Text classification datasets are used to categorize natural language texts according to content. For example, think classifying news articles by topic, or classifying book reviews based on a positive or negative response. Text classification is also helpful for language detection, organizing customer feedback, and fraud detection. Though time consuming when done manually, this process can be automated with machine learning models. The result saves companies time while also providing valuable data insights.
Most apps and APIs use databases as their data source and that is for a great reason. Databases have been designed to be scalable, resilient, and fully featured to support many types of use cases and scenarios.
Nowadays, brands have discovered that social media is an indispensable cog in their golden wheel of success. As such, the activities that take place on every social media platform needs to be kept in check by these brands to maximize profit. Social media analytics helps you keep tabs on the progress of your marketing strategy as well as the welfare of your clients and competitors.
An Introduction to Machine Learning for Finance.
Sentiment analysis uses AI to identify the core emotion behind a piece of text. In this article, we will look at how to build a sentiment analyzer using AWS Comprehend.
Sentiment Analytics can help your marketing team to understand the sentiment of your target audience and identify any potential issues or concerns.
We’re really proud that we can be in a group of like-minded technologists and be acknowledged by them.
Introduction
Hello, Guys,
Mood Blogging is primarily location based blogging that captures & enhances spirit of blogging.
Analyzing customer sentiment allows businesses to look into how customers feel about their products & services.
For the past several decades, surveys have been the main method for a business to gain insights on how customers feel about their products.
Text classification is task of categorising text according to its content. It is the fundamental problem in the field of Natural Language Processing(NLP). More general applications of text classifications are in email spam detection, sentiment analysis and topic labelling etc.
Affective computing is a term that refers to the synergy between AI and psychology in order to understand and affect emotions. Another term for it could be emot
Since most of the world is online, everything by consumers nowadays is being shared online, whether a bad experience or a good one.
If Sherlock Holmes were to do an investigation in the digital world, then an ORM - Online Reputation Management tool would be his best buddy. In the words of the inscrutable Holmes, it’s best to never trust impressions but concentrate on the details.
Social media data mining has become a must-have strategy for understanding current trends, culture, and online business. This is because the world of social media is a thriving, ever-growing ocean of data, where hundreds of millions of tweets, instagram posts, and blog articles are published every day.
Unconventional sentiment analysis with CatBoost. The result is comparable to BERT SOTA.
Financial technology, or Fintech for short is a relatively avoided topic among tech enthusiasts, developers, programmers and etc. The reason is very simple actually. Developers don’t necessarily refer to their software as Fintech even though it’s quite literally associated with the financial industry.
How can organizations best measure news sentiment to gain insights about customer and investor behavior?
Web apps are still useful tools for data scientists to present their data science projects to the users. Since we may not have web development skills, we can use open-source python libraries like Streamlit to easily develop web apps in a short time.
<TLDR> BERT is certainly a significant step forward in the context of NLP. Business activities such as topic detection and sentiment analysis will be much easier to create and execute, and the results much more accurate. But how did you get to BERT, and how exactly does the model work? Why is it so powerful? Last but not least, what benefits it can bring to the business, and our decision to integrate it into the sandsiv+ Customer Experience platform.</TLDR>
How to analyze the sentiments from a text using AWS services like Amazon Comprehend, AWS IAM, AWS Lambda, and Amazon S3.
Learn how to build an n8n workflow that processes text, stores data in two databases, and sends messages to Slack.
Introducing an AI-powered Algo trading platform on the blockchain.
From virtual assistants to content moderation, sentiment analysis has a wide range of use cases. AI models that can recognize emotion and opinion have a myriad of applications in numerous industries. Therefore, there is a large growing interest in the creation of emotionally intelligent machines.
Customer feedback is great. But have you been able to turn that feedback into meaningful customer insights? A few years back, brands depended on surveys to gauge customers’ feelings about how their products were performing.
Analytics works by extracting meaningful patterns in data and interpreting and communicating them.
The implementation of AI in ecommerce should come as no surprise. Online businesses have always been quick to adopt new technologies, and this is how the industry thrives; enhancing the customer experience, discovering new markets, and driving further sales. And with the continued development of AI technology like chatbots, visual search, and personalized recommendations, the world of ecommerce is transforming again.
Cleuton Sampaio, October 2019
Everything we express (either verbally or in written) carries huge amounts of information. The topic we choose, our tone, our selection of words, everything adds some type of information that can be interpreted and value extracted from it. In theory, we can understand and even predict human behaviour using that information.
Negative sentiment around Trump lifted slightly when he was diagnosed — and dropped when he returned to the White House.
A Brief History of NLP Applications in the 21st Century
Introduction
A sentiment analysis API can be instrumental in helping you ace business strategy for growth. Check out the guide to sentiment analysis APIs for SaaS Managers
A complete guide to text processing using Twitter data and R.
“People will forget what you said, people will forget what you did, but people will never forget how you made them feel.”
Breadsticks, of all things, were the reason for a huge backlash at the famous Olive Garden chain of restaurants both from customers and employees.
A step by step tutorial to analyse sentiment of Amazon product reviews with the FastText API
Introduction
The explosion of content on the world wide web, social media and chat networks greatly increased the interest in sentiment analysis from a growing number and variety of interested parties.
If you’ve never heard of Sentiment Analysis, I hadn’t either before I stumbled on it in the documentation. That’s why I thought it would be interesting to try.
How do you train machines to identify emotions? This is a tutorial for sentiment analysis of Amazon product reviews using machine learning algorithms.
Visit the /Learn Repo to find the most read stories about any technology.