Beispiel #1
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def sentiment_analysis(tweet_sample, aggregate=True, mode='trinary'):
    senti = PySentiStr()
    senti.setSentiStrengthPath(sentistrength_jar_full_path)
    senti.setSentiStrengthLanguageFolderPath(sentistrength_lan_full_path_en)

    sentiment_dict = {}

    if type(tweet_sample) is not dict: return 'No matches'
    else:
        for topic in tweet_sample.keys():
            # Scores: scale, dual, binary and trinary
            sentiment = senti.getSentiment(tweet_sample[topic], score=mode)
            if (aggregate == True):
                sentisum = 0
                summary = {}
                for sent in sentiment:
                    sentisum += sent[
                        2]  # The trinary score returns a tuple, unless the others
                summary['value'] = sentisum
                if sentisum > 0: summary['sentiment'] = 'positive'
                else: summary['sentiment'] = 'negative'
                sentiment = summary

            sentiment_dict[topic] = sentiment
        return sentiment_dict
Beispiel #2
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def main():
    #==========================================================================#
    # criando o objeto do sentistrength e setando os caminhos dos arquivos
    # auxiliares
    #==========================================================================#
    obj_sentistrength = PySentiStr()
    obj_sentistrength.setSentiStrengthPath(SENTISTRENGTH_JAR_PATH)
    obj_sentistrength.setSentiStrengthLanguageFolderPath(
        SENTISTRENGTH_DATA_PATH)

    #===========================================================================#
    # realizando a leitura do arquivo frases.txt e colocando as linhas
    # na lista file_lines (file.readlines() retorna essa lista)
    #===========================================================================#
    with open('frases.txt', 'r') as file:
        file_lines = file.readlines()

    #===========================================================================#
    # iterando sobre a lista file_lines e realizando a análise de sentimentos
    # dos textos obtendo como resultados 3 scores (dual, trinary e scale)
    # similares e proporcionais para um mesmo texto de entrada
    #===========================================================================#
    for line in file_lines:
        text = line.strip()  # para removermos o \n ao final da linha
        result_scale = obj_sentistrength.getSentiment(text, score='scale')
        result_dual = obj_sentistrength.getSentiment(text, score='dual')
        result_trinary = obj_sentistrength.getSentiment(text, score='trinary')
        print(
            'text: {0}\nresult_scale: {1}\nresult_dual: {2}\nresult_trinary: {3}\n'
            .format(text, str(result_scale), str(result_dual),
                    str(result_trinary)))
Beispiel #3
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def tweet_word_sentiment(data):
    '''
    input: whole corpus
    output: 1 dicts for tweet_word_sentiment, 
            keys: tweet_id, values: dict (keys={"max","min","distance"})
                                    max--highest sentiment score among all words
                                    min--lowest sentiment score among all words
                                    distance-- difference between highest score and lowest score
    '''
    feature_dict = {}
    #     try:
    senti = PySentiStr()
    senti.setSentiStrengthPath('./SentiStrength.jar')
    senti.setSentiStrengthLanguageFolderPath('./SentiStrengthData/')

    for tweet in data:
        tokenized = tweet.tweet_words()
        new_words = [word for word in tokenized if word.isalnum()]
        if not new_words:
            feature_dict[tweet.tweet_id] = {"max": 0, "min": 0, "distance": 0}
            continue
        result = senti.getSentiment(new_words)
        max_, min_ = result[0], result[0]
        for score in result:
            max_ = max(max_, score)
            min_ = min(min_, score)
        #feature_dict[tweet.tweet_id]={"max":max_,"min":min_,"distance":max_-min_}
        feature_dict[tweet.tweet_id] = [max_, min_, max_ - min_]
    return feature_dict
def sentistr(x):
    senti = PySentiStr()
    senti.setSentiStrengthPath("SentiStrength.jar")
    senti.setSentiStrengthLanguageFolderPath("SentStrength_Data")
    result = senti.getSentiment(
        x,
        score='trinary')  #positive rating, negative rating and neutral rating
    return result
Beispiel #5
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def get_sentistrength(df):
    senti = PySentiStr()
    senti.setSentiStrengthPath('~/softwares/SentiStrengthCom.jar')
    senti.setSentiStrengthLanguageFolderPath(
        '~/softwares/SentStrength_Data_Sept2011/')
    df["text"] = [t if t != "" else " " for t in df['text']]
    result = senti.getSentiment(df["text"], score='trinary')
    df["sentistrength_pos"] = [r[0] for r in result]
    df["sentistrength_neg"] = [r[1] for r in result]
    df["sentistrength_neutral"] = [r[2] for r in result]
    return df
Beispiel #6
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def main():
    #mudar entrada
    with open(
            './Comentarios_csv/Test/OPOVOOnline sobre escolha do novo reitor UFC.csv'
    ) as csv_file:
        csv_dict_reader = csv.DictReader(csv_file)
        senti = PySentiStr()
        senti.setSentiStrengthPath(
            "/home/caio/Documentos/Projeto Analise Comentarios Facebook/SentiStrength.jar"
        )
        senti.setSentiStrengthLanguageFolderPath(
            "/home/caio/Documentos/Projeto Analise Comentarios Facebook/SentStrength_Data/portuguese/"
        )

