NoSoliciting/NoSoliciting.Trainer/Program.cs

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7.0 KiB
C#
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using System;
using System.Collections.Generic;
using System.Globalization;
using System.IO;
using System.Linq;
using ConsoleTables;
using CsvHelper;
using CsvHelper.Configuration;
using Microsoft.ML;
using Microsoft.ML.Data;
using Microsoft.ML.Transforms.Text;
using NoSoliciting.Interface;
using NoSoliciting.Internal.Interface;
namespace NoSoliciting.Trainer {
internal static class Program {
private static void Main(string[] args) {
var full = args[0] == "create";
var ctx = new MLContext(1);
List<Data> records;
using (var fileStream = new FileStream("../../../data.csv", FileMode.Open)) {
using var stream = new StreamReader(fileStream);
using var csv = new CsvReader(stream, new CsvConfiguration(CultureInfo.InvariantCulture) {
HeaderValidated = null,
});
records = csv
.GetRecords<Data>()
.OrderBy(rec => rec.Category)
.ThenBy(rec => rec.Channel)
.ThenBy(rec => rec.Message)
.ToList();
}
using (var fileStream = new FileStream("../../../data.csv", FileMode.Create)) {
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using var stream = new StreamWriter(fileStream);
using var csv = new CsvWriter(stream, new CsvConfiguration(CultureInfo.InvariantCulture) {
NewLine = "\n",
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});
csv.WriteRecords(records);
}
var classes = new Dictionary<string, uint>();
foreach (var record in records) {
// keep track of how many message of each category we have
if (!classes.ContainsKey(record.Category!)) {
classes[record.Category] = 0;
}
classes[record.Category] += 1;
}
// calculate class weights
var weights = new Dictionary<string, float>();
foreach (var (category, count) in classes) {
var nSamples = (float) records.Count;
var nClasses = (float) classes.Count;
var nSamplesJ = (float) count;
var w = nSamples / (nClasses * nSamplesJ);
weights[category] = w;
}
var df = ctx.Data.LoadFromEnumerable(records);
var ttd = ctx.Data.TrainTestSplit(df, 0.2, seed: 1);
var compute = new Data.ComputeContext(weights);
var normalise = new Data.Normalise();
ctx.ComponentCatalog.RegisterAssembly(typeof(Data).Assembly);
var pipeline = ctx.Transforms.Conversion.MapValueToKey("Label", nameof(Data.Category))
.Append(ctx.Transforms.CustomMapping(compute.GetMapping(), "Compute"))
.Append(ctx.Transforms.CustomMapping(normalise.GetMapping(), "Normalise"))
.Append(ctx.Transforms.Text.NormalizeText("MsgNormal", nameof(Data.Normalise.Normalised.NormalisedMessage), keepPunctuations: false))
.Append(ctx.Transforms.Text.TokenizeIntoWords("MsgTokens", "MsgNormal"))
.Append(ctx.Transforms.Text.RemoveDefaultStopWords("MsgNoDefStop", "MsgTokens"))
.Append(ctx.Transforms.Text.RemoveStopWords("MsgNoStop", "MsgNoDefStop",
"discord",
"lgbt",
"lgbtq",
"lgbtqia",
"http",
"https",
"18"
))
.Append(ctx.Transforms.Conversion.MapValueToKey("MsgKey", "MsgNoStop"))
.Append(ctx.Transforms.Text.ProduceNgrams("MsgNgrams", "MsgKey", weighting: NgramExtractingEstimator.WeightingCriteria.Tf))
.Append(ctx.Transforms.NormalizeLpNorm("FeaturisedMessage", "MsgNgrams"))
.Append(ctx.Transforms.Conversion.ConvertType("CPartyFinder", "PartyFinder"))
.Append(ctx.Transforms.Conversion.ConvertType("CShout", "Shout"))
.Append(ctx.Transforms.Conversion.ConvertType("CTrade", "ContainsTradeWords"))
.Append(ctx.Transforms.Conversion.ConvertType("CSketch", "ContainsSketchUrl"))
.Append(ctx.Transforms.Conversion.ConvertType("HasWard", "ContainsWard"))
.Append(ctx.Transforms.Conversion.ConvertType("HasPlot", "ContainsPlot"))
.Append(ctx.Transforms.Conversion.ConvertType("HasNumbers", "ContainsHousingNumbers"))
.Append(ctx.Transforms.Concatenate("Features", "FeaturisedMessage", "CPartyFinder", "CShout", "CTrade", "HasWard", "HasPlot", "HasNumbers", "CSketch"))
.Append(ctx.MulticlassClassification.Trainers.SdcaMaximumEntropy(exampleWeightColumnName: "Weight"))
.Append(ctx.Transforms.Conversion.MapKeyToValue("PredictedLabel"));
var train = full ? df : ttd.TrainSet;
var model = pipeline.Fit(train);
if (full) {
ctx.Model.Save(model, train.Schema, @"../../../model.zip");
}
var testPredictions = model.Transform(ttd.TestSet);
var eval = ctx.MulticlassClassification.Evaluate(testPredictions);
var predEngine = ctx.Model.CreatePredictionEngine<Data, Prediction>(model);
var slotNames = new VBuffer<ReadOnlyMemory<char>>();
predEngine.OutputSchema["Score"].GetSlotNames(ref slotNames);
var names = slotNames.DenseValues()
.Select(column => column.ToString())
.ToList();
var cols = new string[1 + names.Count];
cols[0] = "";
for (var j = 0; j < names.Count; j++) {
cols[j + 1] = names[j];
}
var table = new ConsoleTable(cols);
for (var i = 0; i < names.Count; i++) {
var name = names[i];
var confuse = eval.ConfusionMatrix.Counts[i];
var row = new object[1 + confuse.Count];
row[0] = name;
for (var j = 0; j < confuse.Count; j++) {
row[j + 1] = confuse[j];
}
table.AddRow(row);
}
Console.WriteLine(table.ToString());
Console.WriteLine($"Log loss : {eval.LogLoss * 100}");
Console.WriteLine($"Macro acc: {eval.MacroAccuracy * 100}");
Console.WriteLine($"Micro acc: {eval.MicroAccuracy * 100}");
if (full) {
return;
}
while (true) {
var msg = Console.ReadLine()!.Trim();
var parts = msg.Split(' ', 2);
ushort.TryParse(parts[0], out var channel);
var input = new Data(channel, parts[1]);
var pred = predEngine.Predict(input);
Console.WriteLine(pred.Category);
for (var i = 0; i < names.Count; i++) {
Console.WriteLine($" {names[i]}: {pred.Probabilities[i] * 100}");
}
}
}
}
}