Example #1
0
def main(args):
    CREATE_INDIVIDUAL = False
    files = []

    if len(args) == 0:
        print "No input arguments. Use -h or --help for more info."
        exit()

    for argument in args:
        if argument in ["-h", "--help"]:
            print "Magazine creator assistant:"
            print "Two ways"
            print " 1) python args.py [input files] [destination file] --> all input files are joined into one destination file."
            print " 2) python args.py --nojoin [input files] --> each input file is saved as odt as {input_file}.odt"
            exit()
        elif argument in ["-n", "--nojoin"]:
            CREATE_INDIVIDUAL = True
        else:
            files.append(argument)

    if not CREATE_INDIVIDUAL:
        glob = OpenDocumentText()
        dest = files[-1]
        files = files[:-1]
        if files == []:
            print "ERROR: NO INPUT FILES. EXITING..."
            exit()

    c = 0
    for f in files:
        defs = FileParser(f).parse()
        ta = TemplateApplier(defs["TEMPLATE"], defs)
        xml = ta.get()
        addit = False
        if not CREATE_INDIVIDUAL and not c == len(files) - 1:
            addit = True
        obj = FileCreator(xml, addit).get()
        obj.text = obj.text
        if CREATE_INDIVIDUAL:
            doc = OpenDocumentText()
            for style in obj.styles:
                doc.styles.addElement(style)
            for t in obj.text:
                doc.text.addElement(t)
            doc.save(f + ".odt")
        else:
            for style in obj.styles:
                glob.styles.addElement(style)
            for t in obj.text:
                glob.text.addElement(t)
        c += 1
    if not CREATE_INDIVIDUAL:
        glob.save(dest)
from lib.NaiveBayesClassifier import NaiveBayesClassifier
from lib.FileParser import FileParser

fileParser = FileParser()


# cvs format
#fileParser.parseDBData("db_car.txt")
#fileParser.printDBData()

# weka format
fileParser.buildFileDescription("car.data", "db_car.txt")
fileParser.parseFileDescription("db_car.txt")
fileParser.parseCVSPatterns("car.data")
fileParser.parseCVS2Numeric("car_numeric.data")
fileParser.convertTestFileNumeric("car-prueba.data", "car-prueba_numeric.data")




classifier = NaiveBayesClassifier(fileParser)

classifier.train(fileParser.fvector, fileParser.label)
#classifier.printTables()


classifier.testFile("car-prueba.data")


#input_data = ['vhigh', 'vhigh', 2, 2, 'med', 'med', 'unacc']
#classifier.test(input_data)
from lib.NaiveBayesClassifier import NaiveBayesClassifier
from lib.FileParser import FileParser

fileParser = FileParser()


fileParser.parseFileDescription("db_tennis.txt")
#fileParser.printDBData()
fileParser.parseCVSPatterns("tennis.data")
#fileParser.printPatterns()

classifier = NaiveBayesClassifier(fileParser)

classifier.train(fileParser.fvector, fileParser.label)
#classifier.printTables()


################## VALIDACION

input_data = ['Sunny', 'Cool', 'High', 'Strong', 'No']
classifier.test(input_data)