728 lines
22 KiB
Python
728 lines
22 KiB
Python
# -*- coding: utf-8 -*-
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from datetime import datetime
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import draw
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import draw1
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import time
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import numpy as np
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import csv
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import sys
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import json
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import os.path
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import subprocess
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from textacy import Vectorizer, viz
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from miscellaneous import *
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import textacy
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from scipy import *
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import os
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csv.field_size_limit(sys.maxsize)
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FILEPATH = os.path.dirname(os.path.realpath(__file__)) + "/"
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# load config
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config_ini = FILEPATH + "config.ini"
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config = ConfigParser.ConfigParser()
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with open(config_ini) as f:
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config.read_file(f)
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def label2ID(label, labeldict):
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return labeldict.get(label, len(labeldict))
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def generate_lablelID_lines(textacyCorpus, labeldict):
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for doc in textacyCorpus:
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# generate [topic1, topic2....] tok1 tok2 tok3 out of corpi
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yield "[" + str(label2ID(doc.metadata["categoryName"], labeldict)) + "] " + doc.text
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"""
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def printvecotorization(de_corpus, ngrams=1, min_df=1, max_df=1.0, weighting='tf', named_entities=True):
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logprint(str("ngrams: {0}".format(ngrams)))
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logprint(str("min_df: {0}".format(min_df)))
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logprint(str("max_df: {0}".format(max_df)))
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logprint(str("named_entities: {0}".format(named_entities)))
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# printlog("vectorize corpi...")
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vectorizer = Vectorizer(weighting=weighting, min_df=min_df, max_df=max_df)
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terms_list = (doc.to_terms_list(ngrams=ngrams, named_entities=named_entities, as_strings=True) for doc in de_corpus)
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doc_term_matrix = vectorizer.fit_transform(terms_list)
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id2term = vectorizer.__getattribute__("id_to_term")
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for t in terms_list:
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print(t)
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logprint("doc_term_matrix: {0}".format(doc_term_matrix))
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logprint("id2term: {0}".format(id2term))
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"""
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def textacyTopicModeling(corpus,
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n_topics = 15, top_topic_words = 7, top_document_labels_per_topic = 5,
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ngrams = 1, min_df=1, max_df=1.0,
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topicModel='lda'):
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n_terms = int(n_topics * top_topic_words)
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sort_terms_by = 'seriation' # 'seriation', 'weight', 'index', 'alphabetical'
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rank_terms_by = 'corpus' # 'corpus', 'topic'
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logprint(
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"############### Topic Modeling {0} ###########################".format(
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topicModel))
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logprint(str("ngrams: {0}".format(ngrams)))
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logprint(str("min_df: {0}".format(min_df)))
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logprint(str("max_df: {0}".format(max_df)))
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logprint(str("n_topics: {0}".format(n_topics)))
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logprint("\n")
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start = time.time()
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# http://textacy.readthedocs.io/en/latest/api_reference.html#textacy.tm.topic_model.TopicModel.get_doc_topic_matrix
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weighting = ('tf' if topicModel == 'lda' else 'tfidf')
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#################### vectorize corpi ####################
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vectorizer = Vectorizer(weighting=weighting, min_df=min_df, max_df=max_df)
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terms_list = (doc.to_terms_list(ngrams=ngrams, named_entities=False, as_strings=True) for doc in corpus)
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doc_term_matrix = vectorizer.fit_transform(terms_list)
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id2term = vectorizer.__getattribute__("id_to_term")
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# printlog("terms_list: {0}".format(list(terms_list)))
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# printlog("doc_term_matrix: {0}".format(doc_term_matrix))
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##################### Initialize and train a topic model ##############################################
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model = textacy.tm.TopicModel(topicModel, n_topics=n_topics)
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model.fit(doc_term_matrix)