        #mudar saída
        with open('./Comentarios_csv/Test/teste.csv', 'w') as csvfile:
            spamwriter = csv.writer(csvfile)
            spamwriter.writerow(
                ["Comentário", "notaPositiva", "notaNegativa", "Sentimento"])
            for row in csv_dict_reader:
                #colocar nome da coluna que tem o comentario
                if row["message"]:
                    sentence = row["message"]
                    #sentence = RemoveAccent(sentence)
                    sentence = Tokenize(sentence)
                    if sentence:
                        sentence = RemoveStopWords(sentence)
                        if sentence:
                            sentence = Stemming(sentence)
                            sentence = " ".join(sentence)
                            #sentistrength
                            result = senti.getSentiment(sentence,
                                                        score='binary')
                            if result[0][0] + result[0][1] <= -1:
                                sentiment = 'negativo'
                            elif result[0][0] + result[0][1] >= 1:
                                sentiment = 'positivo'
                            else:
                                sentiment = 'neutro'
                            spamwriter.writerow([
                                row["message"], result[0][0], result[0][1],
                                sentiment
                            ])
            print("finish!")
Beispiel #7
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from tqdm import tqdm

import glob

import os.path
import sys
from os import getcwd


from sentistrength import PySentiStr
senti = PySentiStr()
#senti.setSentiStrengthPath('C:\\SentiStrength\\SentiStrength.jar') # e.g. 'C:\Documents\SentiStrength.jar'
#senti.setSentiStrengthLanguageFolderPath('C:\\SentiStrength') # e.g. 'C:\Documents\SentiStrengthData\'
senti.setSentiStrengthPath(os.path.join(getcwd(),"SentiStrengthData/SentiStrength.jar"))
senti.setSentiStrengthLanguageFolderPath(os.path.join(getcwd(),"SentiStrengthData/"))

def preprocess_data(data):

    data_out = pd.DataFrame()
    data_out = data[['type','content']]
    data_out.dropna(inplace=True)
    return data_out

def count_words(text):
    try:
        return len(TextBlob(text).words)
    except:
        return 0

def calc_ttr(text):
Beispiel #8
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from sentistrength import PySentiStr

#inicializando sentistrength
senti = PySentiStr()
senti.setSentiStrengthPath("SentiStrength.jar")
senti.setSentiStrengthLanguageFolderPath("SentiStrength_Data")

frase1 = senti.getSentiment('The food here is GREAT!!', score='dual')
frase2 = senti.getSentiment('The food here is GREAT!!', score='binary')
frase3 = senti.getSentiment('The food here is GREAT!!', score='trinary')
frase4 = senti.getSentiment('The food here is GREAT!!', score='scale')
print("Frase1 na saída dual:", frase1)
print("Frase2 na saída binary:", frase2)
print("Frase3 na saída trinary:", frase3)
print("Frase4 na saída scale:", frase4)





#The location of the unzipped SentiStrength data files on your computer
SentiStrengthLanguageFolder = "C:/Users/ThinkPad/SpyderProjects/sentistrengthStuff/SentiStrength_Data/" 

#Check if the paths are correct (if the paths are correct, you will see no flags thrown)
if not os.path.isfile(SentiStrengthLocation):
    print("SentiStrength not found at: ", SentiStrengthLocation)
if not os.path.isdir(SentiStrengthLanguageFolder):
    print("SentiStrength data folder not found at: ", SentiStrengthLanguageFolder)

