ISSN Approved Journal No: 2320-2882 | Impact factor: 7.97 | ESTD Year: 2013
Scholarly open access journals, Peer-reviewed, and Refereed Journals, Impact factor 7.97 (Calculate by google scholar and Semantic Scholar | AI-Powered Research Tool) , Multidisciplinary, Monthly, Indexing in all major database & Metadata, Citation Generator, Digital Object Identifier(DOI)
IJCRT Journal front page | IJCRT Journal Back Page |
Paper Title: SENTIMENTS ANALYSIS ON SARS-COV-2 LOCKDOWN STRATEGY USING MACHINE LEARNING TECHNIQUES
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020020
Register Paper ID - 211732
Title: SENTIMENTS ANALYSIS ON SARS-COV-2 LOCKDOWN STRATEGY USING MACHINE LEARNING TECHNIQUES
Author Name(s): Ms. Indhra Muthuswamy, Amol Nimbalkar, Ajay Sahane, Rushikesh Shitole, Ankush Motipwar
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 83-88
Year: November 2021
Downloads: 691
Twitter, as a social network, is a very common medium to share thoughts and communicate with other people in the online world. Tweets collected in aggregate will represent public opinion about events. This paper gives an optimistic or negative feeling to Twitter posts using a well-known machine learning approach for text categorization. In addition, we use manually labeled (positive/negative) tweets to create a qualified system to perform a task. The task is looking for a correlation between twitter sentiment and events that have occurred. The qualified model is built on the classification system of Naive Bayes and Support Vector Machine(SVM). We also used external lexicons to detect arbitrary or objective tweets, added Unigram and Bigram features, and used TF-IDF (Term Frequency-Inverse Document Frequency) to filter out the features. We used the Twitter Streaming API and some of the official hash tags for mine, filter and process tweets to examine the public's view of unusual incidents. The same method can be used as a basis for forecasting future events. In the form of the twitter sentiment analysis, the most basic sentiment analysis quantifies the mood of a tweet or message by counting the number of positive and negative terms.
Licence: creative commons attribution 4.0
Sentiments Analysis On SARS-Cov-2 Lockdown Strategy Using Machine Learning Techniques
Paper Title: COLLABORATION IN MULTICLOUD COMPUTING ENVIRONMENTS: FRAMEWORK AND SECURITY ISSUES
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020019
Register Paper ID - 211733
Title: COLLABORATION IN MULTICLOUD COMPUTING ENVIRONMENTS: FRAMEWORK AND SECURITY ISSUES
Author Name(s): Sanjana Sanap, Sawani Erande, Ashish Thorat, Shital Biradar, Sarita Patil
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 77-82
Year: November 2021
Downloads: 719
Cloud computing is a type of Internet-based computing that provides shared computer processing resources and data to computers and other devices on demand. Cloud mashups are a recent trend; mashups combine services from multiple clouds into a single service or application, possibly with on-premises (client-side) data and services. This service composition lets CSPs offer new functionalities to clients at lower development costs. Today, cloud mashups require pre-established agreements among providers as well as the use of custom-built, tools that combine services through low-level, tightly controlled and constraining integration techniques. This approach to building new collaborative services does not support agility, flexibility, and openness. Our proposed framework for generic cloud collaboration allows clients and cloud applications to simultaneously use services from cloud and route data among multiple clouds. This framework supports universal and dynamic collaboration in a multi-cloud system. It lets clients simultaneously use services from multiple clouds without prior business agreements among cloud providers, and without adopting common standards and specifications.
Licence: creative commons attribution 4.0
Collaboration in Multicloud Computing Environments: Framework and Security Issues
Paper Title: DETECT COVID-19 AND PNEUMONIA INFECTION FROM CHEST X-RAY USING IMAGE PROCESSING.
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020018
Register Paper ID - 211735
Title: DETECT COVID-19 AND PNEUMONIA INFECTION FROM CHEST X-RAY USING IMAGE PROCESSING.
