NLP - SG Analytics

The Role of Natural Language Processing in AI

What connection exists between artificial intelligence and natural language processing? In this post, you will discover some of the use scenarios.

Artificial intelligence, or AI, is a branch of computer science that focuses on developing and deploying systems that can process data, draw conclusions, and behave in a manner equivalent to or superior to how humans react. Natural Language Processing (NLP) is a sub-branch of artificial intelligence that focuses on using natural language as a medium of interaction between humans and machines.

AI language processing must combine linguistics and computer science to get outcomes that appear natural. Before building intelligent systems that can analyze, comprehend, and then extrapolate meaning from voice or written text, NLP engineers must first grasp the structure and principles regulating language.

What is Natural Language Processing?

The artificial intelligence (AI) branch called natural language processing (NLP) enables robots to comprehend human language. Building systems that can understand the text and subsequently carry out automatic activities like spell-checking, text translation, subject classification, etc., is the core goal of NLP. Today, businesses utilize NLP in artificial intelligence to automate repetitive operations and obtain insights from data analytics solutions.

NLP blends statistical, machine learning, and deep learning models with computational linguistics—rule-based modeling of human language. With these technologies, computers can now interpret human language in text or audio data and fully “understand” what is being said or written, including the speaker’s or writer’s intentions and mood.

Computer programs that translate text between languages, reply to spoken commands, and quickly summarize vast amounts of text—even in real-time—are all powered by NLP. You’ve probably used NLP in the form of voice-activated GPS devices, digital assistants, speech-to-text dictation programs, customer service chatbots, and other consumer conveniences. However, the use of NLP in corporate solutions is expanding as a means of streamlining company operations, boosting worker productivity, and streamlining mission-critical business procedures.

Now let us find out how NLP works in artificial intelligence.

Application of NLP in Artificial Intelligence

As highlighted below, NLP contains two parts.

Natural Language Generation (NLG)

Natural language generation (NLG) is a technique for constructing meaningful sentences and phrases from data. Text planning, sentence planning, and text realization are its three steps.

  • Text planning: Finding pertinent content.
  • Sentence Planning: Planning your sentences involves creating catchy words and establishing the tone of the paragraph.
  • Text realization: Aligning sentence structures with sentence plans.

Among the uses of NLG are machine translation tools, chatbots, voice assistants, analytics platforms, sentiment analysis platforms, and AI-powered transcription tools.

Natural Language Understanding (NLU)

NLU uses information extracted from material to help robots comprehend and interpret human language. It carries out the following duties:

  • Aids in the analysis of various linguistic features.
  • Aids in converting natural language input into appropriate representations.

Due to referential, lexical, and grammatical ambiguity, NLU tasks are more challenging than NLG tasks.

Also read: How to Gain a Competitive Edge with Proper Data Governance!

Steps of NLP in Artificial Intelligence

There are generally five steps.

Lexical Analysis

It entails recognizing and examining word structures. A language’s vocabulary is the whole corpus of words and expressions. The lexical analysis breaks the entire text into paragraphs, phrases, and words.

Syntactic Analysis (Parsing)

It entails the grammatical examination of the sentence’s words and the word arrangement that demonstrates the relationships between them. The English syntactic analyzer rejects sentences like “The school travels to a boy.”

Semantic Analysis

It takes the text’s exact meaning or dictionary definition. The text is examined for relevance. It is accomplished by translating the task domain’s objects to syntactic structures. Sentences like “heated ice cream” are disregarded by the semantic analyzer.

Discourse Integration

Any sentence’s meaning is influenced by the meaning of the sentence that comes before it. Additionally, it helps clarify the purpose of the statement that follows it.

Pragmatic Analysis

During this, what was stated is rephrased to reflect its true meaning. It entails determining those features of language that need knowledge of the outside world.

In Conclusion-

The change affects both people and processes; therefore, your corporate culture has to be ready to deal with the anxiety that comes with it. The needs for AI, machine learning algorithms, semantic analysis, speech recognition, neural networks, summarization, neural networks, predictive analytics, and other aspects of natural language comprehension must all be understood by businesses. NLP requires large amounts of data that it can process to be successful. Before beginning an NLP project, companies must consider the resources needed to supply the essential data.

Understanding humans through natural language processing is essential for AI to be able to support its claim of intelligence. New deep learning models are continually enhancing AI’s performance in Turing tests. But sometimes, people say and do it differently, making it challenging to comprehend human nature fully. The possibility of artificial consciousness is raised by more clever AIs (Artificial Intelligence), which has spawned a new area of philosophical and practical study. For contextual intelligence solutions, contact us at SG Analytics.