# Initiate an object
senti = PySentiStr()

# set paths
senti.setSentiStrengthPath(SentiStrengthLocation) 
senti.setSentiStrengthLanguageFolderPath(SentiStrengthLanguageFolder) 


# Read csv (give your path)
all_files = glob.glob("C:/Users/ThinkPad/SpyderProjects/sentistrengthStuff/entropy files" + "/*.csv")

li = []

#Make a dataframe from appending lists
for filename in all_files:
    df = pd.read_csv(filename, index_col=None, header=0, error_bad_lines=False)
    li.append(df)

main_frame = pd.concat(li, axis=0, ignore_index=True)

Beispiel #10
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def pre_process_and_predict(sentence):
    wordnet_lemmatizer = WordNetLemmatizer()
    # # Replacing double quotes with single, within a string
    sentence = sentence.replace("\"", "\'")
    # # Removing unnecessary special characters, keeping only ,  ! ?
    sentence = re.sub(r"[^!?,a-zA-Z0-9\ ]+", '', sentence)
    # # Lemmatization on verbs
    sentence = ' '.join([
        wordnet_lemmatizer.lemmatize(word, pos='v')
        for word in word_tokenize(sentence)
    ])

    sn = SenticNet()
    senti = PySentiStr()
    senti.setSentiStrengthPath(CODE_PATH + '/sentistrength/SentiStrength.jar')
    senti.setSentiStrengthLanguageFolderPath(
        CODE_PATH + '/sentistrength/SentStrength_Data/')

    sentiment_score = []

    for sen in sent_tokenize(sentence):
        senti_pos, senti_neg = senti.getSentiment(sen, score='dual')[0]
        senti_pos -= 1
        if senti_neg == -1:
            senti_neg = 0
        sum_pos_score = 0
        sum_neg_score = 0
        for word in word_tokenize(sen):
            try:
                w_score = float(sn.polarity_intense(word)) * 5
            except KeyError:
                w_score = 0
            if w_score > 0:
                sum_pos_score = sum_pos_score + w_score
            elif w_score < 0:
                sum_neg_score = sum_neg_score + w_score
        sum_pos_score = (sum_pos_score + senti_pos) / 2
        sum_neg_score = (sum_neg_score + senti_neg) / 2
        sentiment_score.append((sum_pos_score, sum_neg_score))
    additional_features_s = []
    additional_features_ns = []

    contra = []
    pos_low = []
    pos_medium = []
    pos_high = []
    neg_low = []
    neg_medium = []
    neg_high = []

    for sum_pos_score, sum_neg_score in sentiment_score:
        contra.append(int(sum_pos_score > 0 and abs(sum_neg_score) > 0))
        pos_low.append(int(sum_pos_score < 0))
        pos_medium.append(int(sum_pos_score >= 0 and sum_pos_score <= 1))
        pos_high.append(int(sum_pos_score >= 2))
        neg_low.append(int(sum_neg_score < 0))
        neg_medium.append(int(sum_neg_score >= 0 and sum_neg_score <= 1))
        neg_high.append(int(sum_neg_score >= 2))
    additional_features_s = additional_features_s + [
        max(pos_medium),
        max(pos_high),
        max(neg_medium),
        max(neg_high)
    ]
    additional_features_ns = additional_features_ns + [
        max(pos_low), max(neg_low)
    ]

    tweet = sentence
    punctuation_count = SequencePunctuationCount(tweet)
    character_count = SequenceCharacterCount(tweet)
    capitalized_count = CapitalizedCount(tweet)
    exclamation_count = ExclamationCount(tweet)
    #     emoji_count       = EmojiCount(tweet)
    f_count = [
        punctuation_count, character_count, capitalized_count,
        exclamation_count
    ]
    for count in f_count:
        f_low = int(count == 0)
        f_medium = int(count >= 1 and count <= 3)
        f_high = int(count >= 4)
        additional_features_s = additional_features_s + [f_medium, f_high]
        additional_features_ns = additional_features_ns + [f_low]
    X = [sentence]

    in_file = open(os.path.join(PICKLES_PATH, "vocab.pickle"), "rb")
    vocab = pickle.load(in_file)
    in_file.close()

    in_file = open(os.path.join(PICKLES_PATH, "model.pickle"), "rb")
    model = pickle.load(in_file)
    in_file.close()