Author Name(s): Piyush Sachin Patil, Shubham Arvind Jadhav, Ashish Nandkishor Patil, Suchit Suresh Patil, Apashabi Pathan
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 72-76
Year: November 2021
Downloads: 706
Licence: creative commons attribution 4.0
Pneumonia and COVID-19, Convolutional Neural Network and Architecture, Deep Learning
Paper Title: DEVOPS CLOUD AUTOMATION WITH COST-EFFECTIVENESS
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020017
Register Paper ID - 211736
Title: DEVOPS CLOUD AUTOMATION WITH COST-EFFECTIVENESS
Author Name(s): Ashutosh Kodgire, Shreays Basutkar, Pravin Khaladkar, Vikrant Kotkar, Minaxi Doorwar
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 69-71
Year: November 2021
Downloads: 696
Cloud computing means on-demand computer resources. like data storage, computing power,etc. Cloud Computing term is used to describe availability of data centers for many internet users. any hardware purchase by user is not needed. In addition to regulate costs on public clouds, it's essential to trace what's running, clear unused resources, and adapt the infrastructure to actual operating requirements. Cloud automation helps administrators monitor their environment and automatically adjust workloads as required. in 2019 market size of cloud services was valued $264 Approx., and predicted success in $927 Approx. by 2027. Cloud computing refers to the model or network where a program or applications run, which may be accessed by many devices or servers at a time. To run faster, better and cost-effectively most of the enterprises will shift towards cloud in 2020.
Licence: creative commons attribution 4.0
cloud, cloud computing , DevOps, automation, cost-optimization
Paper Title: A REVIEW PAPER ON ATTENDANCE MANAGEMENT SYSTEM USING FACE RECOGNITION
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020016
Register Paper ID - 211737
Title: A REVIEW PAPER ON ATTENDANCE MANAGEMENT SYSTEM USING FACE RECOGNITION
Author Name(s): Soundarya S, Ashwini P, Rucha W, Gaurav K, MS.Savitri Patil
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 63-68
Year: November 2021
Downloads: 914
Identification of any peoples in any organization or colleges for the purpose of attendance marking is one such a software of face recognition. The use of Attendance Management System is to performs the regular activities of attendance marking and analysis with reduced human intervention. In this method the camera is settled and it will capture the image, the faces are recognize after that recognized along with the data base an deternally the attendance is marked. This system is depend on face detection and recognition concept, that detects the employees or student using web cam when they arrive in the office or class room and marks the attendance by recognizing.
Licence: creative commons attribution 4.0
Face Recognition, Attendance Management System, Haar Cascade.
Paper Title: IOT SYSTEM FOR MONITORING HEALTH AND TRACKING OF SOLDIER
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020015
Register Paper ID - 211739
Title: IOT SYSTEM FOR MONITORING HEALTH AND TRACKING OF SOLDIER
Author Name(s): Nilesh Rakhade, Lokesh Choudhary, Anjali Bhongade, Sujit Dhanegaokar, Poonam Dhamal
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 58-62
Year: November 2021
Downloads: 730
Military Status and Tracking System the Medium Military and Trail System allows soldiers to track the current state of the Army and monitor their health, such as temperature and heart rate. The system also includes additional features to help the military manually seek help and send distress messages to the military when needed. GSM modems send latitude and longitude positions in the link with the help of the military, which can track the current military status. This system is very helpful in getting medical information from the military and providing immediate medical care and rescue.
Licence: creative commons attribution 4.0
Arduino Board, GPS, GSM modem, Distress signals, Encryption, Decryption. Arduino Mega, GPS, Soldier, Tracking, Heart- Rate Sensor, Temperature Sensor.
Paper Title: REAL-TIME LOCATING SYSTEM FOR INDUSTRIAL MANAGEMENT USING ULTRAWIDEBAND (UWB)
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020014
Register Paper ID - 211740
Title: REAL-TIME LOCATING SYSTEM FOR INDUSTRIAL MANAGEMENT USING ULTRAWIDEBAND (UWB)
Author Name(s): Sadhana Mhetre, Pallavi Salunke, Aliya Chulbul, Abhijit Wankhede, Dr. Simran Khiani
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 54-57
Year: November 2021
Downloads: 707
There are various Real-Time Locating Systems (RTLS) available in the market. Each type of RTLS is used for different business solutions, depending on its range. There is an RTLS that gives the highest precision than ever, that is UltraWide band (UWB) RTLS. The objective behind this research is to develop an RTLS system using Ultra-Wide band Technology which will monitor employees working in the Manufacturing industry.