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doc_topic_matrix = model.transform(doc_term_matrix)
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for topic_idx, top_terms in model.top_topic_terms(vectorizer.id_to_term, top_n=top_topic_words):
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logprint('topic {0}: {1}'.format(topic_idx, " ".join(top_terms)))
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for topic_idx, top_docs in model.top_topic_docs(doc_topic_matrix, top_n=top_document_labels_per_topic):
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logprint(topic_idx)
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for j in top_docs:
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logprint(corpus[j].metadata['categoryName'])
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####################### termite plot ###################################################################
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grams_label = "uni" if ngrams == 1 else "bi"
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"""
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model.termite_plot(doc_term_matrix, id2term,
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n_terms=n_terms,
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sort_terms_by=sort_terms_by,
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rank_terms_by=rank_terms_by+'_weight',
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save= FILEPATH + "results/{}_{}_{}_{}_{}_{}.png".format(grams_label,topicModel,n_topics,n_terms,sort_terms_by,rank_terms_by))
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"""
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draw1.termite_plot(model,doc_term_matrix, id2term,
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n_terms=n_terms,
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sort_terms_by=sort_terms_by,
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rank_terms_by=rank_terms_by + '_weight',
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save=FILEPATH + "results/{}_{}_{}_{}_{}_{}.png".format(grams_label, topicModel, n_topics,
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n_terms, sort_terms_by, rank_terms_by))
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end = time.time()
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logprint("\n\n\nTime Elapsed Topic Modeling with {1}:{0} min\n\n".format((end - start) / 60, topicModel))
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def jgibbsLLDA_category(corpus, path2save_results, top_topic_words=7):
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start = time.time()
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jgibbsLLDA_root = FILEPATH + "java_LabledLDA/"
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LLDA_filepath = "{0}models/tickets/tickets.gz".format(jgibbsLLDA_root)
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# build dictionary of ticketcategories
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labelist = []
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for texdoc in corpus.get(lambda texdoc: texdoc.metadata["categoryName"] not in labelist):
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labelist.append(texdoc.metadata["categoryName"])
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labeldict = {k: v for v, k in enumerate(labelist)}
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reverse_labeldict = {v: k for k, v in labeldict.items()}
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#and save
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labeldict_path = FILEPATH + "results/labeldict.txt"
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with open(labeldict_path, 'w') as file:
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file.write(json.dumps(labeldict))
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n_topics = len(labeldict) #+1 #default-topic
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# create file with label_IDs (input for llda)
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textacy.fileio.write_file_lines(generate_lablelID_lines(corpus, labeldict), filepath=LLDA_filepath)
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# wait for file to exist
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while not os.path.exists(LLDA_filepath):
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time.sleep(1)
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logprint("")
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logprint("start LLDA:")
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# run JGibbsLLDA file
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FNULL = open(os.devnull, 'w') # supress output
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cmd_jgibbs_java = ["java", "-cp",
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"{0}lib/trove-3.0.3.jar:{0}lib/args4j-2.0.6.jar:{0}out/production/LabledLDA/".format(
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jgibbsLLDA_root),
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"jgibblda.LDA", "-est", "-dir", "{0}models/tickets".format(jgibbsLLDA_root), "-dfile",
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"tickets.gz",
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"-twords", str(top_topic_words), "-ntopics", str(n_topics)]
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subprocess.call(cmd_jgibbs_java, stdout=FNULL)
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# ANMERKUNG: Dateien sind versteckt. zu finden in models/
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cmd_gzip = ["gzip", "-dc", "{0}/models/tickets/.twords.gz".format(jgibbsLLDA_root)]
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output = subprocess.check_output(cmd_gzip).decode("utf-8")
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topic_regex = re.compile(r'Topic [0-9]*')
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#####################################
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# todo save results in file aufgrund von results
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result = []
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for line in output.splitlines():
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findall = topic_regex.findall(line)
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if len(findall) != 0:
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try:
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index = int(findall[0].split()[1])
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result.append("Topic {} {}:".format(index, reverse_labeldict[index]))
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except:
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result.append(line)
