def main():
    # read the uid list
    uid_list = read_uid_list()
    # get user weibo 7day {user:[weibos]}
    user_weibo_dict = read_user_weibo(uid_list)
    uid_list = user_weibo_dict.keys()
    #print 'uid_list:', len(uid_list)
    #print 'user weibo dict:', len(user_weibo_dict)
    flow_result = get_flow_information(uid_list)
    register_result = get_profile_information(uid_list)
    # compute text attribute
    bulk_action = []
    for user in user_weibo_dict:
        weibo_list = user_weibo_dict[user]
        uname = weibo_list[0]['uname']
        results = compute_text_attribute(user, weibo_list)
        results['uid'] = str(user)
        flow_dict = flow_result[str(user)]
        results = dict(results, **flow_dict)
        # deal to the bulk action
        user_info = {'uid':str(user), 'domain':results['domain'], 'topic':results['topic'], 'activity_geo':results['activity_geo']}
        evaluation_index = get_evaluate_index(user_info, status='insert')
        results = dict(results, **evaluation_index)
        #print 'register_result:', register_result
        register_dict = register_result[str(user)]
        results = dict(results, **register_dict)
        action = {'index':{'_id': str(user)}}
        bulk_action.extend([action, results])
    status = save_user_results(bulk_action)
    return True # save by bulk
Beispiel #2
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def compute2in(uid_list, user_weibo_dict):
    #get user flow information: hashtag, activity_geo, keywords
    flow_result = get_flow_information(uid_list)
    #get user topic information
    topic_results_dict, topic_results_label = topic_classfiy(user_weibo_list)
    #get user domain information
    domain_results = domain_classfiy(user_weibo_dict)
    domain_results_dict = domain_results[0]
    domain_results_label = domain_results[1]
    #get user psy information
    psy_results_dict = psychology_classfiy(user_weibo_dict)
    #get user profile information
    register_result = get_profile_information(uid_list)
    #get user fansnum max
    fansnum_max = get_fansnum_max()
    #get user activeness by bulk_action
    activeness_results = get_activity_time(uid_list)
    #get user inlfuence by bulk action
    influence_results = get_influence(uid_list)
    #deal bulk action
    for user in user_weibo_dict:
        weibo_list = user_weibo_dict[user]
        uname = weibo_list[0]['uname']
        #compute text attribute: online_pattern
        results = compute_text_attribute(user, weibo_list)
        results['uname'] = uname
        results['uid'] = str(user)
        #add flow information: hashtag, activity_geo, keywords
        flow_dict = flow_result[str(user)]
        results = dict(results, **flow_dict)
        #add topic attribute
        topic_dict = topic_results_dict[user]
        results['topic'] = json.dumps(topic_dic)                   #{topic1_en:pro1, topic2_en:pro, ...}
        topic_label = topic_results_label[user] 
        results['topic_string'] = topic_en2ch(topic_label)         #topic1_ch&topic2_ch&topic3_ch
        #add domain attribute
        user_domain_dict = domain_results_dict[user]
        user_domain_label = domain_results_label[user]
        results['domain_v3'] = json.dumps(user_domain_dict)        #[domain_en1, domain_en2, domain_en3]
        results['domain_string'] = domain_en2ch(user_domain_label) #domain_ch
        #add psy attribute
        user_psy_dict = psy_results_dict[user]
        results['psycho_status'] = json.dumps(user_psy_dict)
        #add user profile attribute
        register_dict = register_result[str(user)]
        results = dict(results, **register_dict)
        #add user_evaluate attribute---importance
        results['importance'] = get_importance(results['domain'], results['topic_string'], results['fansnum'], fansnum)
        #add user_evaluate attribute---activeness
        user_activeness_time = activeness_results[user]
        user_activeness_geo = json.loads(results['activity_geo_dict'])[-1]
        results['activeness'] = get_activeness(user_activeness_geo, user_activeness_time)
        #add user_evaluate attribute---influence
        results['influence'] = influence_results[user]
        #bulk_action
        action = {'index':{'_id':str(user)}}
        bulk_action.extend([action, results])
    status = save_user_results(bulk_action)
    return True
def compute2in(uid_list, user_weibo_dict, status='insert'):
    flow_result = get_flow_information(uid_list)
    register_result = get_profile_information(uid_list)
    for user in user_weibo_dict:
        weibo_list = user_weibo_dict[user]
        uname = weibo_list[0]['uname']
        results = compute_text_attribute(user, weibo_list)
        results['uname'] = uname
        results['uid'] = str(user)
        flow_dict = flow_result[str(user)]
        results = dict(results, **flow_dict)
        user_info = {'uid':str(user), 'domain':results['domain'], 'topic':results['topic'], 'activity_geo':results['activity_geo']}
        evaluation_index = get_evaluate_index(user_info, status='insert')
        results = dict(results, **evaluation_index)
        register_dict = register_result[user]
        results = dict(results, **register_dict)
        if status=='insert':
            action = {'index':{'_id':str(user)}}
        else:
            action = {'update':{'_id', str(user)}}
            results = {'doc': results}
        bulk_action.extend([action, results])
    status = save_user_results(bulk_action)
    return True
Beispiel #4
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def test_cron_text_attribute(user_weibo_dict):
    #get user weibo 7day {user:[weibos]}
    print 'start cron_text_attribute'
    uid_list = user_weibo_dict.keys()
    print 'user count:', len(uid_list)
    