Licence: creative commons attribution 4.0
RTLS, UWB, Employees, Industry, Anchor, Tag
Paper Title: DATA REDUCTION IN WSN USING MACHINE LEARNING FOR CCTV DATA
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020013
Register Paper ID - 211741
Title: DATA REDUCTION IN WSN USING MACHINE LEARNING FOR CCTV DATA
Author Name(s): Suraj Ingle, Jagruti Godambe, Nikita Deore, Mr.Ramesh Patole, Aishwarya Ashte
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 50-53
Year: November 2021
Downloads: 700
Wireless sensor networks consist of spatially distributed sensor nodes to sensing, processing, and monitoring environmental parameters to reporting at the sink node (base station). Sensor nodes are transmitting data from the sensor node to the base station. Sensor nodes are measured data adaptively or dynamically using throttling techniques to reduce data and transmit it to the base station. In throttling data reduction technique threshold exceed data transmit from sensor nodes to sink node. In WSN minimize energy consumption using the data reduction throttling algorithm to reduce the size of data. Here, we proposed a Controlled Duty Cycle Scheme for minimizing energy consumption in a wireless sensor network. The controlled Duty Cycle Scheme is used for energy efficiency to increase routing fairness. The main goal of data reduction with the Controlled Duty Cycle techniqueis to increase the life of the Wireless sensor network by consuming minimum energy.
Licence: creative commons attribution 4.0
Paper Title: AUTOMATIC NUMBER PLATE RECOGNITION SYSTEM FOR VEHICLE IDENTIFICATION USING MACHINE LEARNING
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020012
Register Paper ID - 211742
Title: AUTOMATIC NUMBER PLATE RECOGNITION SYSTEM FOR VEHICLE IDENTIFICATION USING MACHINE LEARNING
Author Name(s): Ms. Sayali Lokhande, Ms.Pragati Sahane, Ms. Sonali Katare, Ms. Dnyaneshawari Tawhare, Mrs.Sweta Khandekar
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 47-49
Year: November 2021
Downloads: 696
Licence: creative commons attribution 4.0
AUTOMATIC NUMBER PLATE RECOGNITION SYSTEM FOR VEHICLE IDENTIFICATION USING MACHINE LEARNING
Paper Title: IOT AND INTRUSION DETECTION SYSTEM FOR SMART CITIES BASED ON DEEP MIGRATION LEARNING
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020011
Register Paper ID - 211743
Title: IOT AND INTRUSION DETECTION SYSTEM FOR SMART CITIES BASED ON DEEP MIGRATION LEARNING
Author Name(s): Aditya Kshirsagar, Akash Gharat, Aniruddha Kulkarni, Kanahaiya Bhangadiya, Priya Ujawe
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 43-46
Year: November 2021
Downloads: 712
Licence: creative commons attribution 4.0
Moves/Activity Recognition, Message Alert, Arduino uno /IDE.
Paper Title: STOCK MARKET MONITORING USING RASPBERRY PI
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020010
Register Paper ID - 211744
Title: STOCK MARKET MONITORING USING RASPBERRY PI
Author Name(s): Mr. Harsh Sangade, Mr. Nagesh Shelke, Ms. Niharika Pagar, Mr. Shuham Bhapkar, Mrs. Apashabi Pathan
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 40-42
Year: November 2021
Downloads: 764
The Internet of Things (IoT) inevitably changes the way organizations communicate and organize day-to-day business and industry processes. Its adoption has proven to be well suited to sectors that hold large amounts of assets and integrates complex and distributed processes. This study analyzes the enormous potential of using IoT technologies (i.e., data-driven applications or embedded automation and intelligent dynamic systems) to transform modern wars and offer similar benefits to those in the industry. Stock analysis using data mining will be useful for new investors to invest in the stock market depending on the various aspects considered by the software. The stock market includes day-to-day operations such as Sensex calculations, stock exchanges. The exchange offers an efficient and transparent market for equity trading, debt instruments and acquired assets. Our software will analyze Sensex based on the company's stock price. So in this project we will use a python based system on Raspberry Pi (IoT). The app will basically monitor the stock prices in the stock market. Also try to make a trader analysis, that it is easier for the stock market trader to choose a particular stock / buy stock.
