I have set LightSIDE plugin and can run properly, but I don't know why I can't save my data to empty file? This is what a simple structure I made.

enter image description here

  1. Activity is the list data that need to be categorize.
  2. I have 3 categories and each of them have each type.
  3. I already define each category with specific list of Words. For example : Food ({Sushi, Food, Japan}, {Cap Jay, Food, Chinese}, {Jog, Sport, Running}, ...)

And this is how I save my prediction with LightSIDE.

public void predictSectionType(String[] sections, List<String> activityList) {
        LightSideService currentLightsideHelper = new LightSideService();
        Recipe newRecipe;

        // Initialize SIDEPlugin
        currentLightsideHelper.initSIDEPlugin();

        try { 
            // Load Recipe with Extracted Features & Trained Models
            ClassLoader myClassLoader = getClass().getClassLoader();
            newRecipe = ConverterControl.readFromXML(new InputStreamReader(myClassLoader.getResourceAsStream("static/lightsideTrainingResult/trainingData.xml")));

            // Predict Result Data
            Recipe recipeToPredict = currentLightsideHelper.loadNewDocumentsFromCSV(sections); // DocumentList & Recipe Created
            currentLightsideHelper.predictLabels(recipeToPredict, newRecipe);


        } catch (FileNotFoundException e) {
            e.printStackTrace();
        } catch (IOException e) {
            e.printStackTrace();
        }
    }

I have class of LightSideService as Summary Class of LightSIDE function.

public class LightSideService {

    // Extract Features Parameters
    final String featureTableName = "1Grams";
    final int featureThreshold = 2;
    final String featureAnnotation = "Code";
    final Type featureType = Type.NOMINAL;

    // Build Models Parameters
    final String trainingResultName = "Bayes_1Grams";

    // Predict Labels Parameters
    final String predictionColumnName = featureAnnotation + "_Prediction";
    final boolean showMaxScore = false;
    final boolean showDists = true;
    final boolean overwrite = false;
    final boolean useEvaluation = false;

    public DocumentListTableModel model = new DocumentListTableModel(null);

    public Map<String, Serializable> validationSettings = new TreeMap<String, Serializable>();
    public Map<FeaturePlugin, Boolean> featurePlugins = new HashMap<FeaturePlugin, Boolean>();
    public Map<LearningPlugin, Boolean> learningPlugins = new HashMap<LearningPlugin, Boolean>();
    public Collection<ModelMetricPlugin> modelEvaluationPlugins = new ArrayList<ModelMetricPlugin>();
    public Map<WrapperPlugin, Boolean> wrapperPlugins = new HashMap<WrapperPlugin, Boolean>();

    // Initialize Data ==================================================

    public void initSIDEPlugin() {              
        SIDEPlugin[] featureExtractors = PluginManager.getSIDEPluginArrayByType("feature_hit_extractor");
        boolean selected = true;
        for (SIDEPlugin fe : featureExtractors) {
            featurePlugins.put((FeaturePlugin) fe, selected);
            selected = false;
        }
        SIDEPlugin[] learners = PluginManager.getSIDEPluginArrayByType("model_builder");
        for (SIDEPlugin le : learners) {
            learningPlugins.put((LearningPlugin) le, true);
        }
        SIDEPlugin[] tableEvaluations = PluginManager.getSIDEPluginArrayByType("model_evaluation");
        for (SIDEPlugin fe : tableEvaluations) {
            modelEvaluationPlugins.add((ModelMetricPlugin) fe);
        }
        SIDEPlugin[] wrappers = PluginManager.getSIDEPluginArrayByType("learning_wrapper");
        for (SIDEPlugin wr : wrappers) {
            wrapperPlugins.put((WrapperPlugin) wr, false);
        }
    }

    //Used to Train Models, adjust parameters according to model
    public void initValidationSettings(Recipe currentRecipe) {
        validationSettings.put("testRecipe", currentRecipe);
        validationSettings.put("testSet", currentRecipe.getDocumentList());
        validationSettings.put("annotation", "Age");
        validationSettings.put("type", "CV");
        validationSettings.put("foldMethod", "AUTO");
        validationSettings.put("numFolds", 10);
        validationSettings.put("source", "RANDOM");
        validationSettings.put("test", "true");
    }