    vectorizer = TfidfVectorizer(vocabulary=vocab)
    X = vectorizer.fit_transform(X)
    ans = int(sum(model.predict(X)))
    print('Sentence : ', sentence)
    print('Sarcastic features : ', additional_features_s)
    print('Not Sarcastic features : ', additional_features_ns)
    print('Contradict : ', max(contra))
    print('Model Predict : ', ans)
    print(
        'My obs : ',
        int((sum(additional_features_s) >= sum(additional_features_ns))
            and max(contra) == 1))
    print('Final Prd : ', end='')

    if ans == 1 or ((sum(additional_features_s) >= sum(additional_features_ns))
                    and max(contra) == 1):
        return True
    else:
        return False
Beispiel #11
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from utils import *
import pandas as pd

import ssl
ssl._create_default_https_context = ssl._create_unverified_context

config = get_config('config.yaml')

from sentistrength import PySentiStr
senti = PySentiStr()

# Rocket HPC
senti.setSentiStrengthPath('/gpfs/space/home/enlik/GitRepo/master-thesis-2021/references/SentiStrengthCom.jar') # Note: Provide absolute path instead of relative path
senti.setSentiStrengthLanguageFolderPath('/gpfs/space/home/enlik/GitRepo/master-thesis-2021/references/SentiStrengthData/') # Note: Provide absolute path instead of relative path



df_freenow = pd.read_csv(config['csv_input_local']['freenow_apple_google_p1'], index_col=0)
df_freenow = df_freenow.reset_index(drop=True)
total_reviews = len(df_freenow)

print(f'Total English reviews: {total_reviews} \n')
df_freenow.review = df_freenow.review.astype(str)

# df_freenow = df_freenow.head(10) # testing purpose
listOfSentimentScores = []

for i in range(0, int(len(df_freenow))):
    text_input = df_freenow.review[i]
    star_rating = df_freenow.rating[i]
    result = senti.getSentiment(text_input)
import pandas as pd
from sentistrength import PySentiStr
senti = PySentiStr()
senti.setSentiStrengthPath(
    'SentiStrengthCom.jar'
)  # Note: Provide absolute path instead of relative path
senti.setSentiStrengthLanguageFolderPath(
    'SentStrength_Data_Sept2011'
)  # Note: Provide absolute path instead of relative path

str_arr = ['What a lovely day', 'What a bad day']

result = senti.getSentiment(str_arr)
print(result)
result = senti.getSentiment(str_arr, score='scale')
print(result)

# OR, if you want dual scoring (a score each for positive rating and negative rating)
result = senti.getSentiment(str_arr, score='dual')
print(result)

# OR, if you want binary scoring (1 for positive sentence, -1 for negative sentence)
result = senti.getSentiment(str_arr, score='binary')
print(result)

# OR, if you want trinary scoring (a score each for positive rating, negative rating and neutral rating)
result = senti.getSentiment(str_arr, score='trinary')
print(result)
Beispiel #13
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from sentistrength import PySentiStr

senti = PySentiStr()
senti.setSentiStrengthPath('data/sentistrength/SentiStrength5.jar')
senti.setSentiStrengthLanguageFolderPath('data/sentistrength/SentStrength_Data')


def analyse_sentence(sentence):
    return senti.getSentiment(sentence)
import pandas as pd
from sentistrength import PySentiStr
senti = PySentiStr()
senti.setSentiStrengthPath(
    'SentiStrengthCom.jar'
)  # Note: Provide absolute path instead of relative path
senti.setSentiStrengthLanguageFolderPath(
    'portuguese')  # Note: Provide absolute path instead of relative path

#-1 (not negative) to -5 (extremely negative)
#1 (not positive) to 5 (extremely positive)

str_arr = [
    'Que dia maravilhoso', 'Que dia ruim',
    'Vcs são incriveis, vcs conseguem tirar Pessoas da depressão, obrigada por me fazer sorrir todos os dias , espero de vdd poder encontrar vcs e dar um abraço mto apertado!!!!!😪❤❤',
    'No vídeo de hoje, os integrantes da LOUD tiraram um tempo pra conversar com os inscritos do Discord por chamada de vídeo. Eles entraram de surpresa na call do Discord e surpreenderam.'
]

result = senti.getSentiment(str_arr)
print(result)
result = senti.getSentiment(str_arr, score='scale')
print(result)

# OR, if you want dual scoring (a score each for positive rating and negative rating)
result = senti.getSentiment(str_arr, score='dual')
print(result)