Licence: creative commons attribution 4.0
Stock Market Monitoring Using Raspberry Pi
Paper Title: SHARE MARKET ANALYSIS AND PREDICTION
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020009
Register Paper ID - 211745
Title: SHARE MARKET ANALYSIS AND PREDICTION
Author Name(s): CHETAN BHAGAT, MAYURKUMAR BORSE, MANOJ CHAVAN, DNYANESHWAR JADHAV, MS. MINAXI DOORWAR
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 35-39
Year: November 2021
Downloads: 718
Nowadays, the prediction of share market prices and conditions has become a major researched topic amongst the data scientists, investment bankers, and stock brokers. As, the behavior of share market is very nonlinear and volatile in nature, it makes a very high-risk investment. Consequently, a lot of researchers have came up with their efforts to forecast the share market and average movement. Researchers have used various methods in computer science and economics in their illustrate to gain a piece of this volatile information and make great fortune out of the share market investment. The approaches like data mining and machine learning approaches can incorporate into Business Intelligence (BI) systems to help users for decision support in many real-life applications. This paper presents the brief survey of application of machine learning in share market prediction and investigates various techniques for the share market prediction using like Artificial Neural Network (ANN) and Support Vector Machine (SVM). ANN is non- linear and non- parametric classifier which is viable for forecasting of share prices. Support Vector Machine focuses on marginal values rather than average values for the classification predicting model. The aim of this paper is to provide a review of the application of machine learning in share market prediction to determine what can be done in the future.
Licence: creative commons attribution 4.0
Share Market, Machine Learning
Paper Title: FACIAL EMOTION RECOGNITION USING DEEP LEARNING (CNN)
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020008
Register Paper ID - 211746
Title: FACIAL EMOTION RECOGNITION USING DEEP LEARNING (CNN)
Author Name(s): PRAMOD JADHAV, SHREYASH DHAPKE, POOJA HANGLOO, SAKSHI VAIDYA, MS. SAVITRI PATIL
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 32-34
Year: November 2021
Downloads: 734
The emotions, can be defined in simple words are what people feel. The face is probably the simplest approaches to separate the individual personality of one another Face recognition is a personal identification system that uses personal characteristics of a person to identify the person's identity and its Facial expressions. There are methods to identify expressions using machine learning and Artificial Intelligence techniques, this work attempts to use deep learning and image classification method to recognize facial expressions and classify these expressions according to the images. Various datasets are traversed for training expression recognition model are explained in this paper. We have used for expression recognition with FER2013 (Facial Expression Recognition).
Licence: creative commons attribution 4.0
Face Emotion Recognition, Face Detection, Feature Extraction, Classification, Convolutional Neural Network
Paper Title: DETECTING EMOTIONS USING VOICE
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020007
Register Paper ID - 211747
Title: DETECTING EMOTIONS USING VOICE
Author Name(s): Mazeen Mukaadam, Vikash Purbey, Aryan Dwivedi, Mohammadrameez Shaikh, Prof. Poonam Dhamal
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 29-31
Year: November 2021
Downloads: 706
Perceiving feeling from voice has become one the dynamic examination subjects in discourse preparing and in applications dependent on human-PC connection. This venture leads a trial concentrate on perceiving feelings from human discourse. The feelings considered for the analyses incorporate nonpartisan, outrage, happiness and pity. One of the principle highlight characteristic considered in the pre-arranged dataset was the top to-top distance acquired from the graphical portrayal of the discourse signals. The motivation behind this undertaking is to get ease acknowledgment of different feelings in voice utilizing python.
