PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG

Bandung is a city with tons of attractive tourism. Visitor review regarding a tourist destination can be used as a feedback for tourist destination management. These reviews may include many aspects. ABSA or aspect-based sentiment analysis is a way to determine the polarity of an opinion in feature/...

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Main Author: Ibnu Sulistiyono, Balya
Format: Final Project
Language:Indonesia
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Online Access:https://digilib.itb.ac.id/gdl/view/64895
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:64895
spelling id-itb.:648952022-06-15T15:11:36ZPENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG Ibnu Sulistiyono, Balya Teknologi Indonesia Final Project aspect-based sentiment analysis, aspect extraction, aspect categorization, conditional random field, maximum entropy INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/64895 Bandung is a city with tons of attractive tourism. Visitor review regarding a tourist destination can be used as a feedback for tourist destination management. These reviews may include many aspects. ABSA or aspect-based sentiment analysis is a way to determine the polarity of an opinion in feature/aspect level. One of the important task in ABSA is aspect extraction and categorization. Therefore, a model that may perform this task is needed, along with its most optimal hyperparameter. For aspect extraction with default hyperparameter, the highest F1-score average is achieved by averaged perceptron algorithm (avg. F1=0.4743) and the lowest is reached by adaptive regularization of weighted vector (avg. F1=0.3727). Moreover, the fastest fitting and scoring time average is achieved by adaptive regularization of weighted vector (avg. time=3.3518) and the slowest is achieved by L-BFGS algorithm (avg. time=4.4818). For aspect categorization with default hyperparameter, the highest F1-score average is achieved by SAG solver (avg. F1=0.5210) and the lowest is reached by Newton-CG and L-BFGS (avg. F1=0.4270). Moreover, the fastest fitting and scoring time average is achieved by SAGA (avg. time=2.4693) and the slowest is achieved by SAG (avg. time=5.3123). For aspect extraction with default hyperparameter, the highest F1-score average is achieved by algorithm=l2sgd, c2=0.1, calibration_eta=2=0.2, calibration_rate=1.5, max_iteration=2000 (avg. F1= 0.50098). Moreover, the fastest fitting and scoring time average is achieved by algorithm=arow, gamma=0.01, max_iteration=50, variance=0.1 (avg. time= 2.529). For aspect categorization with default hyperparameter, the highest F1-score average is achieved by solver=Liblinear, penalty=l1, C=1000, max_iteration=200 (avg. F1= 0.66238). Moreover, the fastest fitting and scoring time average is achieved by solver=Liblinear, penalty=l1, C=1000, mac_iteration=150 (avg. time= 3.215). text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
topic Teknologi
spellingShingle Teknologi
Ibnu Sulistiyono, Balya
PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG
description Bandung is a city with tons of attractive tourism. Visitor review regarding a tourist destination can be used as a feedback for tourist destination management. These reviews may include many aspects. ABSA or aspect-based sentiment analysis is a way to determine the polarity of an opinion in feature/aspect level. One of the important task in ABSA is aspect extraction and categorization. Therefore, a model that may perform this task is needed, along with its most optimal hyperparameter. For aspect extraction with default hyperparameter, the highest F1-score average is achieved by averaged perceptron algorithm (avg. F1=0.4743) and the lowest is reached by adaptive regularization of weighted vector (avg. F1=0.3727). Moreover, the fastest fitting and scoring time average is achieved by adaptive regularization of weighted vector (avg. time=3.3518) and the slowest is achieved by L-BFGS algorithm (avg. time=4.4818). For aspect categorization with default hyperparameter, the highest F1-score average is achieved by SAG solver (avg. F1=0.5210) and the lowest is reached by Newton-CG and L-BFGS (avg. F1=0.4270). Moreover, the fastest fitting and scoring time average is achieved by SAGA (avg. time=2.4693) and the slowest is achieved by SAG (avg. time=5.3123). For aspect extraction with default hyperparameter, the highest F1-score average is achieved by algorithm=l2sgd, c2=0.1, calibration_eta=2=0.2, calibration_rate=1.5, max_iteration=2000 (avg. F1= 0.50098). Moreover, the fastest fitting and scoring time average is achieved by algorithm=arow, gamma=0.01, max_iteration=50, variance=0.1 (avg. time= 2.529). For aspect categorization with default hyperparameter, the highest F1-score average is achieved by solver=Liblinear, penalty=l1, C=1000, max_iteration=200 (avg. F1= 0.66238). Moreover, the fastest fitting and scoring time average is achieved by solver=Liblinear, penalty=l1, C=1000, mac_iteration=150 (avg. time= 3.215).
format Final Project
author Ibnu Sulistiyono, Balya
author_facet Ibnu Sulistiyono, Balya
author_sort Ibnu Sulistiyono, Balya
title PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG
title_short PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG
title_full PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG
title_fullStr PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG
title_full_unstemmed PENERAPAN ALGORITMA MACHINE LEARNING CONDITIONAL RANDOM FIELD DAN MAXIMUM ENTROPY PADA KATEGORISASI ASPEK TEMPAT WISATA DI BANDUNG
title_sort penerapan algoritma machine learning conditional random field dan maximum entropy pada kategorisasi aspek tempat wisata di bandung
url https://digilib.itb.ac.id/gdl/view/64895
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