Sentiment analysis using naive bayes classifier Dev Sahu
This ppt contains a small description of naive bayes classifier algorithm. It is a machine learning approach for detection of sentiment and text classification.
Fake news has a negative impact on individuals and society, hence the detection of fake news is becoming a bigger field of interest for data scientists. Attempts to leverage artificial intelligence technologies particularly machine/deep learning techniques and natural language processing (NLP) to automatically detect fake news and prevent its viral spread have recently been actively discussed.
Large technology companies have begun to take steps to address this trend. For example, Google has adjusted its news rankings to prioritize well-known sites and has banned sites with a history of spreading fake news. Facebook has integrated fact checking organizations into its platform.
This SlideShare explores the concept of NLP for detecting fake news in brief.
Poisoning attacks on Federated Learning based IoT Intrusion Detection SystemSai Kiran Kadam
Attacks on federated learning model are discussed as a part of my research to build a model that overcomes the diverse security issues and vulnerabilities in the cloud in the process of building a unified machine learning model that can benefit multi-user/ multi-companies to work together.
Sentiment analysis using naive bayes classifier Dev Sahu
This ppt contains a small description of naive bayes classifier algorithm. It is a machine learning approach for detection of sentiment and text classification.
Fake news has a negative impact on individuals and society, hence the detection of fake news is becoming a bigger field of interest for data scientists. Attempts to leverage artificial intelligence technologies particularly machine/deep learning techniques and natural language processing (NLP) to automatically detect fake news and prevent its viral spread have recently been actively discussed.
Large technology companies have begun to take steps to address this trend. For example, Google has adjusted its news rankings to prioritize well-known sites and has banned sites with a history of spreading fake news. Facebook has integrated fact checking organizations into its platform.
This SlideShare explores the concept of NLP for detecting fake news in brief.
Poisoning attacks on Federated Learning based IoT Intrusion Detection SystemSai Kiran Kadam
Attacks on federated learning model are discussed as a part of my research to build a model that overcomes the diverse security issues and vulnerabilities in the cloud in the process of building a unified machine learning model that can benefit multi-user/ multi-companies to work together.
Natural language processing provides a way in which human interacts with computer / machines by means of voice.
"Google Search by voice is the best example " which makes use of natural language processing..
Building a multi headed model thats capable of detecting different types of toxicity like threats, obscenity, insult and identity based hate. Discussing things you care about can be difficult. The threat of abuse and harassment online means that many people stop expressing themselves and give up on seeking different opinions. Platforms struggle to efficiently facilitate conversations, leading many communities to limit or completely shut down user comments. So far we have a range of publicly available models served through the perspective APIs, including toxicity. But the current models still make errors, and they dont allow users to select which type of toxicity theyre interested in finding. Pallam Ravi | Hari Narayana Batta | Greeshma S | Shaik Yaseen ""Toxic Comment Classification"" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-4 , June 2019, URL: https://www.ijtsrd.com/papers/ijtsrd23464.pdf
Paper URL: https://www.ijtsrd.com/computer-science/other/23464/toxic-comment-classification/pallam-ravi
leewayhertz.com-Generative AI in manufacturing.pdfKristiLBurns
The manufacturing industry stands out as a prominent beneficiary, capitalizing on the advancements and potential of AI to enhance its processes and unlock new opportunities. Among the various types of AI, generative AI, known for its content creation and enhancement capabilities, is playing a significant and distinct role in shaping the advancement of manufacturing practices.
This presentation will help you to understand the basic concepts of Natural Language Processing With this you will understand the significance of Natural Language Processing in our daily life
Methods for Sentiment Analysis: A Literature Studyvivatechijri
Sentiment analysis is a trending topic, as everyone has an opinion on everything. The systematic
study of these opinions can lead to information which can prove to be valuable for many companies and
industries in future. A huge number of users are online, and they share their opinions and comments regularly,
this information can be mined and used efficiently. Various companies can review their own product using
sentiment analysis and make the necessary changes in future. The data is huge and thus it requires efficient
processing to collect this data and analyze it to produce required result.