Licence: creative commons attribution 4.0
MCQ , NLP , BERT , WordNet
Paper Title: VISUAL PRODUCT IDENTIFICATION FOR BLIND
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020006
Register Paper ID - 211748
Title: VISUAL PRODUCT IDENTIFICATION FOR BLIND
Author Name(s): Mobin Isak Hawaldar, Stuti Warghat, Subodh Joshi, Professor Ramesh Patole
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 25-28
Year: November 2021
Downloads: 709
It is hard for visionless individuals to peruse any kind of text like items or labels and more. In this manner, the advancement of framework that can give a sound yield to themis fundamental so they can undoubtedly move and take care of their job with no kind of hindrance. This application is for visionless individuals mainly for shopping so that it provides details written on tag through speech. Not many items can't keep going forever, particularly with regards to food and medicines it is important to know the the description, manufacture also, expiry date of items while purchasing. To give customers a sign of when the itemshould be utilized by, an expiry date is printed on the item. While remaining at home alone, if the outwardly disabled burns-through some terminated food or takes some terminated prescription, the outcome could even be life undermining. Keeping this in mind, this application depicts the advancement of Quick Response Code and items recognition through speech. Hence we have created an application by distinguishing QR code fromwhich the client gets data of items through discourse with the assistance of text-to-speech. From this application the clients can buy the items easily through earing the product information.
Licence: creative commons attribution 4.0
QR Code, Visionless, text, speech
Paper Title: DEPLOYMENT A SENTIMENT ANALYSIS RECURRENT NEURAL NETWORK MODEL USING PYTORCH ON AWS SEGMAKER.
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020005
Register Paper ID - 211749
Title: DEPLOYMENT A SENTIMENT ANALYSIS RECURRENT NEURAL NETWORK MODEL USING PYTORCH ON AWS SEGMAKER.
Author Name(s): Ms. Ankita Tiwari, Mr.Kaustubh suryawanshi, Mr. Ganesh thube, Mr. Jay wani, Apashabi Pathan
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 22-24
Year: November 2021
Downloads: 740
A Sentiment Analysis Classifier web-app, made using PyTorch and deployed in AWS with SageMaker. A required project for the Udacity Machine Learning Engineer Nanodegree. Sentiment Analysis web app is a notebook and collection of Python files to be completed. The result is a deployed RNN performing sentiment analysis on movie reviews complete with publicly accessible API and a simple web page which interacts with the deployed endpoint. This project assumes that you have some familiarity with SageMaker. Completing the XGBoost Sentiment Analysis notebook should suffice. The notebook and Python files provided, once completed, result in a simple web app which interacts with a deployed recurrent neural network performing sentiment analysis on movie reviews. This project assumes some familiarity with SageMaker, the mini-project, Sentiment Analysis using XGBoost, should provide enough background.
Licence: creative commons attribution 4.0
Deployment A Sentiment Analysis Recurrent Neural Network Model Using Pytorch On Aws Segmaker.
Paper Title: BLOCKCHAIN BASED ELECTRONIC HEALTHCARE RECORD MANAGEMENT SYSTEM
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020004
Register Paper ID - 211750
Title: BLOCKCHAIN BASED ELECTRONIC HEALTHCARE RECORD MANAGEMENT SYSTEM
Author Name(s): Ms. Pooja Walke, Mr. Sachin Gaikwad, Ms. Poonam Kadam, Mr. Suryakant Gawande, Mrs. Sweta Khandekar
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 19-21
Year: November 2021
Downloads: 708
Licence: creative commons attribution 4.0
BLOCKCHAIN BASED ELECTRONIC HEALTHCARE RECORD MANAGEMENT SYSTEM
Paper Title: TWITTER SENTIMENT ANALYSIS USING LSTM ALGORITHM
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020003
Register Paper ID - 211751
Title: TWITTER SENTIMENT ANALYSIS USING LSTM ALGORITHM
Author Name(s): Aniket Kale, Chetan Bawankule, Payal Singanjude, Ganesh Wattamwar, Dr. Simran Khiani
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 15-18
Year: November 2021
Downloads: 746
Sentiment analysis refers to opinion mining and a machine learning task where one would like to work out what theoveral sentiment of a given document is. Using natural language processing and model training we will extract the subjective information of tweets froma particular dataset and checkitout to classify it consistent with its polarity like positive,neutral,or negative. The papers suggest a model created usingtheLSTM algorithmand some additional other layers of machinelearning for better sentiment analysis. Even though sentimentanalysis is really far away from being solved since the language is extremely complex because of objectivity/subjectivity, negation, vocabulary, grammar still this sequential model achieves the accuracy of approximately 81%. Thus , this work shows that there wide applications yet to be done.
