A Semantic Search over Encrypted Cloud Data based on Word Embedding 研

碩士 === 國立臺灣科技大學 === 資訊工程系 === 107 === The services of cloud storage have been very popular in recent years. With the superiority of low-cost and high-capacity, people are inclined to move their data from a local computer to a remote facility such as the cloud server. The majority of the existing me...

Full description

Bibliographic Details
Main Authors: Hsiao-Yi Chen, 陳曉毅
Other Authors: Tai-Lin Chin
Format: Others
Language:zh-TW
Published: 2019
Online Access:http://ndltd.ncl.edu.tw/handle/7b4m86
id ndltd-TW-107NTUS5392062
record_format oai_dc
spelling ndltd-TW-107NTUS53920622019-10-24T05:20:28Z http://ndltd.ncl.edu.tw/handle/7b4m86 A Semantic Search over Encrypted Cloud Data based on Word Embedding 研 在加密雲上基於詞嵌入之語意搜尋 Hsiao-Yi Chen 陳曉毅 碩士 國立臺灣科技大學 資訊工程系 107 The services of cloud storage have been very popular in recent years. With the superiority of low-cost and high-capacity, people are inclined to move their data from a local computer to a remote facility such as the cloud server. The majority of the existing methods for searching data on the cloud concentrate on keyword-based search scheme. With the rise of information security awareness, data owners hope that the data placed in the cloud server can keep privacy from being snooped by untrusted users, and users also hope that their query content will not be record by untrusted server. Therefore, encrypting data and queries is the most common way.However, the encrypted ciphertext has lost the relationship of the original plaintext, which will cause many difficulties in keyword search.In addition, most of the existing search methods are not able to efficiently obtain the information that the user is really interested in from the user's query keywords. To address these problems, this study proposes a word embedding based semantic search scheme for searching documents on the cloud. The word embedding model is implemented by a neural network. The neural network model can learn the semantic relationship between words in the corpus and express the words in vectors. By using a word-embedded model, a document index vector and a query vector can be generated. The proposed scheme can encrypt the query vector and the index vector into ciphertext, which can preserve the efficiency of the search while protecting the privacy of the user and the security of the document. Tai-Lin Chin 金台齡 2019 學位論文 ; thesis 47 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 國立臺灣科技大學 === 資訊工程系 === 107 === The services of cloud storage have been very popular in recent years. With the superiority of low-cost and high-capacity, people are inclined to move their data from a local computer to a remote facility such as the cloud server. The majority of the existing methods for searching data on the cloud concentrate on keyword-based search scheme. With the rise of information security awareness, data owners hope that the data placed in the cloud server can keep privacy from being snooped by untrusted users, and users also hope that their query content will not be record by untrusted server. Therefore, encrypting data and queries is the most common way.However, the encrypted ciphertext has lost the relationship of the original plaintext, which will cause many difficulties in keyword search.In addition, most of the existing search methods are not able to efficiently obtain the information that the user is really interested in from the user's query keywords. To address these problems, this study proposes a word embedding based semantic search scheme for searching documents on the cloud. The word embedding model is implemented by a neural network. The neural network model can learn the semantic relationship between words in the corpus and express the words in vectors. By using a word-embedded model, a document index vector and a query vector can be generated. The proposed scheme can encrypt the query vector and the index vector into ciphertext, which can preserve the efficiency of the search while protecting the privacy of the user and the security of the document.
author2 Tai-Lin Chin
author_facet Tai-Lin Chin
Hsiao-Yi Chen
陳曉毅
author Hsiao-Yi Chen
陳曉毅
spellingShingle Hsiao-Yi Chen
陳曉毅
A Semantic Search over Encrypted Cloud Data based on Word Embedding 研
author_sort Hsiao-Yi Chen
title A Semantic Search over Encrypted Cloud Data based on Word Embedding 研
title_short A Semantic Search over Encrypted Cloud Data based on Word Embedding 研
title_full A Semantic Search over Encrypted Cloud Data based on Word Embedding 研
title_fullStr A Semantic Search over Encrypted Cloud Data based on Word Embedding 研
title_full_unstemmed A Semantic Search over Encrypted Cloud Data based on Word Embedding 研
title_sort semantic search over encrypted cloud data based on word embedding 研
publishDate 2019
url http://ndltd.ncl.edu.tw/handle/7b4m86
work_keys_str_mv AT hsiaoyichen asemanticsearchoverencryptedclouddatabasedonwordembeddingyán
AT chénxiǎoyì asemanticsearchoverencryptedclouddatabasedonwordembeddingyán
AT hsiaoyichen zàijiāmìyúnshàngjīyúcíqiànrùzhīyǔyìsōuxún
AT chénxiǎoyì zàijiāmìyúnshàngjīyúcíqiànrùzhīyǔyìsōuxún
AT hsiaoyichen semanticsearchoverencryptedclouddatabasedonwordembeddingyán
AT chénxiǎoyì semanticsearchoverencryptedclouddatabasedonwordembeddingyán
_version_ 1719277068541231104