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International Journal of Scientific Research in Science, Engineering and Technology
Print ISSN: 2395-1990 | Online ISSN : 2394-4099 (www.ijsrset.com)
doi : https://doi.org/10.32628/IJSRSET
439
Survey on Multi keyword Ranked Search Scheme over Encrypted Data
Vishal Jalindar Gondil, Prof. H. A. Hingoliwala
Department of Computer Engineering, Jaywantrao Sawant College of Engineering, Pune, Maharashtra, India
Article Info
Volume 8 Issue 2
Page Number : 439-445
Publication Issue :
March-April-2021
Article History
Accepted : 15 April 2021
Published : 30 April 2021
ABSTRACT
In recent years, the advancements and the fame of cloud computing are
increasing which is actuating the data owners to keep their personal and
professional data on public cloud servers like Amazon, Microsoft, Google,
Apple, etc with the help of data outsourcing. The other advantage of
outsourcing the data over cloud servers is for high benefit and lesser cost in
managing the data and the data can be accessed from anywhere and at any
time. However, for privacy concerns, the data that are highly sensitive should
be encrypted before outsourcing. Taking into consideration the huge amount of
data users and files that are present in the cloud, it is important that multiple
keywords should be allowed in the searching request and retrieve the files
relevant to those keywords. There are some methods and solutions offered to
provide privacy and security for the data over the cloud server. Since the
document vector's dimension is equal to the dictionary's size, traditional
searchable encryption schemes based on the bag-of-words model require a lot
of space to store the document set's index. The bag-of-words model often
ignores semantic information between keywords and documents, resulting in
potentially meaningless search results for users. The natural language
processing (NLP) model can be used as it extracts document features from word
and paragraph context information. The features can be used to assess
document similarity and provide latent semantics information. The NLP model
was used to construct a semantic-conscious multi keyword graded search
scheme in this survey on dynamic semantic aware multi keyword ranked
search.
Keywords : Cloud Computing, Data Outsourcing and security, Natural
Language Processing, Multi-keyword Search.
I. INTRODUCTION
Consumer-centric cloud computing, which has
evolved in recent years, is a new model for
enterprise-level IT that provides on-demand high-
quality software and services from a shared group of
computing resources. Data storage is a basic service
provided by cloud system. By making use of the
cloud, the users can be completely released from the
troublesome local data storage and maintenance. Also,
it also has a significant risk to the confidentiality of
those stored files. Specifically, the cloud servers