endTime = time.time() - startTime
        print('Running analyze : ' + str(endTime))

        data = analyze.json_to_str(item.get('resultfile'), 'message')
        item['count_wordfreq'] = analyze.count_wordfreq(data)

    # 데이터 시각화(visualize)
    for item in items:
        endTime = time.time() - startTime
        print('Running visualize : ' + str(endTime))

        # 분석된 단어들 중에 most 50개만..
        count = item['count_wordfreq']
        count_m50 = dict(count.most_common(50))

        # wordclud, graph bar
        filename = "%s_%s_%s" % (item['pagename'], item['since'],
                                 item['until'])
        visualize.wordcloud(filename, count_m50)
        visualize.graph_bar(  # 다른 바에도 적용하기위해 함수로 제작
            title='%s 빈도 분석' % (item['pagename']),
            xlabel='단어',
            ylabel='빈도 수',
            values=list(
                count_m50.values()),  #, filename) # 딕셔너리니까 리스트 형태로 바꿔서 ..
            ticks=list(count_m50.keys()),  # x, y의 값축(항목축) 지정
            showgrid=True,  # grid = 격자
            filename=filename,  # 파일로 저장 할건데,
            showgraph=False  # 그래프로도 바로 보여줄것인가?
        )
Beispiel #2
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    #데이터 분석
    for item in CONFIG['items']:
        # print(item['resultfile'])
        data = analyze.json_to_str(item['resultfile'], 'message')
        print(data)
        item['count_wordfreq'] = analyze.count_wordfreq(data)
        print(item['count_wordfreq'])

    #데이터 시각화(visualize)

    for item in CONFIG['items']:
        count = item['count_wordfreq']
        count_m50 = dict(count.most_common(50))

        filename = '%s_%s_%s' % (item['page_name'], item['since'],
                                 item['until'])
        visualize.wordcloud(filename, count_m50,
                            CONFIG['common']['result_vidualization_dir'])
        visualize.graph_bar(
            title='%s 빈도 분석' % (item['page_name']),
            xlabel='단어',
            ylabel='빈도수',
            #딕셔너리 형태이므로 형변환 한다.
            values=list(count_m50.values()),  #value 값
            ticks=list(count_m50.keys()),  #축값을 key에서 받아옴
            showgrid=True,  #그래프에 격자를 그릴지 여부
            filename=filename,
            showgraph=False,  #팝업윈도우를 띄울지 여부
            result_vidualization_dir=CONFIG['common']
            ['result_vidualization_dir'])
Beispiel #3
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        'pagename': 'jtbcnews',
        'since': '2017-01-01',
        'until': '2017-10-16'
    }, {
        'pagename': 'chosun',
        'since': '2017-01-01',
        'until': '2017-10-16'
    }]

    # collection
    for item in items:
        resultfile = collection.crawling(**item)
        item['resultfile'] = resultfile

    # analysis
    for item in items:
        data = analyze.json_to_str(item['resultfile'], 'message')
        item['count'] = analyze.count_wordfreq(data)

    # visualization
    for item in items:
        count = item['count']
        count_t50 = dict(count.most_common(50))
        filename = '%s_%s_%s.png' % (item['pagename'], item['since'],
                                     item['until'])
        visualize.graph_bar(values=list(count_t50.values()),
                            ticks=list(count_t50.keys()),
                            showgrid=True,
                            filename=filename,
                            showgraph=False)
Beispiel #4
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    """
    for country in CONFIG['countries']:
        collect.crawlling_foreigner_visitor(country, **CONFIG['common'])
    """

    resultfiles['foreign_visitor'] = []
    for country in CONFIG['countries']:
        rf = collect.crawlling_foreigner_visitor(country, **CONFIG['common'])
        resultfiles['foreign_visitor'].append(rf)

    #print(resultfiles)

    #1. analysis and visualize

    #result_analysis = analyze.analysis_correlation(resultfiles)
    #print(len(resultfiles))
    #print(result_analysis)
    #visualize.graph_scatter(result_analysis)

