Table of Contents
The Power of Natural Language Processing
Multi-lingual approach
Finding the needle in the haystack of unstructured data
Home Technology peripherals AI Multilingual AI analytics are key to unlocking the potential of customer experience to drive business growth

Multilingual AI analytics are key to unlocking the potential of customer experience to drive business growth

Apr 13, 2023 am 10:49 AM
artificial intelligence Text Analysis

Multilingual AI analytics are key to unlocking the potential of customer experience to drive business growth

Text analysis is a powerful discipline capable of discovering and annotating every example of customer opinion, regardless of which language the customer speaks.

For business executives who are waking up to the vast amounts of unstructured data surrounding their businesses, the language-agnostic possibilities of AI for text analysis are a critical (but easily overlooked) )The problem.

After all, unstructured data (UD) is not structured data in a format such as spreadsheets, but is usually large amounts of data in various social media, blogs, website comments, call center calls, private chats, etc. – and this data represents a vast resource with even greater value for businesses interested in improving customer experience (CX).

Most data is unstructured data. According to estimates from MIT, 80% to 90% of data today is unstructured data, and it is growing rapidly. And this fact means that all opinions from customers can be collated and analyzed by businesses that have invested in technology and expertise.

This is the role of text analysis artificial intelligence. This results in every customer who comments on a business brand on any platform having unprecedented access to their thoughts, opinions and ideas. It allows companies to accurately and quickly identify customer pain points that are prioritized, thereby reducing customer churn.

Given this generality, it is particularly important to recognize the value of language agnosticism. Limiting analysis and annotation to English perspectives only (when other perspectives exist) undermines the scale of unstructured data and the generalizability of this text analysis.

Therefore, it is necessary to understand how multilingual AI analytics works and its potential to gather a comprehensive overview of customer opinions.

The Power of Natural Language Processing

The foundation of AI-driven text analysis is the combination of machine learning (ML) and natural language processing (NLP).

Machine learning is an artificial intelligence method designed to imitate human learning. While traditional programming requires the execution of rules created by humans, machine learning uses data analysis to learn extremely complex patterns that can be used for inference, making machine learning very good at solving problems and performing complex tasks.

At the same time, natural language processing (NLP) belongs to processing languages. In fact, it can be understood as one of the complex tasks supported by machine learning.

In this context, the uses of natural language processing (NLP) are diverse. It can be used for simpler goals, such as counting how often a given term or word appears in a text. Or one can take on the more difficult challenge of determining the mood or even emotion of a given text.

Obviously, both are of great use to businesses that want to understand in detail the opinions of all available customers.

These uses of natural language processing (NLP) allow businesses to evaluate large amounts of data to discover how often their brand is being talked about online or offline, as well as understand whether the comments are positive or negative, or related to a The series is about more nuanced emotions.

Multi-lingual approach

Crucially, the benefit of this approach is its ability to include all customer opinions – text analysis applies to each opinion rather than a sample or selection .

However, in order to achieve this goal, the language in which a given opinion is expressed cannot be limited, but AI needs to be completely language-agnostic, especially if a business is a multinational organization.

This can be achieved through the use of unsupervised and supervised machine learning. Supervised machine learning means that the algorithms involved are "trained" by humans annotating training data, and AI can do better than humans at tasks involving large amounts of data (also known as big data).

To ensure that all language needs are met, the researchers leveraged a team of approximately 300 native speakers of a variety of languages ​​who read, understood and manually annotated the unstructured data. For example, determine whether a tweet is positive or negative, whether there is sarcasm in its subject, or even what the customer journey is suggested by the content of an email or chat message.

Once the AI ​​is trained in its native language (without the need for translation into English and machine learning models using English) to achieve its goals (whether establishing emotions or identifying topics) with great accuracy, the results can be easily used Visualization in English to unlock all customer opinions in a language they can understand for customer experience (CX) professionals, customer retention managers, and more.

The most important thing is that the accuracy of artificial intelligence can continue to improve. For example, when a person annotates a small subset of tweets with a certain emotion, its accuracy can be measured. You can see that 80% to 90% or more of the content matches the algorithm, no matter what language the tweets are written in.

This shows how powerful these AI technologies have become, given the subjective nature of expressing emotions.

Finding the needle in the haystack of unstructured data

Unstructured data (UD) is everywhere and it represents an opportunity to understand the opinions of all customers, rather than, by definition, like polls Only sample-based customer opinions can be provided.

However, to truly realize this ability to gain unfettered access to consumer opinions, multinational companies will not only need to hire AI experts and technicians, but also ensure that their AI systems can obtain data in all relevant languages. The same high-precision training as in English.

This way, text analysis is not only source-independent but also language-independent. Allow business leaders to confidently assert that their understanding of customer perspectives, pain points, and gain points is detailed, precise, and comprehensive.

The above is the detailed content of Multilingual AI analytics are key to unlocking the potential of customer experience to drive business growth. For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

AI Hentai Generator

AI Hentai Generator

Generate AI Hentai for free.

