Exemple #1
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    def delete_dataStopword(self):
        id = request.form['id']

        instance_Model = Models(
            'DELETE FROM tbl_stopword WHERE id_stopword = %s')
        instance_Model.query_sql(id)
        flash('Berhasil menghapus data.', 'success')
        return None
	def add_dataLabeling(self):
		id = request.form['id']
		value = request.form['value']
		
		data_ubah = (value, id)
		instance_Model = Models('UPDATE tbl_tweet_clean SET sentiment_type=%s WHERE id=%s')
		instance_Model.query_sql(data_ubah)
		return 'Berhasil Melabeli Data!'
Exemple #3
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    def add_dataStopword(self):
        stopword = request.form['stopword'].strip()

        instance_Model = Models(
            'INSERT INTO tbl_stopword(stopword) VALUES (%s)')
        instance_Model.query_sql(stopword.lower())
        flash('Berhasil menambahkan data.', 'success')
        return None
Exemple #4
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    def delete_dataPositiveWord(self):
        id = request.form['id']

        instance_Model = Models(
            'DELETE FROM tbl_lexicon_positive WHERE id_positive = %s')
        instance_Model.query_sql(id)
        flash('Berhasil menghapus data.', 'success')
        return None
Exemple #5
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    def add_dataPositiveWord(self):
        kata_positif = request.form['kata_positif'].strip()

        instance_Model = Models(
            'INSERT INTO tbl_lexicon_positive(positive_word) VALUES (%s)')
        instance_Model.query_sql(kata_positif.lower())
        flash('Berhasil menambahkan data.', 'success')
        return None
Exemple #6
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    def update_dataStopword(self):
        id = request.form['id']
        stopword = request.form['stopword'].strip()

        data_ubah = (stopword.lower(), id
                     )  # Membuat tupple dari form data masukan

        instance_Model = Models(
            'UPDATE tbl_stopword SET stopword=%s WHERE id_stopword = %s')
        instance_Model.query_sql(data_ubah)
        flash('Berhasil mengubah data.', 'success')
        return None
Exemple #7
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    def add_dataSlangword(self):
        slangword = request.form['slangword'].strip()
        kata_asli = request.form['kata_asli'].strip()

        data_tambah = (slangword.lower(), kata_asli.lower()
                       )  # Membuat tupple dari form data masukan

        instance_Model = Models(
            'INSERT INTO tbl_slangword(slangword, kata_asli) VALUES (%s,%s)')
        instance_Model.query_sql(data_tambah)
        flash('Berhasil menambahkan data.', 'success')
        return None
Exemple #8
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    def update_dataPositiveWord(self):
        id = request.form['id']
        kata_positif = request.form['kata_positif'].strip()

        data_ubah = (kata_positif.lower(), id
                     )  # Membuat tupple dari form data masukan

        instance_Model = Models(
            'UPDATE tbl_lexicon_positive SET positive_word=%s WHERE id_positive = %s'
        )
        instance_Model.query_sql(data_ubah)
        flash('Berhasil mengubah data.', 'success')
        return None
    def delete_dataModelling(self):
        id = request.form['id']

        instance_Model = Models('DELETE FROM tbl_model WHERE model_name = %s')
        instance_Model.query_sql(id)

        if os.path.exists('application/static/model_data/' + id):
            os.remove('application/static/model_data/' + id)
            flash(
                'Berhasil menghapus data. File (.json) model latih berhasil dihapus!',
                'success')
        else:
            flash('File (.json) model latih gagal dihapus!', 'error')
            print("\nFile tidak ditemukan!\n")
Exemple #10
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    def register(self):

        username = request.form['username'].strip()
        kata_sandi = request.form['kata_sandi'].strip()
        fullname = request.form['fullname'].strip()

        # cek record (ada?)
        instance_Model = Models(
            'SELECT password, fullname FROM tbl_users WHERE username = %s')
        user = instance_Model.select_row(username)

        # record TIDAK ditemukan
        if user == None:
            data_tambah = (username, 'textmining_' + str(kata_sandi) +
                           '_sentimentanalysis', fullname)
            # simpan data user
            instance_Model = Models(
                'INSERT INTO tbl_users(username, password, fullname) VALUES (%s, %s, %s)'
            )
            instance_Model.query_sql(data_tambah)
            flash('Berhasil mendaftar, silakan masuk.', 'success')
            return True
        flash('Username telah terdaftar.', 'error')
        return False
    def create_dataModeling(self):
        sample_positive = request.form['sample_positive']
        sample_negative = request.form['sample_negative']
        jumlah_sample = int(sample_positive) + int(sample_negative)

        # if sample_positive == sample_negative == sample_netral:
        if sample_positive == sample_negative:
            list_data = [
            ]  # wadah untuk menyimpan data yang diperoleh dari database

            # Select data positif dari tbl_tweet_training sebanyak n record (berdasarkan variabel sample)
            instance_Model = Models(
                "SELECT clean_text, sentiment_type FROM tbl_tweet_training WHERE clean_text IS NOT NULL AND sentiment_type = 'positif' ORDER BY RAND() LIMIT "
                + sample_positive)
            list_data.append(instance_Model.select())
            # Select data negatif dari tbl_tweet_training sebanyak n record (berdasarkan variabel sample)
            instance_Model = Models(
                "SELECT clean_text, sentiment_type FROM tbl_tweet_training WHERE clean_text IS NOT NULL AND sentiment_type = 'negatif' ORDER BY RAND() LIMIT "
                + sample_negative)
            list_data.append(instance_Model.select())

            teks_list = [
            ]  # wadah untuk tweet (clean_text) yang akan dijadikan sebagai model latih
            label_list = [
            ]  # wadah untuk sentimen (sentiment_type) yang akan dijadikan sebagai model latih

            # set data untuk teks_list dan label_list menggunakan data yang telah diambil dari database
            # for index_luar in range(3):
            for index_luar in range(2):
                for index_dalam in range(len(list_data[index_luar])):
                    clean_text = list_data[index_luar][index_dalam][
                        'clean_text']
                    sentiment_type = list_data[index_luar][index_dalam][
                        'sentiment_type']

                    teks_list.append(clean_text)
                    label_list.append(sentiment_type)

            # akses ke kelas Vectorizer
            instance_Vectorizer = Vectorizer(teks_list, label_list)
            # membuat vektor angka
            data_dict = instance_Vectorizer.create_vectorList()

            model_name = 'sentiment_model(' + datetime.today().strftime(
                '%d-%m-%Y %H%M%S') + ').json'
            # model_name = 'sentiment_model('+ datetime.today().strftime('%d-%m-%Y') +').json'

            # Menyimpan model kedalam bentuk .json agar dapat digunakan kembali (untuk proses Evaluasi & Prediksi)
            with open('application/static/model_data/' + model_name,
                      'w') as outfile:
                json.dump(data_dict, outfile, indent=4)

            # Membuat tuple untuk simpan data
            data_simpan = (model_name, jumlah_sample, sample_positive,
                           sample_negative)

            # Insert model ke dalam database
            instance_Model = Models(
                'REPLACE INTO tbl_model(model_name, sentiment_count, sentiment_positive, sentiment_negative) VALUES (%s, %s, %s, %s)'
            )
            # Menjadikan tuple sebagai argumen untuk method query_sql
            instance_Model.query_sql(data_simpan)

            return {
                'model_name': model_name,
                'sentiment_count': jumlah_sample,
                'sentiment_positive': sample_positive,
                'sentiment_negative': sample_negative,
                'data_dict': data_dict
            }
        return {'error': 'Gagal Membuat Model Latih'}