    #2. analysis and visualize

    result_analysis = analyze.analysis_correlation_by_tourspot(resultfiles)
    #print(type(result_analysis))
    visualize.graph_bar(result_analysis)

    #graph_table = pd.DataFrame(result_analysis, colums=['tourspot','r_중국','r_일본','r_미국'])
    #graph_table = graph_table.set_index('tourspot')

    #graph_table.plot(kind='bar')
    #plt.show()
Beispiel #5
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    # 데이터 분석 (analyze)
    # for item in items:
    # print(item['resultfile'])
    # json데이터를 str로
    for item in CONFIG['items']:
        data = analyze.json_to_str(item['resultfile'],
                                   'message')  # 본문 내용을 str로 변환
        # print(data)
        item['count_wordfreq'] = analyze.count_wordfteq(
            data)  # item['word_freq'] 시각화용

        # print(item['count_wordfreq'])

    # 데이터 시각화 (visualize)
    for item in CONFIG['items']:
        count = item['count_wordfreq']
        count_m50 = dict(count.most_common(50))

        filename = '%s_%s_%s' % (item['pagename'], item['since'],
                                 item['until'])
        visualize.wordcloud(filename, count_m50, CONFIG['result_directory_v'])
        visualize.graph_bar(title='%s 빈도 분석' % (item['pagename']),
                            result_directory_v=CONFIG['result_directory_v'],
                            xlabel='단어',
                            ylabel='빈도 수',
                            values=list(count_m50.values()),
                            ticks=list(count_m50.keys()),
                            showgrid=False,
                            filename=filename,
                            showgraph=False)
Beispiel #6
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    #데이터 시각화(visualize)
    for item in items:
        count = item[
            'count_wordfreq']  #count객체를 빼내서  'count_wordfreq': Counter({'빵': 28, '문재인': 27, '년': 20, '편의점': 20, '사람': 1

        count.most_common(50)  # list(tuple) 랭킹 50위까지 순서대로
        count_m50 = dict(count.most_common(
            50))  # dic 형태로 변경 : {'오늘': 126, '일': 110, '기사': 107,

        filename = '%s_%s_%s' % (item['pagename'], item['since'],
                                 item['until'])
        visualize.wordcloud(filename, count_m50,
                            CONFIG['common']['result_visual_dir'])
        '''
        [{'color': (16, 176, 94), 'size': 92, 'tag': '오늘'},
        {'color': (100, 64, 176), 'size': 82, 'tag': '일'}, ...color rgb 값
        
        '''
        visualize.graph_bar(
            CONFIG['common']['result_visual_dir'],
            title='%s 빈도분석 ' % (item['pagename']),
            xlabel='단어',
            ylabel='빈도수',
            values=list(
                count_m50.values()),  #y축값: dic을 list로 변환,그래프 파일에저장후출력예정
            ticks=list(count_m50.keys()),  # ticks:그래프 x축 문자열
            showgrid=True,  #그리드로표시할지여부
            filename=filename,  # 저장시 그래프의이미지파일로 저장
            showgraph=False  #그래프바로보여줄지여부(일단 파일로만 저장)
        )
Beispiel #7
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from config import CONFIG

if __name__ == '__main__':
    resultfiles = {}
    resultfiles['tourspot_visitor'] = []
    resultfiles['foreign_visitor'] = []

    # collection
    returnedFilename = collect.crawling_tourspot_visitor(
        district=CONFIG['district'], **CONFIG['common'])
    resultfiles['tourspot_visitor'].append(returnedFilename)

    for country in CONFIG['countries']:
        returnedFilename = collect.crawling_foreign_visitor(country=country,
                                                            **CONFIG['common'])
        resultfiles['foreign_visitor'].append(returnedFilename)

