Logo
  • Home
  • About Us
    • Aim and Scope
    • Research Area
    • Impact Factor
    • Indexing
  • For Authors
    • Authors Guidelines
    • How to publish paper?
    • Download Paper format
    • Submit Manuscript
    • Processing Charges
    • Download Copyrights Form
    • Submit Payment-Copyrights
  • Archives
    • Current Issues
    • Past Issues
    • Conference Issues
    • Special Issues
    • Advance Search
  • IJARIIE Board
    • Join as IJARIIE Board
    • Advisory Board
    • Editorial Board
    • Sr. Reviewer Board
    • Jr. Reviewer Board
  • Proposal
    • Conferece Proposal
    • Special Proposal
    • Faqs
  • Contact Us
  • Payment Detail

Call for Papers:Vol.11 Issue.3

Submission
Last date
28-Jun-2025
Acceptance Status In One Day
Paper Publish In Two Days
Submit ManuScript

News & Updates

Submit Article

Dear Authors, Article publish in our journal for Volume-11,Issue-3. For article submission on below link: Submit Manuscript


Join As Board

Dear Reviewer, You can join our Reviewer team without given any charges in our journal. Submit Details on below link: Join As Board


Paper Publication Charges

IJARIIE APP
Download Android App

For Authors

  • How to Publish Paper
  • Submit Manuscript
  • Processing Charges
  • Submit Payment

Archives

  • Current Issue
  • Past Issue

IJARIIE Board

  • Member Of Board
  • Join As Board

Downloads

  • Authors Guidelines
  • Manuscript Template
  • Copyrights Form

Android App

Download IJARIIE APP
  • Authors
  • Abstract
  • Citations
  • Downloads
  • Similar-Paper

Authors

Title: :  SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES
PaperId: :  23029
Published in:   International Journal Of Advance Research And Innovative Ideas In Education
Publisher:   IJARIIE
e-ISSN:   2395-4396
Volume/Issue:    Volume 10 Issue 2 2024
DUI:    16.0415/IJARIIE-23029
Licence: :   IJARIIE is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

Author NameAuthor Institute
NAMITHA PBANNARI AMMAN INSTITUTE OF TECHNOLOGY
VISALI VBANNARI AMMAN INSTITUTE OF TECHNOLOGY
PRAKASH S PBANNARI AMMAN INSTITUTE OF TECHNOLOGY

Abstract

INFORMATION ENGINEERING
Keywords: LSTM(LONG SHORT TERM MEMORY), RNN(RECURRENT NEURAL NETWORKS), Textual data  
Sentiment analysis is an essential part of natural language processing (NLP) and is critical to understanding the subjective elements of textual data, such as product evaluations and social media posts. Because deep learning approaches can recognize complex sequential patterns in text data, they have become highly effective tools in this field. Two such techniques are Long Short-Term Memory (LSTM) and Recurrent Neural Networks (RNN). The goal of this work is to give a thorough understanding of the effectiveness of LSTM and RNN architectures in sentiment analysis by presenting an in-depth examination and implementation of the technique. The methodology is a multi-step procedure that starts with textual data preprocessing. Tokenization, stemming, and vectorization are a few of the preprocessing activities that help transform unprocessed text into a format that deep learning models can understand. The pre processed data is then put into RNN and LSTM networks, which are built to handle sequential data by slowly retaining contextual information. By adding memory cells that may selectively keep or reject input, LSTM, a specialized type of RNN, solves the drawbacks of conventional RNNs and helps the model better capture long-range dependencies by reducing the vanishing gradient issue. The outcomes of the experiments show how well the sentiment analysis model based on LSTM and RNN can reliably identify sentiment from textual data in a variety of domains and datasets. Visualization approaches also improve the interpretability of the model by clarifying the learned representations and illuminating the underlying decision-making process. Overall, by demonstrating the efficiency of deep learning techniques—more especially, LSTM and RNN architectures—in extracting sentiment information from textual data, this research advances sentiment analysis methodologies and opens the door to applications in sentiment monitoring, opinion mining, and market analysis.

Citations

Copy and paste a formatted citation or use one of the links to import into a bibliography manager and reference.