# OR, if you want binary scoring (1 for positive sentence, -1 for negative sentence)
result = senti.getSentiment(str_arr, score='binary')
print(result)
class Maestro:
    def __init__(self, df, output_path, output_name, batch):
        # storing variables
        self.df = df
        self.filename = Path(output_path) / output_name
        self.raw_file = '{}_raw.csv'.format(self.filename)
        self.batch = batch

        # initialize tools
        self.translator = Translator()
        self.__initialize_senti()

        # collect jobs
        job_list = self.__collect_jobs()
        self.total_job = len(job_list)

        # initialize queues
        self.jobs = Queue(maxsize=self.total_job)
        for job in job_list:
            self.jobs.put(job)
        self.results = Queue(maxsize=self.total_job)

        # setup threading variables
        self.stop = threading.Event()
        self.worker_ct_lock = threading.Lock()
        self.worker_ct = 0  # num_of_spawned worker

    def __initialize_senti(self):
        self.senti = PySentiStr()
        self.senti.setSentiStrengthPath(
            str(Path.cwd() / 'lib' / 'SentiStrengthCom.jar'))
        self.senti.setSentiStrengthLanguageFolderPath(str(Path.cwd() / 'lang'))

        # simple test to make sure senti works
        test = self.senti.getSentiment(['You are beautiful'], 'dual')
        assert type(test) is list
        assert type(test[0]) is tuple

    def __collect_jobs(self):
        try:
            out_df = pd.read_csv(self.raw_file, header=None)
            processed_ser = self.df['tweetid'].isin(out_df[1])
        except FileNotFoundError:
            zeros = np.zeros((len(self.df.index), ), dtype=bool)
            processed_ser = pd.Series(zeros)

        job_list = processed_ser[~processed_ser].index
        job_list = list(grouper(job_list, self.batch))
        if len(job_list) > 0:
            job_list[-1] = tuple(job for job in job_list[-1]
                                 if job is not None)

        return job_list

    def __despawn_worker(self):
        with self.worker_ct_lock:
            self.worker_ct = self.worker_ct - 1

    def __translate(self, thread_num):
        with self.worker_ct_lock:
            self.worker_ct = self.worker_ct + 1
        while not self.stop.is_set() and not self.jobs.empty():
            job = self.jobs.get()
            try:
                mini_df = self.df.loc[job, ]  # trailing comma is needed
                ids = mini_df.iloc[:, 0]
                items = mini_df.iloc[:, -1].to_numpy().tolist()
            except Exception as e:
                print('Worker #{} got pandas error: {}'.format(thread_num, e))
                break

            try:
                if len(items) == 1:
                    translations = [self.translator.translate(items)]
                else:
                    translations = self.translator.translate(items)
            except Exception as e:
                print('Worker #{} got translation error: {}'.format(
                    thread_num, e))
                break

            self.results.put((job, ids, translations))

        self.__despawn_worker()

    def __save(self, results):
        with open(self.raw_file, 'a', encoding='utf-8',
                  newline='') as csv_file:
            writer = csv.writer(csv_file,
                                delimiter=',',
                                quotechar='"',
                                quoting=csv.QUOTE_MINIMAL)
            writer.writerows(results)

    def __process(self, score='dual'):
        total_batch = int(np.ceil(len(self.df.index) / self.batch))
        pbar = tqdm(total=total_batch, initial=(total_batch - self.total_job))

        while not self.stop.is_set() or not self.results.empty():
            time.sleep(2)
            if not self.results.empty():
                # merges all results
                job_list, id_list, translation_list = ([], [], [])
                steps = 0
                while not self.results.empty():
                    job, ids, translations = self.results.get()
                    job_list.extend(job)
                    id_list.extend(ids)
                    translation_list.extend(translations)
                    steps = steps + 1