    # analysis
    results = analyze.analysis_correlation(resultfiles=resultfiles)

    # visualize
    for result in results:
        print(result)
    visualize.graph_scatter(results, showgraph=False)

    # 2. analysis & vsualization
    result_analysis = analyze.analysis_correlation_by_tourspot(
        resultfiles=resultfiles)
    print(result_analysis)
    visualize.graph_bar(result_analysis, showgraph=True)
Beispiel #8
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    }]

    # 데이터 수집(collection)
    for item in items:
        resultfile = collect.crawling(**item, fetch=False)
        item['resultfile'] = resultfile

    # 데이터 분석(analyze)
    for item in items:
        data = analyze.json_to_str(item['resultfile'], 'message')
        item['count_wordfreq'] = analyze.count_wordfreq(data)
        print(item['count_wordfreq'])

    # 데이터 시각화(visualize)
    for item in items:
        count = item['count_wordfreq']
        count_m50 = dict(count.most_common(50))

        filename = "%s_%s_%s" % (item['pagename'], item['since'],
                                 item['until'])
        visualize.wordcloud(filename, count_m50)
        visualize.graph_bar(
            title='%s 빈도분석' % (item['pagename']),
            xlabel='단어',
            ylabel='빈도',
            values=list(count_m50.values()),
            ticks=list(count_m50.keys()),
            showgrid=False,  # 그리드 그리기
            filename=filename,
            showgraph=False)
Beispiel #9
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# def crawling(pagename, since, until, fetch=True, result_directory=''):

if __name__ == '__main__':

    # 데이터 수집 (collect)
    for item in CONFIG['items']:
        resultfile = collect.crawling(**item, **CONFIG['common'])
        item['resultfile'] = resultfile

    # 데이터 분석 (analyze)
    for item in CONFIG['items']:
        data = analyze.json_to_str(item['resultfile'], 'message')
        item['count_wordfreq'] = analyze.count_wordfreq(data)

    # 데이터 시각화 (visualize)
    for item in CONFIG['items']:
        count = item['count_wordfreq']
        count_m50 = dict(count.most_common(50))     # dict 형태로

        filename = '%s_%s_%s' % (item['pagename'], item['since'],  item['until'])         # 이미지 저장할 파일
        visualize.wordcloud(filename, count_m50)        # def wordcloud(filename, wordfreq): pytagcloud
        visualize.graph_bar(
            title='%s 빈도 분석' % (item['pagename']),
            xlabel='단어',
            ylabel='빈도수',
            values=list(count_m50.values()),    # 그래프의 y 값 : count_m50 딕셔너리의 values
            ticks=list(count_m50.keys()),        # 그래프의 x 값 : count_m50 딕셔너리의 keys
            showgrid=False,     # 격자 여부
            filename=filename,      # 파일로 저장
            showgraph=False)         # pop-up window 띄울지 여부
Beispiel #10
0
        item['count_wordfreq'] = analyze.count_wordfreq(data)
        # print(data)
        print(item['count_wordfreq'])
        # item['count_wordfreq'] = analyze.count_wordfreq(data)
    #     위의 count_wordfreq는 빈도분석
    # collect.crawling(
    #     "jtbcnews",
    #     "2017-01-01",
    #     "2018-12-31")

    # 데이터 시각화(visualize)
    for item in items:
        count = item['count_wordfreq']
        count_m50 = dict(count.most_common(50))

        filename = '%s_%s_%s' % (item['pagename'], item['since'],
                                 item['until'])
        visualize.wordcloud(filename, count_m50)
        visualize.graph_bar(
            title='%s 빈도 분석' % (item['pagename']),
            xlabel='단어',
            ylabel='빈도수',
            values=list(count_m50.values()),
            ticks=list(count_m50.keys()),
            showgrid=False,  #grid가 싫으면(안이쁘면) false로 두면된다.
            filename=filename,  #디폴트(저장하기위해서)
            showgraph=False  #윈도 창을 뜨게 할건지 말건지 표시
        )

        #6/18 그래프 bar 완성하기