    #get user flow information: hashtag, activity_geo, keywords
    print 'get flow result'
    flow_result = get_flow_information(uid_list)
    print 'flow result len:', len(flow_result)
    
    #get user profile information
    print 'get register result'
    register_result = get_profile_information(uid_list)
    print 'register result len:', len(register_result)
    #get topic and domain input data
    user_weibo_string_dict = get_user_weibo_string(user_weibo_dict) # use as the tendency input data
    user_keywords_dict = get_user_keywords_dict(user_weibo_string_dict)
    #get user event results by bulk action
    event_results_dict = event_classfiy(user_weibo_string_dict)
    print 'event_result len:', len(event_results_dict)
    
    #get user topic and domain by bulk action
    print 'get topic and domain'
    topic_results_dict, topic_results_label = topic_classfiy(user_keywords_dict)
    domain_results = domain_classfiy(user_keywords_dict)
    domain_results_dict = domain_results[0]
    domain_results_label = domain_results[1]
    print 'topic result len:', len(topic_results_dict)
    print 'domain result len:', len(domain_results_dict)
    
    #get user psy attribute
    #print 'get psy result'
    #psy_results_dict = psychology_classfiy(user_weibo_dict)
    #print 'psy result len:', len(psy_results_dict)
    
    #get user character attribute
    print 'get character result'
    #type_mark = 0/1 for identify the task input status---just sentiment or text
    now_ts = time.time()
    #test
    now_ts = datetime2ts('2013-09-08')
    character_end_time = ts2datetime(now_ts - DAY)
    character_start_time = ts2datetime(now_ts - DAY * CHARACTER_TIME_GAP)
    character_type_mark = 1
    character_sentiment_result_dict = classify_sentiment(uid_list, character_start_time, character_end_time, character_type_mark)
    character_type_mark = 1
    character_text_result_dict = classify_topic(uid_list, character_start_time, character_end_time, character_type_mark)
    print 'character result len:', len(character_sentiment_result_dict), len(character_text_result_dict)
    print 'character_sentiment_result:', character_sentiment_result_dict
    print 'character_text_result:', character_text_result_dict
    
    #get user fansnum max
    fansnum_max = get_fansnum_max()
    #get user activeness by bulk_action
    print 'get activeness results'
    activeness_results = get_activity_time(uid_list)
    print 'activeness result len:', len(activeness_results)
    #get user inlfuence by bulk action
    print 'get influence'
    influence_results = get_influence(uid_list)
    print 'influence results len:', len(influence_results)
    
    # compute text attribute
    user_set = set()
    bulk_action = []
    count = 0
    for user in user_weibo_dict:
        count += 1
        results = {}       
        user_set.add(user)
        weibo_list = user_weibo_dict[user]
        uname = weibo_list[0]['uname']
        #get user text attribute: online_pattern
        results = compute_text_attribute(user, weibo_list)
        results['uid'] = str(user)
        #add user flow information: hashtag, activity_geo, keywords
        flow_dict = flow_result[str(user)]
        results = dict(results, **flow_dict)
        
        #add user topic attribute
        user_topic_dict = topic_results_dict[user]
        user_label_dict = topic_results_label[user]
        results['topic'] = json.dumps(user_topic_dict)         # {'topic1_en':pro1, 'topic2_en':pro2...}
        results['topic_string'] = topic_en2ch(user_label_dict) # 'topic1_ch&topic2_ch&topic3_ch'
        #add user event attribute
        results['tendency'] = event_results_dict[user]
        
        #add user domain attribute
        user_domain_dict = domain_results_dict[user]
        user_label_dict = domain_results_label[user]
        results['domain_v3'] = json.dumps(user_domain_dict) # [label1_en, label2_en, label3_en]
        results['domain'] = domain_en2ch(user_label_dict)      # label_ch
        
        #add user character_sentiment attribute
        character_sentiment = character_sentiment_result_dict[user]
        results['character_sentiment'] = character_sentiment
        #add user character_text attribtue
        character_text = character_text_result_dict[user]
        results['character_text'] = character_text
        
        #add user psy attribute
        user_psy_dict = [psy_results_dict[user]]
        results['psycho_status'] = json.dumps(user_psy_dict)
        
        #add user profile attribute
        register_dict = register_result[str(user)]
        results = dict(results, **register_dict)
        #add user_evaluate attribute---importance
        results['importance'] = get_importance(results['domain'], results['topic_string'], results['fansnum'], fansnum_max)
        #add user_evaluate attribute---activeness
        user_activeness_time = activeness_results[user]
        user_activeness_geo = json.loads(results['activity_geo_dict'])[-1]
        results['activeness'] = get_activeness(user_activeness_geo, user_activeness_time)
        #add user_evaluate attribute---influence
        results['influence'] = influence_results[user]
        
        #bulk_action
        action = {'index':{'_id': str(user)}}
        bulk_action.extend([action, results])
        if count >= 20:
            mark = save_user_results(bulk_action)
            print 'bulk_action:', bulk_action
            bulk_action = []
            count = 0
    
    end_ts = time.time()
    
    print 'user_set len:', len(user_set)
    print 'count:', count
    print 'bulk_action count:', len(bulk_action)
    
    print 'bulk_action:', bulk_action
    
    if bulk_action:
        status = save_user_results(bulk_action)
    
    #status = False
    return status # save by bulk