                # analyze sentiments
                texts = [tr.text for tr in translation_list]
                try:
                    sentis = self.senti.getSentiment(texts, score)
                except Exception as e:
                    print('Process got sentistrength error:', e)
                    break

                try:
                    rows = [
                        (order, i, *senti, tr.src, text)
                        for order, i, senti, tr, text in zip(
                            job_list, id_list, sentis, translation_list, texts)
                    ]
                except Exception as e:
                    print(e)
                    break

                try:
                    self.__save(rows)
                except Exception as e:
                    print('Process got on save error:', e)
                    break

                pbar.update(steps)
            time.sleep(.1)  # prevent too much loop checking

        if not self.stop.is_set():
            self.stop.set()  # force stop all threads

        print('Rebuilding...')
        self.__rebuild()

        print('Exiting...')
        pbar.close()

    def __rebuild(self):
        try:
            sf = pd.read_csv(self.raw_file,
                             header=None,
                             names=[
                                 'order', 'tweetid', '+', '-', 'src_lang',
                                 'translation'
                             ])
            sf.sort_values('order', inplace=True)
            sf.to_csv('{}.csv'.format(self.filename), index=None)
        except FileNotFoundError:
            pass
        except Exception as e:
            print(ERR_STR.format('rebuild', 'on rebuilding csv'), e)

    def play(self, n_thread=1):
        if n_thread < 1:
            return
        with ThreadPoolExecutor(max_workers=n_thread + 1) as executor:
            try:
                executor.map(self.__translate, range(n_thread))
                print('Spawing {} workers...'.format(n_thread))
                while self.worker_ct is 0:
                    pass  # waiting for any worker being spawned
                print('Aye, Sir!')
                executor.submit(self.__process)

                # as long as there are atleast a worker
                while self.worker_ct > 0:
                    # wait for any keyboard interrupt
                    time.sleep(.5)  # power napping for half second
                # either no job left or all worker has been despawned
                self.stop.set()

                if self.jobs.empty():
                    print('All done!')
                if self.worker_ct is 0:
                    print('All workers quit their job!')
            except KeyboardInterrupt:
                print('\nKeyboard interrupt')
            except Exception as e:
                print(ERR_STR.format('play', 'something went wrong'), e)
            finally:
                self.stop.set()

        print('Byee 👋')
Beispiel #16
0
    result = [i for i in tokens if not i in stop_words]

    # stemming
    #     stemmer= PorterStemmer()
    #     newResult = []
    #     for word in result:
    #         newResult.append(stemmer.stem(word))
    #     print(newResult)
    return result


senti = PySentiStr()
senti.setSentiStrengthPath(
    'C:\ProgramData\Anaconda3\Lib\site-packages\sentistrength\SentiStrength.jar'
)
senti.setSentiStrengthLanguageFolderPath(
    'C:\ProgramData\Anaconda3\Lib\site-packages\sentistrength\\')

data = pd.read_csv("D:\senior\sentiment\Moodle_comments2.csv")
tagcomment = pd.read_csv("D:\\senior\\sentiment\\data\\tags.csv",
                         encoding='iso-8859-1')
tagcommentId = tagcomment['commentid']

commendId = []
cleanComment = []
sentiment = []
# tagger = []
# tagee = []
countnon = 0
count = 0
for index, row in data.iterrows():
    countnon = countnon + 1
Beispiel #17
0
print(os.getcwd())
os.chdir("C:/Users/marcs/OneDrive/Bureaublad/Master/Thesis")


df = pd.DataFrame()
k=0
print("Start part 1:")
until = datetime.datetime(2019,1,1) 
since =  datetime.datetime(2018,12,31)
init_start = datetime.datetime.now()

afinn = Afinn(emoticons=True)
senti = PySentiStr()
senti.setSentiStrengthPath('C:/Users/marcs/OneDrive/Bureaublad/Master/Thesis/SentiStrength.jar') # Note: Provide absolute path instead of relative path
senti.setSentiStrengthLanguageFolderPath('C:/Users/marcs/OneDrive/Bureaublad/Master/Thesis/SentiStrength_Data/') # Note: Provide absolute path instead of relative path

for j in list(range(100000)):
    start = datetime.datetime.now()
    res = None
    while res is None:
        try:
            tweetCriteria = got.manager.TweetCriteria().setQuerySearch('$HAS')\
                                                   .setSince(since.strftime('%Y-%m-%d'))\
                                                   .setUntil(until.strftime('%Y-%m-%d'))\
                                                   .setMaxTweets(10000)\
                                                   .setEmoji("unicode")\
                                                   .setLang("en")
            tweet = got.manager.TweetManager.getTweets(tweetCriteria)
            