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else:
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result.append(line)
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textacy.fileio.write_file_lines(result, path2save_results+".txt")
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#####################################
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results = []
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res_dict = {}
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count =0
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for line in output.splitlines():
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findall = topic_regex.findall(line)
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if len(findall) != 0:
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if len(res_dict) != 0:
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results.append(res_dict) #vorheriges an die liste ran (ist ja dann fertig)
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index = int(findall[0].split()[1])
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res_dict = {index : str(reverse_labeldict[index]) }
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else:
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splitted = line.split()
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res_dict[splitted[0]] = float(splitted[1])
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"""
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### print terms that are topics
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for s in list(res_dict.values()):
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if isinstance(s,str) and splitted[0] in s:
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vals = list(res_dict.values())
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keys = list(res_dict.keys())
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for v in vals:
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if not isinstance(v,float):
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print("{}".format(v))
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print("{}".format(splitted[0]))
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count +=1
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print()
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###
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"""
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if len(res_dict) != 0:
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results.append(res_dict) # letzes an die liste ran
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#print(count)
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#print(float(count)/float(len(labelist)))
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# {0: 'betrieb', 'service': 0.24162679425837305, 'support': 0.24162679425837305, 'browser': 0.24162679425837305, 'unicard': 0.24162679425837305, 'telefon': 0.0023923444976076593}
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# every term in the resulsts to a list
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terms=[]
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for res in results:
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for key,value in res.items():
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if not isinstance(key, int) and not key in terms:
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terms.append(key)
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term2id = {t:i for i,t in enumerate(terms)} #and to dict
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################# termite plot #####################################################################
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#term_topic_weights.shape = (len(term_ids),len(topic_ids)
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#topic_labels = tuple(labelist)
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topic_labels = list(range(len(labelist)))
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term_labels = list(range(len(term2id))) #tuple([key for key in term2id.keys()])
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term_topic_weights = np.zeros((len(term2id),len(topic_labels)))
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for i,res in enumerate(results):
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for key,value in res.items():
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if not isinstance(key, int):
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term_topic_weights[term2id[key]][i] = value
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term_labels[term2id[key]] = key
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else:
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topic_labels[i] = reverse_labeldict[key]
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#viz.draw_termite_plot(term_topic_weights, topic_labels, term_labels, save=path2save_results+".png")
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draw.draw_termite(
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term_topic_weights, topic_labels, term_labels, save=path2save_results+".png")
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end = time.time()
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logprint("Time Elapsed Topic Modeling JGibbsLLDA:{0} min\n".format((end - start) / 60))
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def jgibbsLLDA_KB(corpus, path2save_results, top_topic_words=7, kb_keywords=False):
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jgibbsLLDA_root = FILEPATH + "java_LabledLDA/"
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LLDA_filepath = "{0}models/tickets/tickets.gz".format(jgibbsLLDA_root)
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# ticket2kb_dict
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kb2ticket_gen = textacy.fileio.read_csv(FILEPATH + "M42-Export/KB2Ticket_2017-09-13.csv", delimiter=";")
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ticket2kb_dict = {} #{'INC55646': 'KBA10065', 'INC65776': 'KBA10040', 'INC43025': 'KBA10056', ...}
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for line in kb2ticket_gen:
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ticket_id = line[0]
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kb_id = line[1]
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ticket2kb_dict[ticket_id] = kb_id
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#############
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# kb2keywords_dict
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kb2keywords_gen = textacy.fileio.read_csv(FILEPATH + "M42-Export/KB_2017-09-13.csv", delimiter=";") #"ArticleID";"Subject";"Keywords";.....