Hot Article

R.E.P.O. Energy Crystals Explained and What They Do (Yellow Crystal)
1 months ago By 尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. Best Graphic Settings
1 months ago By 尊渡假赌尊渡假赌尊渡假赌
Will R.E.P.O. Have Crossplay?
1 months ago By 尊渡假赌尊渡假赌尊渡假赌

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

How to change font color on iPhone How to change font color on iPhone May 13, 2023 pm 01:01 PM

Color helps how we process things visually, so using a variety of colors in documents, emails, lock screens, and other elements looks better. As with font styles, choosing different font colors can be a good way to avoid text on your phone looking monotonous. How to Change Font Color in Pages App You can change the text color of a document on your iPhone, or you can do it by opening the Pages app on iOS. Within Pages, click the document you want to open. If the document is open in screen view, click the Edit button in the upper right corner. The selected document will now enter editing mode. To change the font color of text in this document, click the desired text to highlight it. Highlight

How to use C++ for efficient text mining and text analysis? How to use C++ for efficient text mining and text analysis? Aug 27, 2023 pm 01:48 PM

How to use C++ for efficient text mining and text analysis? Overview: Text mining and text analysis are important tasks in the field of modern data analysis and machine learning. In this article, we will introduce how to use C++ language for efficient text mining and text analysis. We will focus on techniques in text preprocessing, feature extraction, and text classification, accompanied by code examples. Text preprocessing: Before text mining and text analysis, the original text usually needs to be preprocessed. Preprocessing includes removing punctuation, stop words and special

Learn natural language processing and text analysis in JavaScript Learn natural language processing and text analysis in JavaScript Nov 03, 2023 pm 04:32 PM

Learning natural language processing and text analysis in JavaScript requires specific code examples. Natural Language Processing (NLP) is a discipline involving artificial intelligence and computer science. It studies the interaction between computers and human natural language. In the context of today's rapid development of information technology, NLP is widely used in various fields, such as intelligent customer service, machine translation, text mining, etc. JavaScript as a front-end development

Natural language processing and text analysis using Go language Natural language processing and text analysis using Go language Nov 30, 2023 am 10:15 AM

Natural Language Processing (NLP) is an interdisciplinary field involving computer science, artificial intelligence, linguistics and other disciplines. Its purpose is to aid the computer's ability to understand, interpret and generate natural language. Text analysis (TextAnalysis) is one of the important directions of NLP. Its main purpose is to extract meaningful information from large amounts of text data to support application scenarios such as business decision-making, linguistic research, and public opinion analysis. Go language in

How to do natural language processing in PHP? How to do natural language processing in PHP? May 21, 2023 pm 02:10 PM

PHP is a powerful programming language and it is a popular web development language that is widely used in the development of websites and applications. In addition to being used for website programming, PHP can also be used for natural language processing. In this article, we will introduce how to do natural language processing in PHP. Natural Language Processing (NLP) refers to a field that combines computer science and human linguistics. NLP is mainly used to enable computers to understand and process people

How to use MySQL database for text analysis? How to use MySQL database for text analysis? Jul 12, 2023 pm 12:43 PM

How to use MySQL database for text analysis? With the advent of the big data era, text analysis has become a very important technology. As a popular relational database, MySQL can also be used for text analysis. This article will introduce how to use MySQL database for text analysis and provide corresponding code examples. Create database and tables First, we need to create a MySQL database and tables to store text data. You can use the following SQL statement to create a data called "analysis"

[Python NLTK] Practical case: Sentiment analysis, insight into user emotions [Python NLTK] Practical case: Sentiment analysis, insight into user emotions Feb 25, 2024 am 10:10 AM

Sentiment analysis, also known as opinion mining, is an important branch of natural language processing that aims to understand and identify emotions and emotions in text. Sentiment analysis is widely used in many fields, such as public opinion analysis, customer satisfaction analysis, product evaluation analysis, etc. In this tutorial, we will use the pythonNLTK library to implement sentiment analysis and demonstrate how to gain insight into user emotions. First, we need to import the necessary libraries: importnltkimportnumpyasnpimportpandasaspdimportmatplotlib.pyplotaspltNext, we need to download and load the emotion dictionary. NLTK provides many sentiment dictionaries, one of the commonly used dictionaries is

A caching mechanism to implement efficient text analysis algorithms in Golang. A caching mechanism to implement efficient text analysis algorithms in Golang. Jun 20, 2023 am 10:07 AM

As the amount of data continues to increase, text analysis has become an important application in many fields. In this process, efficient algorithms are very critical. In Golang, it is also very important to implement efficient text analysis algorithms because it can greatly reduce the running time of the program. In this article, we will explore how to implement efficient text analysis algorithms and introduce an effective caching mechanism. Before we begin, let’s first understand the basic concepts of text analysis. Text analysis refers to calculating useful information from large amounts of text data. It is commonly used

See all articles