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Smiling

Smiling (Statistical Machine Intelligence and Learning Engine For Streaming Data) is an extension of Smile machine learning framework, that focuses on knowledge discovery from data streams.

For the original version of Smile, see project website, or read the description below

Original Smile

Join the chat at https://gitter.im/haifengl/smile Maven Central

Smile (Statistical Machine Intelligence and Learning Engine) is a fast and comprehensive machine learning, NLP, linear algebra, graph, interpolation, and visualization system in Java and Scala. With advanced data structures and algorithms, Smile delivers state-of-art performance.

Smile covers every aspect of machine learning, including classification, regression, clustering, association rule mining, feature selection, manifold learning, multidimensional scaling, genetic algorithms, missing value imputation, efficient nearest neighbor search, etc.

Smile is well documented and please check out the project website for programming guides and more information.

You can use the libraries through Maven central repository by adding the following to your project pom.xml file.

    <dependency>
      <groupId>com.github.haifengl</groupId>
      <artifactId>smile-core</artifactId>
      <version>1.4.0</version>
    </dependency>

For NLP, use the artifactId smile-nlp.

For Scala API, please use

    libraryDependencies += "com.github.haifengl" %% "smile-scala" % "1.4.0"

To enable machine optimized matrix computation, the users should add the dependency of smile-netlib:

    <dependency>
      <groupId>com.github.haifengl</groupId>
      <artifactId>smile-netlib</artifactId>
      <version>1.4.0</version>
    </dependency>

and also make their machine-optimized libblas3 (CBLAS) and liblapack3 (Fortran) available as shared libraries at runtime. This module employs the highly efficient netlib-java library.

OS X

Apple OS X requires no further setup as it ships with the veclib framework.

Linux

Generically-tuned ATLAS and OpenBLAS are available with most distributions and must be enabled explicitly using the package-manager. For example,

  • sudo apt-get install libatlas3-base libopenblas-base
  • sudo update-alternatives --config libblas.so
  • sudo update-alternatives --config libblas.so.3
  • sudo update-alternatives --config liblapack.so
  • sudo update-alternatives --config liblapack.so.3

However, these are only generic pre-tuned builds. If you have an Intel MKL licence, you could also create symbolic links from libblas.so.3 and liblapack.so.3 to libmkl_rt.so or use Debian's alternatives system.

Windows

The native_system builds expect to find libblas3.dll and liblapack3.dll on the %PATH% (or current working directory). Smile ships a prebuilt OpenBLAS. The users can also install vendor-supplied implementations, which may offer better performance.

Smile comes with an interactive shell. Download pre-packaged Smile from the releases page. In the home directory of Smile, type

    ./bin/smile

to enter the shell, which is based on Scala interpreter. So you can run any valid Scala expressions in the shell. In the simplest case, you can use it as a calculator. Besides, all high-level Smile operators are predefined in the shell. By default, the shell uses up to 4GB memory. If you need more memory to handle large data, use the option -J-Xmx. For example,

    ./bin/smile -J-Xmx8192M

You can also modify the configuration file ./conf/application.ini for the memory and other JVM settings. For detailed help, checkout the project website.

Smile implements the following major machine learning algorithms:

  • Classification Support Vector Machines, Decision Trees, AdaBoost, Gradient Boosting, Random Forest, Logistic Regression, Neural Networks, RBF Networks, Maximum Entropy Classifier, KNN, NaĂŻve Bayesian, Fisher/Linear/Quadratic/Regularized Discriminant Analysis.

  • Regression Support Vector Regression, Gaussian Process, Regression Trees, Gradient Boosting, Random Forest, RBF Networks, OLS, LASSO, Ridge Regression.

  • Feature Selection Genetic Algorithm based Feature Selection, Ensemble Learning based Feature Selection, Signal Noise ratio, Sum Squares ratio.

  • Clustering BIRCH, CLARANS, DBScan, DENCLUE, Deterministic Annealing, K-Means, X-Means, G-Means, Neural Gas, Growing Neural Gas, Hierarchical Clustering, Sequential Information Bottleneck, Self-Organizing Maps, Spectral Clustering, Minimum Entropy Clustering.

  • Association Rule & Frequent Itemset Mining FP-growth mining algorithm

  • Manifold learning IsoMap, LLE, Laplacian Eigenmap, t-SNE, PCA, Kernel PCA, Probabilistic PCA, GHA, Random Projection

  • Multi-Dimensional Scaling Classical MDS, Isotonic MDS, Sammon Mapping

  • Nearest Neighbor Search BK-Tree, Cover Tree, KD-Tree, LSH

  • Sequence Learning Hidden Markov Model, Conditional Random Field.