Licence: creative commons attribution 4.0
Twitter, Sentiment Analysis, Natural Language processing, Long Short Term Memory (LSTM)
Paper Title: SENTIMENT ANALYSIS FOR RECOMMENDATION SYSTEM AND BUSINESS INTELLIGENCE USING DEEP LEARNING
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020002
Register Paper ID - 211752
Title: SENTIMENT ANALYSIS FOR RECOMMENDATION SYSTEM AND BUSINESS INTELLIGENCE USING DEEP LEARNING
Author Name(s): Madhavi Netke, Aishwarya Bhagwat
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 8-14
Year: November 2021
Downloads: 720
Licence: creative commons attribution 4.0
Deep Learning, Neural Networks, Machine Learning, Business intelligence, Sentimental analysis.
Paper Title: SPAM DETECTION IN TWITTER USING MACHINE LEARNING
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTI020001
Register Paper ID - 211753
Title: SPAM DETECTION IN TWITTER USING MACHINE LEARNING
Author Name(s): Apra Kavdia, Preyasha Borse, Preyasha Borse, Shubham Goel
Publisher Journal name: IJCRT
Volume: 9
Issue: 11
Pages: 1-7
Year: November 2021
Downloads: 719
With increase in the popularity on social media and millions and billions of people using it every day. This popularity of applications like Facebook, Twitter and Instagram grabs the attention of spammers. As through these they can trap genuine users with malicious activities. There is a significant amount of research done in this field. The primary focus of these researches is generally based on the accounts or users whose activity poses them as suspicious. These activities include posting of the same content, posting tweets that have no relevance to the trending topics and tagging them as one of the trending topics, sending bulk direct messages or users that have similar contents and are created on the same day. However, much of the research done focuses on spam accounts. There is little to none research done based on a model that marks tweets as spam and along with a sentiment analysis. In the proposed system, we propose a Machine learning system that would detect tweets as spam or ham. This spam detection would be done considering factors such as: shortened URLs, Emails that lead to malicious sites etc. The tweets would also be marked as spam based on the language. Using NLP, we would form a system that would mark tweets as spam if they have the potential to hurt sentiments of other users. The model would be trained and tested on a previously labelled dataset. This model would then be incorporated in a website that would take tweets as an input from the user. The result would be creation of a model that would give the tweet as spam or not based on the sentiment and spammer tactics.
Licence: creative commons attribution 4.0
Machine Learning, Spam Tweets, Ham Tweets, Sentiment Analysis, Natural Language Processing, Logistic Regression , Decision Tree, Random Forest, K - nearest Neighbour, Datasets, Feature Extraction
The International Journal of Creative Research Thoughts (IJCRT) aims to explore advances in research pertaining to applied, theoretical and experimental Technological studies. The goal is to promote scientific information interchange between researchers, developers, engineers, students, and practitioners working in and around the world.
Indexing In Google Scholar, ResearcherID Thomson Reuters, Mendeley : reference manager, Academia.edu, arXiv.org, Research Gate, CiteSeerX, DocStoc, ISSUU, Scribd, and many more International Journal of Creative Research Thoughts (IJCRT) ISSN: 2320-2882 | Impact Factor: 7.97 | 7.97 impact factor and ISSN Approved. Provide DOI and Hard copy of Certificate. Low Open Access Processing Charges. 1500 INR for Indian author & 55$ for foreign International author. Call For Paper (Volume 12 | Issue 5 | Month- May 2024)