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next(kb2keywords_gen,None) #skip first
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kb2keywords_dict = {}
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for lino in kb2keywords_gen:
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kb_id = lino[0]
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kb2keywords_dict[kb_id] = []
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subject = lino[1]
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keywords = lino[2]
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keywords_list = [x.lower().strip() for x in map(replaceRockDots(),str(keywords).split(","))]
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if kb_keywords:
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for item in keywords_list:
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if item != "":
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kb2keywords_dict[kb_id].append(item)
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else:
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kb2keywords_dict[kb_id].append(subject)
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#remove all empty items
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kb2keywords_dict = { k : v for k,v in kb2keywords_dict.items() if len(v) != 0}
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###############
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#keywords2kb_dict
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keywords2kb_dict = {}
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for kb_id, lst in kb2keywords_dict.items():
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for l in lst:
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if l not in keywords2kb_dict.keys():
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keywords2kb_dict[l] = [kb_id]
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else:
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keywords2kb_dict[l].append(kb_id)
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############
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# idee topic_ID -> KB_ID -> keywords / subject -> llda
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# ticket2kb_dict {'INC65627': 'KBA10044', 'INC66057': 'KBA10009', ...}
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# kb2keywords_dict {'KBA10091': ['citavi'], 'KBA10249': ['"beschaedigte unicard"', 'risse', '"defekte karte"'], ...}
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# keywords2kb_dict {'unicard namensaenderung': ['KBA10276'], 'vpn': ['KBA10063'], 'outlook_exchange': ['KBA10181'], ...}
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# Look for actually used keywords
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used_keywords = []
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for doc in corpus:
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ticket_number = doc.metadata["TicketNumber"]
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kb_number = ticket2kb_dict.get(ticket_number, None)
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keywords = kb2keywords_dict.get(kb_number, None)
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if keywords and kb_number:
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used_keywords.append(list(map(normalize,keywords)))
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kb_entries_used = (len(list(set([kb for kb in ticket2kb_dict.values()]))))
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print("kb_entries_used: {}".format(kb_entries_used))
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labelist = [item for sublist in used_keywords for item in sublist]
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labelist = list(set(labelist))
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print("len(labelist): {}".format(len(labelist)))
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labeldict = {k: v for v, k in enumerate(labelist)}
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labeldict_rev = {v: k for k, v in labeldict.items()}
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print("labledict created")
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def genos_linos(textacyCorpus, labeldict, ticket2kb_dict, kb2keywords_dict):
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for doc in textacyCorpus:
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ticket_number = doc.metadata["TicketNumber"]
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kb_number = ticket2kb_dict.get(ticket_number, None)
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keywords = kb2keywords_dict.get(kb_number, None)
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if keywords is not None:
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pass
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if keywords and kb_number:
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label = ""
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for kw in keywords:
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label = label + str(labeldict.get( normalize(str(kw)) , len(labeldict))) + " "