  • Natural Language Processing Sentence Splitter and Tokenizer, Bigram Statistical Test, Phrase Extractor, Keyword Extractor, Stemmer, POS Tagging, Relevance Ranking

Model Serialization

Most models support the Java Serializable interface (all classifiers do support Serializable interface) so that you can use them in Spark. For reading/writing the models in non-Java code, we suggest XStream to serialize the trained models. XStream is a simple library to serialize objects to XML and back again. XStream is easy to use and doesn't require mappings (actually requires no modifications to objects). Protostuff is a nice alternative that supports forward-backward compatibility (schema evolution) and validation. Beyond XML, Protostuff supports many other formats such as JSON, YAML, protobuf, etc. For some predictive models, we look forward to supporting PMML (Predictive Model Markup Language), an XML-based file format developed by the Data Mining Group.

Smile Scala API provides read(), read.xstream(), write(), and write.xstream() functions in package smile.io.

SmilePlot

Smile also has a Swing-based data visualization library SmilePlot, which provides scatter plot, line plot, staircase plot, bar plot, box plot, histogram, 3D histogram, dendrogram, heatmap, hexmap, QQ plot, contour plot, surface, and wireframe. The class PlotCanvas provides builtin functions such as zoom in/out, export, print, customization, etc.

SmilePlot requires SwingX library for JXTable. But if your environment cannot use SwingX, it is easy to remove this dependency by using JTable.

To use SmilePlot, add the following to dependencies

    <dependency>
      <groupId>com.github.haifengl</groupId>
      <artifactId>smile-plot</artifactId>
      <version>1.4.0</version>
    </dependency>

Demo Gallery

Kernel PCA

Kernel PCA

IsoMap

IsoMap

MDS

Multi-Dimensional Scaling

SOM

SOM

Neural Network

Neural Network

SVM

SVM

Agglomerative Clustering

Agglomerative Clustering

X-Means

X-Means

DBScan

DBScan

Neural Gas

Neural Gas

Wavelet

Wavelet

Mixture

Exponential Family Mixture

Tutorial

This tutorial shows how to use the Smile Java API for predictive modeling (classification and regression). It includes loading data, training and testing the model, and applying the model. If you use Scala, we strongly recommend the new high level Scala API, which is similar to R and Matlab. The programming guide with Scala API is available at project website.

Load Data

Most Smile algorithms take simple double[] as input so you can use your favorite methods or library to import the data as long as the samples are in double arrays. To make life easier, Smile does provide a couple of parsers for popular data formats, such as Weka's ARFF files, LibSVM's file format, delimited text files, and binary sparse data. These classes are in the package smile.data.parser. The package smile.data.parser.microarray also provides several parsers for microarray gene expression datasets, including GCT, PCL, RES, and TXT files. In the following example, we use the ARFF parser to load the weather dataset:

ArffParser arffParser = new ArffParser();
arffParser.setResponseIndex(4);
AttributeDataset weather = arffParser.parse(new FileInputStream("data/weka/weather.nominal.arff"));
double[][] x = weather.toArray(new double[weather.size()][]);
int[] y = weather.toArray(new int[weather.size()]);

Note that the data file weather.nominal.arff is in Smile distribution package. After unpacking the package, there is a lot of testing data in the directory of $smile/data, where $smile is the the root of Smile package.

In the second line, we use setResponseIndex to set the column index (starting at 0) of the dependent/response variable. In supervised learning, we need a response variable for each sample to train the model. Basically, it is the y in the mathematical model. For classification, it is the class label. For regression, it is of real value. Without setting it, the data assumes no response variable. In that case, the data can be used for testing or unsupervised learning.

The parse method can take a URI, File, path string, or InputStream as an input argument. And it returns an AttributeDataset object, which is a dataset of a number of attributes. All attribute values are stored as double even if the attribute may be nominal, ordinal, string, or date. The first call of toArray taking a double[][] argument fills the array with all the parsed data and returns it, of which each row is a sample/object. The second call of toArray taking an int array fills it with the class labels of the samples and then returns it.

The AttributeDataset.attributes method returns the list of Attribute objects in the dataset. The Attribute object contains the type information (and optional weight), which is needed in some algorithms (e.g. decision trees). The Attribute object also contains variable name and description, which are useful in the output or UI.

Similar to ArffParser, we can also use the DelimitedTextParser class to parse plain delimited text files. By default, the parser expects a white-space-separated-values file. Each line in the file corresponds to a row in the table. Within a line, fields are separated by white spaces, each field belonging to one table column. This class can also be used to read other text tabular files by setting the delimiter character such as ','. The file may contain comment lines (starting with '%') and missing values (indicated by placeholder '?'), which can both be parameterized.

DelimitedTextParser parser = new DelimitedTextParser();
parser.setResponseIndex(new NominalAttribute("class"), 0);
AttributeDataset usps = parser.parse("USPS Train", new FileInputStream("data/usps/zip.train"));

where the setResponseIndex also takes an extra parameter about the attribute of the response variable. Because this is a classification problem, we set it to a NominalAttribute with name "class". In case of regression, we should use NumericAttribute instead.

