ExpressionCatalog.Expression Yöntem
Tanım
Önemli
Bazı bilgiler ürünün ön sürümüyle ilgilidir ve sürüm öncesinde önemli değişiklikler yapılmış olabilir. Burada verilen bilgilerle ilgili olarak Microsoft açık veya zımni hiçbir garanti vermez.
oluşturur ExpressionEstimator.
public static Microsoft.ML.Transforms.ExpressionEstimator Expression (this Microsoft.ML.TransformsCatalog catalog, string outputColumnName, string expression, params string[] inputColumnNames);
static member Expression : Microsoft.ML.TransformsCatalog * string * string * string[] -> Microsoft.ML.Transforms.ExpressionEstimator
<Extension()>
Public Function Expression (catalog As TransformsCatalog, outputColumnName As String, expression As String, ParamArray inputColumnNames As String()) As ExpressionEstimator
Parametreler
- catalog
- TransformsCatalog
- outputColumnName
- String
dönüştürmesinden kaynaklanan sütunun inputColumnNames
adı.
Bu sütunun veri türü giriş sütunuyla aynı olacaktır.
- expression
- String
sütununu outputColumnName
oluşturmak için inputColumnNames
uygulanacak ifade.
- inputColumnNames
- String[]
Giriş sütunlarının adları.
Döndürülenler
Örnekler
using System;
using System.Collections.Generic;
using Microsoft.ML;
using Microsoft.ML.Data;
namespace Samples.Dynamic.Transforms
{
public static class Expression
{
public static void Example()
{
// Create a new ML context, for ML.NET operations. It can be used for
// exception tracking and logging, as well as the source of randomness.
var mlContext = new MLContext();
// Create a small dataset as an IEnumerable.
var samples = new List<InputData>()
{
new InputData(0.5f, new[] { 1f, 0.2f }, 3, "hi", true, new[] { "zero", "one" }),
new InputData(-2.7f, new[] { 3.5f, -0.1f }, 2, "bye", false, new[] { "a", "b" }),
new InputData(1.3f, new[] { 1.9f, 3.3f }, 39, "hi", false, new[] { "0", "1" }),
new InputData(3, new[] { 3f, 3f }, 4, "hello", true, new[] { "c", "d" }),
new InputData(0, new[] { 1f, 1f }, 1, "hi", true, new[] { "zero", "one" }),
new InputData(30.4f, new[] { 10f, 4f }, 9, "bye", true, new[] { "e", "f" }),
new InputData(5.6f, new[] { 1.1f, 2.2f }, 0, "hey", false, new[] { "g", "h" }),
};
// Convert training data to IDataView.
var dataview = mlContext.Data.LoadFromEnumerable(samples);
// A pipeline that applies various expressions to the input columns.
var pipeline = mlContext.Transforms.Expression("Expr1", "(x,y)=>log(y)+x",
nameof(InputData.FloatColumn), nameof(InputData.FloatVectorColumn))
.Append(mlContext.Transforms.Expression("Expr2", "(b,s,i)=>b ? len(s) : i",
nameof(InputData.BooleanColumn), nameof(InputData.StringVectorColumn), nameof(InputData.IntColumn)))
.Append(mlContext.Transforms.Expression("Expr3", "(s,f1,f2,i)=>len(concat(s,\"a\"))+f1+f2+i",
nameof(InputData.StringColumn), nameof(InputData.FloatVectorColumn), nameof(InputData.FloatColumn), nameof(InputData.IntColumn)))
.Append(mlContext.Transforms.Expression("Expr4", "(x,y)=>cos(x+pi())*y",
nameof(InputData.FloatColumn), nameof(InputData.IntColumn)));
// The transformed data.
var transformedData = pipeline.Fit(dataview).Transform(dataview);
// Now let's take a look at what this concatenation did.
// We can extract the newly created column as an IEnumerable of
// TransformedData.
var featuresColumn = mlContext.Data.CreateEnumerable<TransformedData>(
transformedData, reuseRowObject: false);
// And we can write out a few rows
Console.WriteLine($"Features column obtained post-transformation.");
foreach (var featureRow in featuresColumn)
{
Console.Write(string.Join(" ", featureRow.Expr1));
Console.Write(" ");
Console.Write(string.Join(" ", featureRow.Expr2));
Console.Write(" ");
Console.Write(string.Join(" ", featureRow.Expr3));
Console.Write(" ");
Console.WriteLine(featureRow.Expr4);
}
// Expected output:
// Features column obtained post-transformation.
// 0.5 - 1.109438 4 3 7.5 6.7 - 2.63274768567112
// - 1.447237 NaN 2 2 6.8 3.2 1.80814432479224
// 1.941854 2.493922 39 39 45.2 46.6 - 10.4324561082543
// 4.098612 4.098612 1 1 16 16 3.95996998640178
// 0 0 4 3 5 5 - 1
// 32.70258 31.78629 1 1 53.4 47.4 - 4.74149076052604
// 5.69531 6.388457 0 0 10.7 11.8 0
}
private class InputData
{
public float FloatColumn;
[VectorType(3)]
public float[] FloatVectorColumn;
public int IntColumn;
public string StringColumn;
public bool BooleanColumn;
[VectorType(2)]
public string[] StringVectorColumn;
public InputData(float f, float[] fv, int i, string s, bool b, string[] sv)
{
FloatColumn = f;
FloatVectorColumn = fv;
IntColumn = i;
StringColumn = s;
BooleanColumn = b;
StringVectorColumn = sv;
}
}
private sealed class TransformedData
{
public float[] Expr1 { get; set; }
public int[] Expr2 { get; set; }
public float[] Expr3 { get; set; }
public double Expr4 { get; set; }
}
}
}