            time_tweet = datetime.datetime.now()
def main():
    with open(
            './OPOVOOnline sobre escolha do novo reitor UFC.csv') as csv_file:
        csv_dict_reader = csv.DictReader(csv_file)
        senti = PySentiStr()
        senti.setSentiStrengthPath(
            "/home/caio/Documentos/Projeto Analise Comentarios Facebook/SentiStrength.jar"
        )
        senti.setSentiStrengthLanguageFolderPath(
            "/home/caio/Documentos/Projeto Analise Comentarios Facebook/SentStrength_Data/portuguese/"
        )
        prev_message = ""

        with open(
                '/home/caio/Documentos/Projeto Analise Comentarios Facebook/Frases_Neutras.csv',
                'w') as csvfile:
            spamwriter = csv.writer(csvfile)
            spamwriter.writerow(["Frase", "notaPositiva", "notaNegativa"])
            #sentistrength
            for row in csv_dict_reader:
                if prev_message != row["message"] and row["message"]:
                    sentence = row["message"]
                    #sentence = RemoveAccent(sentence)
                    sentence = Tokenize(sentence)
                    if sentence:
                        sentence = RemoveStopWords(sentence)
                        if sentence:
                            sentence = Stemming(sentence)
                            sentence = " ".join(sentence)
                            result = senti.getSentiment(sentence,
                                                        score='binary')
                            if result[0][0] + result[0][1] == 0:
                                #salvar frase tokenizada
                                #spamwriter.writerow([sentence, result[0][0], result[0][1]])
                                #salvar frase inteira
                                spamwriter.writerow([
                                    row["message"], result[0][0], result[0][1]
                                ])
                #publicacao com resposta de comentários
                if row["object_link.connections.comments.message"] != 'null' and row[
                        "object_link.connections.comments.message"]:
                    sentence = row["object_link.connections.comments.message"]
                    #sentence = RemoveAccent(sentence)
                    sentence = Tokenize(sentence)
                    if sentence:
                        sentence = RemoveStopWords(sentence)
                        if sentence:
                            sentence = Stemming(sentence)
                            sentence = " ".join(sentence)
                            result = senti.getSentiment(sentence,
                                                        score='binary')
                            if result[0][0] + result[0][1] == 0:
                                #mostrar tokenizada
                                #spamwriter.writerow([sentence, result[0][0], result[0][1]])
                                #mostrar frase inteira
                                spamwriter.writerow([
                                    row["object_link.connections.comments.message"],
                                    result[0][0], result[0][1]
                                ])
                prev_message = row["message"]
            print("finish!")
Beispiel #19
0
    else: return 'neutral'


afinn = Afinn()


def afinn_polarity(text):
    score = afinn.score(text)
    if score > 0: return 'positive'
    elif score < 0: return 'negative'
    else: return 'neutral'


senti = PySentiStr()
senti.setSentiStrengthPath(senti_strength_jar_filepath)
senti.setSentiStrengthLanguageFolderPath(senti_strength_data_dirname)


def sentistrength_polarity(text):
    score = senti.getSentiment([text])[0]
    if score > 0: return 'positive'
    elif score < 0: return 'negative'
    else: return 'neutral'


mpqa_df = pd.read_csv(mpqa_filepath)


def mpqa_polarity(text):
    tokens = word_tokenize(text)
    pos_cnt, neg_cnt = 0, 0
Beispiel #20
0
NUMTHREAD = 20
curdir = os.getcwd()
while 'filepathhelper.py' not in os.listdir(curdir):
    curdir = os.path.dirname(curdir)
sys.path.append(curdir)
import filepathhelper
from tqdm import tqdm
import multiprocessing as mp

senti = PySentiStr()
#    senti.setSentiStrengthPath('C:\ProgramData\Anaconda3\Lib\site-packages\sentistrength\SentiStrength.jar')
#    senti.setSentiStrengthLanguageFolderPath('C:\ProgramData\Anaconda3\Lib\site-packages\sentistrength\\')
senti.setSentiStrengthPath(
    '/home/waraleetan/ming/lib/python2.7/site-packages/sentistrength/SentiStrength.jar'
)
senti.setSentiStrengthLanguageFolderPath(
    '/home/waraleetan/ming/lib/python2.7/site-packages/sentistrength/')


def cleanData(text):
    #remove [~]
    result = re.sub("\\[~.*?\\]", "", text)

    #remove{code}
    result = re.sub(r'^{code(.+){code}', ' ', result)

    #remove{function name}
    result = re.sub(r'\s\w+\(\)', ' ', result)

    #remove {noformat}
    result = re.sub(r'{noformat}.+{noformat}', ' ', result)