If your input data contains different types of attributes (e.g. NumericAttribute, NominalAttribute, StringAttribute, DateAttribute, etc), you should pass an array of Attribute[] to the constructor of DelimitedTextParser to indicate the data types of each column. By default, DelimitedTextParser assumes all columns as NumericAttribute.

Train The Model

Smile implements a variety of classification and regression algorithms. In what follows, we train a support vector machine (SVM) on the USPS zip code handwriting dataset. The SVM employs a Gaussian kernel and one-to-one strategy as this is a multi-class problem. Different from LibSVM or other popular SVM library, Smile implements an online learning algorithm for training SVM. The method learn trains the SVM with the given dataset for one epoch. The caller may call this method multiple times to obtain better accuracy although one epoch is usually sufficient. Note that after calling learn, we need to call the finish method, which processes support vectors until they converge. As it is an online algorithm, the user may update the model anytime by calling learn even after calling the finish method. In the example, we show another way of learning by working on single sample. As shown in the example, we simply call the predict method on a testing sample. Both learn and predict methods are generic for all classification and regression algorithms.

DelimitedTextParser parser = new DelimitedTextParser();
parser.setResponseIndex(new NominalAttribute("class"), 0);
try {
    AttributeDataset train = parser.parse("USPS Train", new FileInputStream("/data/usps/zip.train"));
    AttributeDataset test = parser.parse("USPS Test", new FileInputStream("/data/usps/zip.test"));

    double[][] x = train.toArray(new double[train.size()][]);
    int[] y = train.toArray(new int[train.size()]);
    double[][] testx = test.toArray(new double[test.size()][]);
    int[] testy = test.toArray(new int[test.size()]);
            
    SVM<double[]> svm = new SVM<double[]>(new GaussianKernel(8.0), 5.0, Math.max(y)+1, SVM.Multiclass.ONE_VS_ONE);
    svm.learn(x, y);
    svm.finish();
            
    int error = 0;
    for (int i = 0; i < testx.length; i++) {
        if (svm.predict(testx[i]) != testy[i]) {
            error++;
        }
    }

    System.out.format("USPS error rate = %.2f%%\n", 100.0 * error / testx.length);
            
    System.out.println("USPS one more epoch...");
    for (int i = 0; i < x.length; i++) {
        int j = Math.randomInt(x.length);
        svm.learn(x[j], y[j]);
    }
            
    svm.finish();

    error = 0;
    for (int i = 0; i < testx.length; i++) {
        if (svm.predict(testx[i]) != testy[i]) {
            error++;
        }
    }
    System.out.format("USPS error rate = %.2f%%\n", 100.0 * error / testx.length);
} catch (Exception ex) {
    System.err.println(ex);
}

As aforementioned, tree based methods need the type information of attributes. In the next example, we train an AdaBoost model on the weather dataset.

ArffParser arffParser = new ArffParser();
arffParser.setResponseIndex(4);
AttributeDataset weather = arffParser.parse(new FileInputStream("/data/weka/weather.nominal.arff"));
double[][] x = weather.toArray(new double[weather.size()][]);
int[] y = weather.toArray(new int[weather.size()]);

AdaBoost forest = new AdaBoost(weather.attributes(), x, y, 200, 4);

In the example, we set the number of trees to 200 and the maximum number of leaf nodes in the trees to 4, which works as a regularization control.

Model Validation

In the example of USPS, we have both training and test datasets. However, we frequently have only a single dataset for building models. For model validation, Smile provide LOOCV (leave-one-out cross validation), cross validation, and bootstrap in the package smile.validation. Additionally, the package also has various measures to evaluate classification, regression, and clustering. For example, we have accuracy, fallout, FDR, F-measure (F1 score or F-score), precision, recall, sensitivity, specificity for classification; absolute deviation, MSE, RMSE, RSS for regression; rand index, adjust rand index for clustering. The following is an example how to use LOOCV.

double[][] x = weather.toArray(new double[weather.size()][]);
int[] y = weather.toArray(new int[weather.size()]);

int n = x.length;
LOOCV loocv = new LOOCV(n);
int error = 0;
for (int i = 0; i < n; i++) {
    double[][] trainx = Math.slice(x, loocv.train[i]);
    int[] trainy = Math.slice(y, loocv.train[i]);
                
    AdaBoost forest = new AdaBoost(weather.attributes(), trainx, trainy, 200, 4);
    if (y[loocv.test[i]] != forest.predict(x[loocv.test[i]]))
        error++;
}
            
System.out.println("Decision Tree error = " + error);

Use The Trained Model

All classifiers in Smile implement the following interface.

public interface Classifier<T> {
    public int predict(T x);
    public int predict(T x, double[] posteriori);
}

To use the trained model, we can apply the method predict on a new sample. Besides just returning the class label, many methods (e.g. neural networks) can also output the posteriori probabilities of each class.

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