In this paper, we will discuss the various methods used for sentiment analysis. It also covers various techniques
used for sentiment analysis such as lexicon based approach, SVM [10], Convolution neural network,
morphological sentence pattern model [1] and IML algorithm. This paper shows studies on various data sets
such as Twitter API, Weibo, movie review, IMDb, Chinese micro-blog database [9] and more. The paper shows
various accuracy results obtained by all the systems.
I summarized the GPT models in this slide and compared the GPT1, GPT2, and GPT3.
GPT means Generative Pre-Training of a language model and was implemented based on the decoder structure of the transformer model.
(24th May, 2021)
This presentation discusses about following topics:
Types of Problems Solved Using Artificial Intelligence Algorithms
Problem categories
Classification Algorithms
Naive Bayes
Example: A person playing golf
Decision Tree
Random Forest
Logistic Regression
Support Vector Machine
Support Vector Machine
K Nearest Neighbors
Natural language processing provides a way in which human interacts with computer / machines by means of voice.
"Google Search by voice is the best example " which makes use of natural language processing..
Building a multi headed model thats capable of detecting different types of toxicity like threats, obscenity, insult and identity based hate. Discussing things you care about can be difficult. The threat of abuse and harassment online means that many people stop expressing themselves and give up on seeking different opinions. Platforms struggle to efficiently facilitate conversations, leading many communities to limit or completely shut down user comments. So far we have a range of publicly available models served through the perspective APIs, including toxicity. But the current models still make errors, and they dont allow users to select which type of toxicity theyre interested in finding. Pallam Ravi | Hari Narayana Batta | Greeshma S | Shaik Yaseen ""Toxic Comment Classification"" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-4 , June 2019, URL: https://www.ijtsrd.com/papers/ijtsrd23464.pdf
Paper URL: https://www.ijtsrd.com/computer-science/other/23464/toxic-comment-classification/pallam-ravi
leewayhertz.com-Generative AI in manufacturing.pdfKristiLBurns
The manufacturing industry stands out as a prominent beneficiary, capitalizing on the advancements and potential of AI to enhance its processes and unlock new opportunities. Among the various types of AI, generative AI, known for its content creation and enhancement capabilities, is playing a significant and distinct role in shaping the advancement of manufacturing practices.
This presentation will help you to understand the basic concepts of Natural Language Processing With this you will understand the significance of Natural Language Processing in our daily life
Methods for Sentiment Analysis: A Literature Studyvivatechijri
Sentiment analysis is a trending topic, as everyone has an opinion on everything. The systematic
study of these opinions can lead to information which can prove to be valuable for many companies and
industries in future. A huge number of users are online, and they share their opinions and comments regularly,
this information can be mined and used efficiently. Various companies can review their own product using
sentiment analysis and make the necessary changes in future. The data is huge and thus it requires efficient
processing to collect this data and analyze it to produce required result.
In this paper, we will discuss the various methods used for sentiment analysis. It also covers various techniques
used for sentiment analysis such as lexicon based approach, SVM [10], Convolution neural network,
morphological sentence pattern model [1] and IML algorithm. This paper shows studies on various data sets
such as Twitter API, Weibo, movie review, IMDb, Chinese micro-blog database [9] and more. The paper shows
various accuracy results obtained by all the systems.
I summarized the GPT models in this slide and compared the GPT1, GPT2, and GPT3.
GPT means Generative Pre-Training of a language model and was implemented based on the decoder structure of the transformer model.
(24th May, 2021)
This presentation discusses about following topics:
Types of Problems Solved Using Artificial Intelligence Algorithms
Problem categories
Classification Algorithms
Naive Bayes
Example: A person playing golf
Decision Tree
Random Forest
Logistic Regression
Support Vector Machine
Support Vector Machine
K Nearest Neighbors