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yield "[ " + label + "] " + doc.text
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line_gen = genos_linos(corpus, labeldict, ticket2kb_dict, kb2keywords_dict)
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textacy.fileio.write_file_lines(line_gen, filepath=LLDA_filepath)
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# wait for file to exist
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while not os.path.exists(LLDA_filepath):
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time.sleep(1)
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logprint("")
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logprint("start LLDA:")
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# run JGibbsLLDA file
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n_topics = len(labeldict) #+1 #default-topic
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FNULL = open(os.devnull, 'w') # supress output
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cmd_jgibbs_java = ["java", "-cp",
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"{0}lib/trove-3.0.3.jar:{0}lib/args4j-2.0.6.jar:{0}out/production/LabledLDA/".format(
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jgibbsLLDA_root),
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"jgibblda.LDA", "-est", "-dir", "{0}models/tickets".format(jgibbsLLDA_root), "-dfile",
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"tickets.gz",
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"-twords", str(top_topic_words), "-ntopics", str(n_topics)]
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subprocess.call(cmd_jgibbs_java, stdout=FNULL)
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# ANMERKUNG: Dateien sind versteckt. zu finden in models/
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cmd_gzip = ["gzip", "-dc", "{0}/models/tickets/.twords.gz".format(jgibbsLLDA_root)]
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output = subprocess.check_output(cmd_gzip).decode("utf-8")
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topic_regex = re.compile(r'Topic [0-9]*')
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#####################################
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# todo save results in file aufgrund von results
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result = []
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for line in output.splitlines():
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findall = topic_regex.findall(line)
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if len(findall) != 0:
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try:
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index = int(findall[0].split()[1])
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result.append("Topic {} {}:".format(index, labeldict_rev[index]))
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except:
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result.append(line)
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else:
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result.append(line)
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textacy.fileio.write_file_lines(result, path2save_results+".txt")
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#####################################
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results = []
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res_dict = {}
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count =0
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for line in output.splitlines():
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findall = topic_regex.findall(line)
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if len(findall) != 0:
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if len(res_dict) != 0:
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results.append(res_dict) #vorheriges an die liste ran (ist ja dann fertig)
|
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index = int(findall[0].split()[1])
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res_dict = {index : str(labeldict_rev[index]) }
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else:
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splitted = line.split()
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res_dict[splitted[0]] = float(splitted[1])
|
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if len(res_dict) != 0:
|
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results.append(res_dict) # letzes an die liste ran
|
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|
|
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# every term in the resulsts to a list
|
|
|
|
terms=[]
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for res in results:
|
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for key,value in res.items():
|
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if not isinstance(key, int) and not key in terms:
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terms.append(key)
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|
