I am new to machine learning and ML.NET. I want to solve a task about Excel column identification.

Columns in Excel like 序号, 编号, 编码, 名称, 项目名称, and for each column, there is a corresponding field name as following:


Column FieldName
序号 OrdCode
编号 OrdCode
编码 OrdCode
名称 Name
项目名称 Name

Each field may have one or more than one column names, such as 序号, 编号, 编码 for OrdCode. And the task is to try to identify or find the corresponding field name for an incoming column.

Based on the above dataset, I use ML.NET, and want to predict the right field for columns that are read from an Excel file.

I use Naive Bayes algorithm. The code:

public class Program
    private static readonly string _dataPath = Path.Combine(Environment.CurrentDirectory, "Data", "Column_Field.csv");

    private static void Main(string[] args)
        MLContext mlContext = new MLContext();

        IDataView dataView = mlContext.Data.LoadFromTextFile<ColumnInfo>(_dataPath, hasHeader: true, separatorChar: '\t');

        var pipeline = mlContext.Transforms.Conversion.MapValueToKey(inputColumnName: "Label", outputColumnName: "Label")
            .Append(mlContext.Transforms.Text.FeaturizeText(outputColumnName: "Features", inputColumnName: "Column"))

        var model = pipeline.Fit(dataView);

        // evaluate
        //List<ColumnInfo> dataForEvaluation = new List<ColumnInfo>()
        //    new ColumnInfo{ Column="名称", FieldName="Name" },
        //    new ColumnInfo{ Column="<名称>", FieldName="Name" },
        //    new ColumnInfo{ Column="序号", FieldName="OrdName" },

        //IDataView testDataSet = mlContext.Data.LoadFromEnumerable(dataForEvaluation);
        //var metrics = mlContext.MulticlassClassification.Evaluate(testDataSet);

        //Console.WriteLine($"MicroAccuracy: {metrics.MicroAccuracy:P2}");
        //Console.WriteLine($"MicroAccuracy: {metrics.MicroAccuracy:P2}");

        // predict
        var dataForPredictation = new List<ColumnInfo>();

        dataForPredictation.Add(new ColumnInfo { Column = "名称" });
        dataForPredictation.Add(new ColumnInfo { Column = "ABC" });
        dataForPredictation.Add(new ColumnInfo { Column = "名" });

        var engine = mlContext.Model.CreatePredictionEngine<ColumnInfo, Predication>(model);

        foreach (var data in dataForPredictation)
            var result = engine.Predict(data);
            Console.WriteLine($"{data.Column}: \t{result.FieldName}");


public class ColumnInfo
    public string Column { get; set; }

    [LoadColumn(1), ColumnName("Label")]
    public string FieldName { get; set; }

public class Predication
    public string FieldName { get; set; }

However, the result is not as expected.


名称:   OrdCode
ABC:    OrdCode
名:     OrdCode

So what is wrong with the code? I suppose the problem may be lacking of proper processing the data in the pipeline before training.



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