Space: Apache Mahout (https://cwiki.apache.org/confluence/display/MAHOUT)
Page: Partial Implementation 
(https://cwiki.apache.org/confluence/display/MAHOUT/Partial+Implementation)


Edited by Marty Kube:
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h1. Introduction

This quick start page shows how to build a decision forest using the partial 
implementation. This tutorial also explains how to use the decision forest to 
classify new data.
Partial Decision Forests is a mapreduce implementation where each mapper builds 
a subset of the forest using only the data available in its partition. This 
allows building forests using large datasets as long as each partition can be 
loaded in-memory.

h1. Steps
h2. Download the data
* The current implementation is compatible with the UCI repository file format. 
In this example we'll use the NSL-KDD dataset because its large enough to show 
the performances of the partial implementation.
You can download the dataset here http://nsl.cs.unb.ca/NSL-KDD/
You can either download the full training set "KDDTrain+.ARFF", or a 20% subset 
"KDDTrain+_20Percent.ARFF" (we'll use the full dataset in this tutorial) and 
the test set "KDDTest+.ARFF".
* Open the train and test files and remove all the lines that begin with '@'. 
All those lines are at the top of the files. Actually you can keep those lines 
somewhere, because they'll help us describe the dataset to Mahout
* Put the data in HDFS: {code}
$HADOOP_HOME/bin/hadoop fs -mkdir testdata
$HADOOP_HOME/bin/hadoop fs -put <PATH TO DATA> testdata{code}

h2. Build the Job files
* In $MAHOUT_HOME/ run: {code}mvn clean install -DskipTests{code}

h2. Generate a file descriptor for the dataset: 
run the following command:
{code}
$HADOOP_HOME/bin/hadoop jar 
$MAHOUT_HOME/core/target/mahout-core-<VERSION>-job.jar 
org.apache.mahout.classifier.df.tools.Describe -p testdata/KDDTrain+.arff -f 
testdata/KDDTrain+.info -d N 3 C 2 N C 4 N C 8 N 2 C 19 N L
{code}
The "N 3 C 2 N C 4 N C 8 N 2 C 19 N L" string describes all the attributes of 
the data. In this cases, it means 1 numerical(N) attribute, followed by 3 
Categorical(C) attributes, ...L indicates the label. You can also use 'I' to 
ignore some attributes

h2. Run the example

{code}
$HADOOP_HOME/bin/hadoop jar 
$MAHOUT_HOME/examples/target/mahout-examples-<version>-job.jar 
org.apache.mahout.classifier.df.mapreduce.BuildForest 
-Dmapred.max.split.size=1874231 -d testdata/KDDTrain+.arff -ds 
testdata/KDDTrain+.info -sl 5 -p -t 100 -o nsl-forest
{code}
which builds 100 trees (-t argument) using the partial implementation (-p). 
Each tree is built using 5 random selected attribute per node (-sl argument) 
and the example outputs the decision tree in the "nsl-forest" directory (-o).
The number of partitions is controlled by the -Dmapred.max.split.size argument 
that indicates to Hadoop the max. size of each partition, in this case 1/10 of 
the size of the dataset. Thus 10 partitions will be used.
IMPORTANT: using less partitions should give better classification results, but 
needs a lot of memory. So if the Jobs are failing, try increasing the number of 
partitions.
* The example outputs the Build Time and the oob error estimation

{code}
10/03/13 17:57:29 INFO mapreduce.BuildForest: Build Time: 0h 7m 43s 582
10/03/13 17:57:33 INFO mapreduce.BuildForest: oob error estimate : 
0.002325895231517865
10/03/13 17:57:33 INFO mapreduce.BuildForest: Storing the forest in: 
nsl-forest/forest.seq
{code}

h2. Using the Decision Forest to Classify new data
run the following command:
{code}
$HADOOP_HOME/bin/hadoop jar 
$MAHOUT_HOME/examples/target/mahout-examples-<version>-job.jar 
org.apache.mahout.classifier.df.mapreduce.TestForest -i nsl-kdd/KDDTest+.arff 
-ds nsl-kdd/KDDTrain+.info -m nsl-forest -a -mr -o predictions
{code}
This will compute the predictions of "KDDTest+.arff" dataset (-i argument) 
using the same data descriptor generated for the training dataset (-ds) and the 
decision forest built previously (-m). Optionally (if the test dataset contains 
the labels of the tuples) run the analyzer to compute the confusion matrix 
(-a), and you can also store the predictions in a text file or a directory of 
text files(-o). Passing the (-mr) parameter will use Hadoop to distribute the 
classification.

* The example should output the classification time and the confusion matrix

{code}
10/03/13 18:08:56 INFO mapreduce.TestForest: Classification Time: 0h 0m 6s 355
10/03/13 18:08:56 INFO mapreduce.TestForest: 
=======================================================
Summary
-------------------------------------------------------
Correctly Classified Instances          :      17657       78.3224%
Incorrectly Classified Instances        :       4887       21.6776%
Total Classified Instances              :      22544

=======================================================
Confusion Matrix
-------------------------------------------------------
a       b       <--Classified as
9459    252      |  9711        a     = normal
4635    8198     |  12833       b     = anomaly
Default Category: unknown: 2
{code}

If the input is a single file then the output will be a single text file, in 
the above example 'predictions' would be one single file. If the input if a 
directory containing for example two files 'a.data' and 'b.data', then the 
output will be a directory 'predictions' containing two files 'a.data.out' and 
'b.data.out'

h2. Known Issues and limitations
The "Decision Forest" code is still "a work in progress", many features are 
still missing. Here is a list of some known issues:
* For now, the training does not support multiple input files. The input 
dataset must be one single file. Classifying new data does support multiple 
input files.
* The tree building is done when each mapper.close() method is called. Because 
the mappers don't refresh their state, the job can fail when the dataset is big 
and you try to build a large number of trees.

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