    // Load CSV Doc ==================================================

    public Recipe loadNewDocumentsFromCSV(String filePath) {
        DocumentList testDocs;

        testDocs = chooseDocumentList(filePath);

        if (testDocs != null) {
            testDocs.guessTextAndAnnotationColumns();
            Recipe currentRecipe = Recipe.fetchRecipe();
            currentRecipe.setDocumentList(testDocs);
            return currentRecipe;
        }
        return null;
    }

    public Recipe loadNewDocumentsFromCSV(String[] rootCauseList) {
        DocumentList testDocs;

        testDocs = chooseDocumentList(rootCauseList);

        if (testDocs != null) {
            testDocs.guessTextAndAnnotationColumns();
            Recipe currentRecipe = Recipe.fetchRecipe();
            currentRecipe.setDocumentList(testDocs);
            return currentRecipe;
        }
        return null;
    }

    protected DocumentList chooseDocumentList(String filePath) {
        TreeSet<String> docNames = new TreeSet<String>();
        docNames.add(filePath);

        try {
            DocumentList testDocs;

            Charset encoding = Charset.forName("UTF-8");

            {
                testDocs = ImportController.makeDocumentList(docNames, encoding);
            }

            return testDocs;
        } catch (FileNotFoundException e) {
            e.printStackTrace();
        } catch (Exception e) {
            e.printStackTrace();
        }
        return null;
    }

    protected DocumentList chooseDocumentList(String[] rootCauseList) {
        try {
            DocumentList testDocs;

            testDocs = new DocumentList();
            testDocs.setName("TestData.csv");

            List<String> codes = new ArrayList();
            List<String> roots = new ArrayList();
            for (String s : rootCauseList) {
                codes.add("");
                roots.add((s != null) ? s : "");
            }

            testDocs.addAnnotation("Code", codes, false);
            testDocs.addAnnotation("Root Cause Failure Description", roots, false);

            return testDocs;
        } catch (Exception e) {
            e.printStackTrace();
        }
        return null;
    }

    // Save/Load XML ==================================================

    public void saveRecipeToXml(Recipe currentRecipe, String filePath) {
        File f = new File(filePath);
        try {
            ConverterControl.writeToXML(f, currentRecipe);
        } catch (Exception e) {
            e.printStackTrace();
        }
    }

    public Recipe loadRecipeFromXml(String filePath) throws FileNotFoundException, IOException {
        Recipe currentRecipe = ConverterControl.loadRecipe(filePath);
        return currentRecipe;
    }

    // Extract Features ==================================================

    public Recipe prepareBuildFeatureTable(Recipe currentRecipe) {
        // Add Feature Plugins
        Collection<FeaturePlugin> plugins = new TreeSet<FeaturePlugin>();
        for (FeaturePlugin plugin : featurePlugins.keySet()) {
            String pluginString = plugin.toString();
            if (pluginString == "Basic Features" || pluginString == "Character N-Grams") {
                plugins.add(plugin);
            }
        }

        // Generate Plugin into Recipe
        currentRecipe = Recipe.addPluginsToRecipe(currentRecipe, plugins);

        // Setup Plugin configurations
        OrderedPluginMap currentOrderedPluginMap = currentRecipe.getExtractors();
        for (SIDEPlugin plugin : currentOrderedPluginMap.keySet()) {
            String pluginString = plugin.toString();
            Map<String, String> currentConfigurations = currentOrderedPluginMap.get(plugin);

            if (pluginString == "Basic Features") {
                for (String s : currentConfigurations.keySet()) {
                    if (s == "Unigrams" || s == "Bigrams" || s == "Trigrams" ||
                        s == "Count Occurences" || s == "Normalize N-Gram Counts" || 
                        s == "Stem N-Grams" || s == "Skip Stopwords in N-Grams") {
                        currentConfigurations.put(s, "true");
                    } else {
                        currentConfigurations.put(s, "false");
                    }
                }
            } else if (pluginString == "Character N-Grams") {
                for (String s : currentConfigurations.keySet()) {
                    if (s == "Include Punctuation") {
                        currentConfigurations.put(s, "true");
                    } else if (s == "minGram") {
                        currentConfigurations.put(s, "3");
                    } else if (s == "maxGram") {
                        currentConfigurations.put(s, "4");
                    }
                }
                currentConfigurations.put("Extract Only Within Words", "true");
            }
        }

