ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK

Answer finder built on this system have yes / no answers to confirm the location of an object and object comparison. The system is made to answer questions by inference on a set of sentences. In the case of the search for answers used to build 4 Deep Neural Network architectures, that are RNN, BiL...

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Main Author: Rahmawati, Sari
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/44159
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:44159
spelling id-itb.:441592019-10-02T10:49:05ZANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK Rahmawati, Sari Indonesia Theses Deep Neural Network, Question Answering, Memory Network, BiLSTM, RNN INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/44159 Answer finder built on this system have yes / no answers to confirm the location of an object and object comparison. The system is made to answer questions by inference on a set of sentences. In the case of the search for answers used to build 4 Deep Neural Network architectures, that are RNN, BiLSTM, End to End Memory Network and Dynamic Memory Network. The RNN and BiLSTM models are sequence to sequence models used with fixed-length vectors. Both of these models have weaknesses in documents with sequences that are too long. The next model is the End to End memory network which has a memory mechanism that can write and read relevant document vectors more effectively, this model has advantages in faster performance compared to other models. The final model is the Dynamic Memory Network that works by using attention memory to solve problems experienced in the two previous models. Based on the experimental results, the Deep Neural Network method has good accuracy results in the case of object size comparison by getting 90% results in the End to End Memory Network architecture, Dynamic Memory Network and BiLSTM. In the object comparison dataset the best results are shown in End to End Memory Network and Dynamic Memory Network with an average of 90% and get the highest results 92% in test case 22 with a learning rate of 0.001 and a dropout value of 0.2. The results of 92% were obtained by the DMN case with a learning rate of 0.02 and a dropout of 0.5. The case of finding the location of the object gets good results on End to End Memory Network and BiLSTM with accuracy values above 80% in some experiments. The results of experiments conducted also have higher accuracy compared to other studies in Indonesian for reasoning cases. For End to End Memory Network architecture, it has more consistent results for each test case given with an average f1 score of 77%. 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
description Answer finder built on this system have yes / no answers to confirm the location of an object and object comparison. The system is made to answer questions by inference on a set of sentences. In the case of the search for answers used to build 4 Deep Neural Network architectures, that are RNN, BiLSTM, End to End Memory Network and Dynamic Memory Network. The RNN and BiLSTM models are sequence to sequence models used with fixed-length vectors. Both of these models have weaknesses in documents with sequences that are too long. The next model is the End to End memory network which has a memory mechanism that can write and read relevant document vectors more effectively, this model has advantages in faster performance compared to other models. The final model is the Dynamic Memory Network that works by using attention memory to solve problems experienced in the two previous models. Based on the experimental results, the Deep Neural Network method has good accuracy results in the case of object size comparison by getting 90% results in the End to End Memory Network architecture, Dynamic Memory Network and BiLSTM. In the object comparison dataset the best results are shown in End to End Memory Network and Dynamic Memory Network with an average of 90% and get the highest results 92% in test case 22 with a learning rate of 0.001 and a dropout value of 0.2. The results of 92% were obtained by the DMN case with a learning rate of 0.02 and a dropout of 0.5. The case of finding the location of the object gets good results on End to End Memory Network and BiLSTM with accuracy values above 80% in some experiments. The results of experiments conducted also have higher accuracy compared to other studies in Indonesian for reasoning cases. For End to End Memory Network architecture, it has more consistent results for each test case given with an average f1 score of 77%.
format Theses
author Rahmawati, Sari
spellingShingle Rahmawati, Sari
ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK
author_facet Rahmawati, Sari
author_sort Rahmawati, Sari
title ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK
title_short ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK
title_full ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK
title_fullStr ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK
title_full_unstemmed ANSWER FINDER YES / NO IN INDONESIAN LANGUAGE BASED ON INFERENCE USING DEEP NEURAL NETWORK
title_sort answer finder yes / no in indonesian language based on inference using deep neural network
url https://digilib.itb.ac.id/gdl/view/44159
_version_ 1822926791519502336