IJARIIE NAMITHA P, VISALI V, and PRAKASH S P. "SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES" International Journal Of Advance Research And Innovative Ideas In Education Volume 10 Issue 2 2024 Page 2157-2160
MLA NAMITHA P, VISALI V, and PRAKASH S P. "SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES." International Journal Of Advance Research And Innovative Ideas In Education 10.2(2024) : 2157-2160.
APA NAMITHA P, VISALI V, & PRAKASH S P. (2024). SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES. International Journal Of Advance Research And Innovative Ideas In Education, 10(2), 2157-2160.
Chicago NAMITHA P, VISALI V, and PRAKASH S P. "SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES." International Journal Of Advance Research And Innovative Ideas In Education 10, no. 2 (2024) : 2157-2160.
Oxford NAMITHA P, VISALI V, and PRAKASH S P. 'SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES', International Journal Of Advance Research And Innovative Ideas In Education, vol. 10, no. 2, 2024, p. 2157-2160. Available from IJARIIE, https://ijariie.com/AdminUploadPdf/SENTIMENTAL_ANALYSIS_USING_DEEP_LEARNING_TECHNIQUES_ijariie23029.pdf (Accessed : ).
Harvard NAMITHA P, VISALI V, and PRAKASH S P. (2024) 'SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES', International Journal Of Advance Research And Innovative Ideas In Education, 10(2), pp. 2157-2160IJARIIE [Online]. Available at: https://ijariie.com/AdminUploadPdf/SENTIMENTAL_ANALYSIS_USING_DEEP_LEARNING_TECHNIQUES_ijariie23029.pdf (Accessed : )
IEEE NAMITHA P, VISALI V, and PRAKASH S P, "SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES," International Journal Of Advance Research And Innovative Ideas In Education, vol. 10, no. 2, pp. 2157-2160, Mar-App 2024. [Online]. Available: https://ijariie.com/AdminUploadPdf/SENTIMENTAL_ANALYSIS_USING_DEEP_LEARNING_TECHNIQUES_ijariie23029.pdf [Accessed : ].
Turabian NAMITHA P, VISALI V, and PRAKASH S P. "SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES." International Journal Of Advance Research And Innovative Ideas In Education [Online]. volume 10 number 2 ().
Vancouver NAMITHA P, VISALI V, and PRAKASH S P. SENTIMENTAL ANALYSIS USING DEEP LEARNING TECHNIQUES. International Journal Of Advance Research And Innovative Ideas In Education [Internet]. 2024 [Cited : ]; 10(2) : 2157-2160. Available from: https://ijariie.com/AdminUploadPdf/SENTIMENTAL_ANALYSIS_USING_DEEP_LEARNING_TECHNIQUES_ijariie23029.pdf
BibTex EndNote RefMan RefWorks

Number Of Downloads



Save in Google Drive

Similar-Paper

TitleArea of ResearchAuther NameAction
DYNAMIC MULTI-KEY AUTHENTICATION FOR IOT SYSTEM USING SECURE VAULTSInformation Science EngineeringVinay M G Download
INTEGRATING THE FLIPPED CLASSROOM MODEL WITH PROJECT-BASED LEARNING IN TEACHING MICROSOFT POWERPOINT: A CASE STUDY AT THE UNIVERSITY OF AGRICULTURE AND FORESTRY, THAI NGUYEN UNIVERSITYEducationNguyen Ngoc Lan Download
Eye Glaucoma Detection Using Machine LearningInformation Science & Engineering Uday M B Download
The Shift to Electronic Payment Methods in Commercial Banks: Benefits and ChallengesDigital BankingEssam Zaid Shoaib Al-Dabbashi Download
DEEP ADAPTIVE FEATURE FUSION FOR ORIGIN DESTINATION PASSENGER FLOW FORECASTING IN MASS EVENTSInformation TechnologyBHUKYA RAJAKUMAR Download
REAL TIME EMERGENCY VEHICLE DETECTION USING MACHINE LEARNINGComputer Science and EngineeringAravinthkumar A Download
COLLEGIUMBOT: AN AI-DRIVEN CHATBOT FOR ENHANCING STUDENT ENGAGEMENT AND CAMPUS LIFE THROUGH VOICE-BASED INTERACTIONInformation TechnologySIVASANKAR CHITTOOR Download
AUTOMATED VIDEO TEXT EXTRACTION AND SUMMARIZATION SYSTEM USING LSTM NETWORKSInformation TechnologyT SUNDARARAJULU Download
BLOOD GROUP DETECTION USING FINGERPRINTInformation TechnologyN ANITHA Download
SOLAR RADIATION PREDICTION USING MACHINE LEARNINGInformation TechnologyM RAM KUMAR Download
DEFENDING AGAINST POISONING ATTACKS IN FEDERATED LEARNING WITH BLOCKCHAININFORMATION TECHNOLOGYT.SUNDARARAJULU. Download
DEEP CONVOLUTIONAL NEURAL NETWORK FOR ROBUST DETECTION OF OBJECT-BASED FORGERIES IN ADVANCED VIDEOINFORMATION TECHNOLOGYD.VISWASAHITYA Download
SMART CAR PRICE PREDICTOR USING MACHINE LEARNINGINFORMATION TECHNOLOGYS.JASMIN Download
SUPERVISED LEARNING MODEL INSIGHTS AND EVALUATIONInformation TechnologyB. RAJA KUMAR Download
Enhancing Forensic Data Protection: A Robust Storage Framework with Verified Access and Intelligent Key-Based EncryptionComputer Science EngineeringN ANITHA Download
12
For Authors
  • Submit Paper
  • Processing Charges
  • Submit Payment
Archive
  • Current Issue
  • Past Issue
IJARIIE Board
  • Member Of Board
  • Join As Board
Privacy and Policy
Follow us

Contact Info
  • +91-8401209201 (India)
  • +86-15636082010 (China)
  • ijariiejournal@gmail.com
  • M-20/234 Ami Appt,
    Nr.Naranpura Tele-Exch,
    Naranpura,
    Ahemdabad-380063
    Gujarat,India.
Copyright © 2025. IJARIIE. All Rights Reserved.