        // Build FeatureTable
        currentRecipe = buildFeatureTable(currentRecipe, featureTableName, featureThreshold, featureAnnotation, featureType);

        return currentRecipe;
    }

    protected Recipe buildFeatureTable(Recipe currentRecipe, String name,   int threshold, String annotation, Type type) {
        FeaturePlugin activeExtractor = null;

        try {
            Collection<FeatureHit> hits = new HashSet<FeatureHit>();
            for (SIDEPlugin plug : currentRecipe.getExtractors().keySet()) {
                activeExtractor = (FeaturePlugin) plug;
                hits.addAll(activeExtractor.extractFeatureHits(currentRecipe.getDocumentList(), currentRecipe.getExtractors().get(plug)));
            }

            FeatureTable ft = new FeatureTable(currentRecipe.getDocumentList(), hits, threshold, annotation, type);
            ft.setName(name);
            currentRecipe.setFeatureTable(ft);
        } catch (Exception e) {
            System.err.println("Feature Extraction Failed");
            e.printStackTrace();
        }

        return currentRecipe;
    }

    // Build Models ==================================================

    public Recipe prepareBuildModel(Recipe currentRecipe) {
        try {
            // Get Learner Plugins
            LearningPlugin learner = null;
            for (LearningPlugin plugin : learningPlugins.keySet()) {
                /* if (plugin.toString() == "Naive Bayes") */
                if (plugin.toString() == "Logistic Regression") {
                    learner = plugin;
                }
            }

            if (Boolean.TRUE.toString().equals(validationSettings.get("test"))) {
                if (validationSettings.get("type").equals("CV")) {
                    validationSettings.put("testSet", currentRecipe.getDocumentList());
                }
            }

            Map<String, String> settings = learner.generateConfigurationSettings();

            currentRecipe = Recipe.addLearnerToRecipe(currentRecipe, learner, settings);
            currentRecipe.setValidationSettings(new TreeMap<String, Serializable>(validationSettings));

            for (WrapperPlugin wrap : wrapperPlugins.keySet()) {
                if (wrapperPlugins.get(wrap)) {
                    currentRecipe.addWrapper(wrap, wrap.generateConfigurationSettings());
                }
            }

            buildModel(currentRecipe, validationSettings);
        } catch (Exception e) {
            e.printStackTrace();
        }
        return currentRecipe;
    }

    protected void buildModel(Recipe currentRecipe,
            Map<String, Serializable> validationSettings) {
        try {
            FeatureTable currentFeatureTable = currentRecipe.getTrainingTable();
            if (currentRecipe != null) {
                TrainingResult results = null;
                /*
                 * if (validationSettings.get("type").equals("SUPPLY")) {
                 * DocumentList test = (DocumentList)
                 * validationSettings.get("testSet"); FeatureTable
                 * extractTestFeatures = prepareTestFeatureTable(currentRecipe,
                 * validationSettings, test);
                 * validationSettings.put("testFeatureTable",
                 * extractTestFeatures);
                 * 
                 * // if we've already trained the exact same model, don't // do
                 * it again. Just evaluate. Recipe cached =
                 * checkForCachedModel(); if (cached != null) { results =
                 * evaluateUsingCachedModel(currentFeatureTable,
                 * extractTestFeatures, cached, currentRecipe); } }
                 */

                if (results == null) {
                    results = currentRecipe.getLearner().train(currentFeatureTable, currentRecipe.getLearnerSettings(), validationSettings, currentRecipe.getWrappers());
                }

                if (results != null) {
                    currentRecipe.setTrainingResult(results);
                    results.setName(trainingResultName);

                    currentRecipe.setLearnerSettings(currentRecipe.getLearner().generateConfigurationSettings());
                    currentRecipe.setValidationSettings(new TreeMap<String, Serializable>(validationSettings));
                }
            }
        } catch (Exception e) {
            e.printStackTrace();
        }
    }

    protected static FeatureTable prepareTestFeatureTable(Recipe recipe, Map<String, Serializable> validationSettings, DocumentList test) {
        prepareDocuments(recipe, validationSettings, test); // assigns classes, annotations.

