Result<OneHotEncoder<E>, Failed> {
pub fn fit<T, M>(data: &M, params: OneHotEncoderParams) -> Result<OneHotEncoder, Failed>
where
T: Categorizable,
M: Matrix<T>,
{
match (params.col_idx_categorical, params.infer_categorical) {
(None, false) => Err(Failed::fit(
"Must pass categorical series ids or infer flag",
@@ -126,8 +127,7 @@ impl<E: SeriesEncoder<CategoricalFloat>> OneHotEncoder<E> {
// col buffer to avoid allocations
let mut col_buf: Vec<T> = iter::repeat(T::zero()).take(nrows).collect();
let mut res: Vec<E> =
Vec::with_capacity(idxs.len());
let mut res: Vec<CategoryMapper<CategoricalFloat>> = Vec::with_capacity(idxs.len());
for &idx in &idxs {
data.copy_col_as_vec(idx, &mut col_buf);
@@ -139,11 +139,11 @@ impl<E: SeriesEncoder<CategoricalFloat>> OneHotEncoder<E> {
return Err(Failed::fit(&msg[..]));
}
let hashable_col = col_buf.iter().map(|v| v.to_category());
res.push(E::fit_to_iter(hashable_col));
res.push(CategoryMapper::fit_to_iter(hashable_col));
}
Ok(Self {
series_encoders: res, //Self::build_series_encoders::<T, M>(data, &idxs[..]),
category_mappers: res,
col_idx_categorical: idxs,
})
}
@@ -155,10 +155,14 @@ impl<E: SeriesEncoder<CategoricalFloat>> OneHotEncoder<E> {
}
/// Transform categorical variables to one-hot encoded and return a new matrix
pub fn transform<T: Categorizable, M: Matrix<T>>(&self, x: &M) -> Result<M, Failed> {
pub fn transform<T, M>(&self, x: &M) -> Result<M, Failed>
where
T: Categorizable,
M: Matrix<T>,
{
let (nrows, p) = x.shape();
let additional_params: Vec<usize> = self
.series_encoders
.category_mappers
.iter()
.map(|enc| enc.num_categories())
.collect();
@@ -172,10 +176,10 @@ impl<E: SeriesEncoder<CategoricalFloat>> OneHotEncoder<E> {
for (pidx, &old_cidx) in self.col_idx_categorical.iter().enumerate() {
let cidx = new_col_idx[old_cidx];
let col_iter = (0..nrows).map(|r| x.get(r, old_cidx).to_category());
let sencoder = &self.series_encoders[pidx];
let oh_series: Vec<Option<Vec<T>>> = sencoder.transform_iter(col_iter);
let sencoder = &self.category_mappers[pidx];
let oh_series = col_iter.map(|c| sencoder.get_one_hot::<T, Vec<T>>(&c));
for (row, oh_vec) in oh_series.iter().enumerate() {
for (row, oh_vec) in oh_series.enumerate() {
match oh_vec {
None => {
// Since we support T types, bad value in a series causes in to be invalid
@@ -215,16 +219,11 @@ impl<E: SeriesEncoder<CategoricalFloat>> OneHotEncoder<E> {
}
}
/// Convinince type for common use
pub type OneHotEnc = OneHotEncoder<SeriesOneHotEncoder<CategoricalFloat>>;
#[cfg(test)]
mod tests {
use super::*;
use crate::linalg::naive::dense_matrix::DenseMatrix;
use crate::preprocessing::series_encoder::SeriesOneHotEncoder;
use crate::preprocessing::series_encoder::CategoryMapper;
#[test]
fn adjust_idxs() {
@@ -275,8 +274,8 @@ mod tests {
let series = vec![3.0, 1.0, 2.0, 1.0];
let hashable_series: Vec<CategoricalFloat> =
series.iter().map(|v| v.to_category()).collect();
let enc = SeriesOneHotEncoder::from_positional_category_vec(hashable_series);
let inv = enc.invert_one(vec![0.0, 0.0, 1.0]);
let enc = CategoryMapper::from_positional_category_vec(hashable_series);
let inv = enc.invert_one_hot(vec![0.0, 0.0, 1.0]);
let orig_val: f64 = inv.unwrap().into();
assert_eq!(orig_val, 2.0);
}
@@ -284,11 +283,11 @@ mod tests {
fn test_fit() {
let (x, _) = build_fake_matrix();
let params = OneHotEncoderParams::from_cat_idx(&[1, 3]);
let oh_enc = OneHotEnc::fit(&x, params).unwrap();
assert_eq!(oh_enc.series_encoders.len(), 2);
let oh_enc = OneHotEncoder::fit(&x, params).unwrap();
assert_eq!(oh_enc.category_mappers.len(), 2);
let num_cat: Vec<usize> = oh_enc
.series_encoders
.category_mappers
.iter()
.map(|a| a.num_categories())
.collect();
@@ -299,13 +298,13 @@ mod tests {
fn matrix_transform_test() {
let (x, expected_x) = build_fake_matrix();
let params = OneHotEncoderParams::from_cat_idx(&[1, 3]);
let oh_enc = OneHotEnc::fit(&x, params).unwrap();
let oh_enc = OneHotEncoder::fit(&x, params).unwrap();
let nm = oh_enc.transform(&x).unwrap();
assert_eq!(nm, expected_x);
let (x, expected_x) = build_cat_first_and_last();
let params = OneHotEncoderParams::from_cat_idx(&[0, 2]);
let oh_enc = OneHotEnc::fit(&x, params).unwrap();
let oh_enc = OneHotEncoder::fit(&x, params).unwrap();
let nm = oh_enc.transform(&x).unwrap();
assert_eq!(nm, expected_x);
}
@@ -320,7 +319,7 @@ mod tests {
]);
let params = OneHotEncoderParams::from_cat_idx(&[1]);
match OneHotEnc::fit(&m, params) {
match OneHotEncoder::fit(&m, params) {
Err(_) => {
assert!(true);
}