|
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term2id = {t:i for i,t in enumerate(terms)} #and to dict
|
|
|
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################# termite plot #####################################################################
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topic_labels = list(range(len(labelist)))
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term_labels = list(range(len(term2id))) #tuple([key for key in term2id.keys()])
|
|
|
|
|
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term_topic_weights = np.zeros((len(term2id),len(topic_labels)))
|
|
|
|
for i,res in enumerate(results):
|
|
|
|
for key,value in res.items():
|
|
|
|
if not isinstance(key, int):
|
|
term_topic_weights[term2id[key]][i] = value
|
|
term_labels[term2id[key]] = key
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|
else:
|
|
topic_labels[i] = labeldict_rev[key]
|
|
|
|
|
|
draw.draw_termite(
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|
term_topic_weights, topic_labels, term_labels, save=path2save_results+".png")
|
|
|
|
|
|
end = time.time()
|
|
|
|
|
|
|
|
|
|
|
|
|
|
def main(use_cleaned=False, algorithm="llda"):
|
|
|
|
|
|
|
|
logprint("Topic Modeling: {0}".format(datetime.now()))
|
|
|
|
corpus_de_path = FILEPATH + config.get("de_corpus", "path")
|
|
corpus_en_path = FILEPATH + config.get("en_corpus", "path")
|
|
|
|
|
|
if use_cleaned:
|
|
preCorpus_name = "de" + "_clean_ticket"
|
|
resultspath = FILEPATH + "results/clean"
|
|
else:
|
|
preCorpus_name = "de" + "_pre_ticket"
|
|
resultspath = FILEPATH + "results/pre"
|
|
|
|
|
|
|
|
# load cleand corpus
|
|
de_corpus, parser = load_corpus(corpus_name=preCorpus_name, corpus_path=corpus_de_path)
|
|
logprint("Corpus loaded: {0}".format(de_corpus.lang))
|
|
|
|
|
|
"""
|
|
ngrams = 1
|
|
min_df = 1
|
|
max_df = 1.0
|
|
weighting = 'tf'
|
|
# weighting ='tfidf'
|
|
named_entities = False
|
|
|
|
|
|
printvecotorization(ngrams=1, min_df=1, max_df=1.0, weighting=weighting)
|
|
printvecotorization(ngrams=1, min_df=1, max_df=0.5, weighting=weighting)
|
|
printvecotorization(ngrams=1, min_df=1, max_df=0.8, weighting=weighting)
|
|
|
|
printvecotorization(ngrams=(1, 2), min_df=1, max_df=1.0, weighting=weighting)
|
|
printvecotorization(ngrams=(1, 2), min_df=1, max_df=0.5, weighting=weighting)
|
|
printvecotorization(ngrams=(1, 2), min_df=1, max_df=0.8, weighting=weighting)
|
|
"""
|
|
|
|
if algorithm == "llda":
|
|
top_topic_words = 5
|
|
path2save_results = resultspath + "_cat_{}_{}".format(algorithm,"top"+str(top_topic_words))
|
|
jgibbsLLDA_category(de_corpus, path2save_results=path2save_results, top_topic_words=top_topic_words)
|
|
|
|
|
|
kb_keywords = False
|
|
path2save_results = resultspath + "_kb_{}_{}_{}".format("keys" if kb_keywords else "subs",algorithm,"top"+str(top_topic_words))
|
|
jgibbsLLDA_KB(de_corpus, path2save_results=path2save_results, top_topic_words=top_topic_words, kb_keywords=kb_keywords)
|
|
|
|
kb_keywords = True
|
|
path2save_results = resultspath + "_kb_{}_{}_{}".format("keys" if kb_keywords else "subs", algorithm,
|
|
"top" + str(top_topic_words))
|
|
jgibbsLLDA_KB(de_corpus, path2save_results=path2save_results, top_topic_words=top_topic_words,
|
|
kb_keywords=kb_keywords)
|
|
|
|
"""
|
|
top_topic_words = 10
|
|
path2save_results = resultspath + "_{}_{}".format(algorithm,"top"+str(top_topic_words))
|
|
jgibbsLLDA(de_corpus, path2save_results=path2save_results, top_topic_words=top_topic_words)
|
|
|
|
|
|
top_topic_words = 15
|
|
path2save_results = resultspath + "_{}_{}".format(algorithm, "top" + str(top_topic_words))
|
|
jgibbsLLDA(de_corpus, path2save_results=path2save_results, top_topic_words=top_topic_words)
|
|
|
|
top_topic_words = 20
|
|
path2save_results = resultspath + "_{}_{}".format(algorithm, "top" + str(top_topic_words))
|
|
jgibbsLLDA(de_corpus, path2save_results=path2save_results, top_topic_words=top_topic_words)
|
|
|
|
"""
|
|
else:
|
|
|
|
|
|
textacyTopicModeling(ngrams = 1,
|
|
min_df = 1,
|
|
max_df = 0.9,
|
|
topicModel = algorithm,
|
|
n_topics =15,
|
|
corpus=de_corpus)
|
|
"""
|
|
textacyTopicModeling(ngrams=1,
|
|
min_df=1,
|
|
max_df=0.9,
|
|
topicModel=algorithm,
|
|
n_topics=20,
|
|
corpus=de_corpus)
|
|
|
|
textacyTopicModeling(ngrams=1,
|
|
min_df=1,
|
|
max_df=0.9,
|
|
topicModel=algorithm,
|
|
n_topics=25,
|
|
corpus=de_corpus)
|
|
|
|
|
|
textacyTopicModeling(ngrams=1,
|
|
min_df=1,
|
|
max_df=0.9,
|
|
topicModel=algorithm,
|
|
n_topics=30,
|
|
corpus=de_corpus)
|
|
"""
|
|
|
|
|
|
textacyTopicModeling(ngrams=(1, 2),
|
|
min_df=1,
|
|
max_df=0.9,
|
|
topicModel=algorithm,
|
|
n_topics=15,
|
|
corpus=de_corpus)
|
|
"""
|
|
textacyTopicModeling(ngrams = (1,2),
|
|
min_df = 1,
|
|
max_df = 0.9,
|
|
topicModel = algorithm,
|
|
n_topics =20,
|
|
corpus=de_corpus)
|
|
|
|
textacyTopicModeling(ngrams = (1,2),
|
|
min_df = 1,
|
|
max_df = 0.9,
|
|
topicModel = algorithm,
|
|
n_topics =25,
|
|
corpus=de_corpus)
|
|
|
|
|
|
textacyTopicModeling(ngrams = (1,2),
|
|
min_df = 1,
|
|
max_df = 0.9,
|
|
topicModel = algorithm,
|
|
n_topics =30,
|
|
corpus=de_corpus)
|
|
"""
|
|
|
|
|
|
|
|
|
|
if __name__ == "__main__":
|
|
main()
|
|
|
|
|
|
|
|
|
|
|
|
|