        Collection<FeatureHit> hits = new TreeSet<FeatureHit>();
        OrderedPluginMap extractors = recipe.getExtractors();
        for (SIDEPlugin plug : extractors.keySet()) {
            Collection<FeatureHit> extractorHits = ((FeaturePlugin) plug).extractFeatureHits(test, extractors.get(plug));
            hits.addAll(extractorHits);
        }
        FeatureTable originalTable = recipe.getTrainingTable();
        FeatureTable ft = new FeatureTable(test, hits, 0, originalTable.getAnnotation(), originalTable.getClassValueType());
        for (SIDEPlugin plug : recipe.getFilters().keySet()) {
            ft = ((RestructurePlugin) plug).filterTestSet(originalTable, ft, recipe.getFilters().get(plug), recipe.getFilteredTable().getThreshold());
        }

        ft.reconcileFeatures(originalTable.getFeatureSet());

        return ft;

    }

    protected static Map<String, Serializable> prepareDocuments(Recipe currentRecipe, Map<String, Serializable> validationSettings, DocumentList test) throws IllegalStateException {
        DocumentList train = currentRecipe.getDocumentList();

        try {
            test.setCurrentAnnotation(currentRecipe.getTrainingTable().getAnnotation(), currentRecipe.getTrainingTable().getClassValueType());
            test.setTextColumns(new HashSet<String>(train.getTextColumns()));
            test.setDifferentiateTextColumns(train.getTextColumnsAreDifferentiated());

            Collection<String> trainColumns = train.allAnnotations().keySet();
            Collection<String> testColumns = test.allAnnotations().keySet();
            if (!testColumns.containsAll(trainColumns)) {
                ArrayList<String> missing = new ArrayList<String>(trainColumns);
                missing.removeAll(testColumns);
                throw new java.lang.IllegalStateException("Test set annotations do not match training set.\nMissing columns: " + missing);
            }

            validationSettings.put("testSet", test);
        } catch (Exception e) {
            e.printStackTrace();
            throw new java.lang.IllegalStateException("Could not prepare test set.\n" + e.getMessage(), e);
        }
        return validationSettings;
    }

    //Predict Labels ==================================================

    public void predictLabels(Recipe recipeToPredict, Recipe currentRecipe) {
        DocumentList newDocs = null;
        DocumentList originalDocs;
        if (useEvaluation) {
            originalDocs = recipeToPredict.getTrainingResult().getEvaluationTable().getDocumentList();

            TrainingResult results = currentRecipe.getTrainingResult();
            List<String> predictions = (List<String>) results.getPredictions();
            newDocs = addLabelsToDocs(predictionColumnName, showDists, overwrite, originalDocs, results, predictions, currentRecipe.getTrainingTable());
        } else {
            originalDocs = recipeToPredict.getDocumentList();

            Predictor predictor = new Predictor(currentRecipe, predictionColumnName);
            newDocs = predictor.predict(originalDocs, predictionColumnName, showDists, overwrite);
        }

        // Predict Labels result
        model.setDocumentList(newDocs);
    }

    protected DocumentList addLabelsToDocs(final String name, final boolean showDists, final boolean overwrite, DocumentList docs, TrainingResult results, List<String> predictions, FeatureTable currentFeatureTable) {
        Map<String, List<Double>> distributions = results.getDistributions();
        DocumentList newDocs = docs.clone();
        newDocs.addAnnotation(name, predictions, overwrite);
        if (distributions != null) {
            if (showDists) {
                for (String label : currentFeatureTable.getLabelArray()) {
                    List<String> dist = new ArrayList<String>();

                    for (int i = 0; i < predictions.size(); i++) {
                        dist.add(String.format("%.3f", distributions.get(label).get(i)));
                    }

                    newDocs.addAnnotation(name + "_" + label + "_score", dist, overwrite);
                }
            }
        }
        return newDocs;
    }

    // ==================================================
}
up vote 1 down vote accepted

David. It looks like the above replicates a lot of the functionality from the edu.cmu.side.recipe package. However, it doesn't look like your predictSectionType() method actually outputs the model's predictions anywhere.

If what you're trying to do is indeed to save predictions on new data using a trained model, check out the edu.cmu.side.recipe.Predictor class. It takes a trained model path as input, It's used by the scripts/predict.sh convenience script, but you could repurpose its main method if you needed to call it programmatically.

I hope this helps!

  • After tracing all the code, i just notice i didn't create Trained model first. Thank you. I'll check it first – David Vincent Sep 16 '16 at 4:33
  • The problem is, I don't have trained model, and its the reason why its always error. – David Vincent Sep 16 '16 at 10:42

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