Phases of NLP in Data Science
Phases of NLP in Data Science
Blog Article
In the digital world, the term data isn’t just numbers and charts, they're a collection of raw facts that are stored and processed, data can be segregated into two categories Structured (Databases) and Unstructured (Text, Images, Videos). The term science refers to analyzing data and conducting systematic experiments using scientific methods and principles. And if you’re not tapping into this vast sea of unstructured data, you’re missing out on some of the most valuable facts available. By enabling machines to understand, interpret, and even generate human language, Natural Language Processing [NLP] is opening up a whole new domain of possibilities in data science.
Whether you're automating customer support, analyzing social media sentiment, or predicting consumer behavior, NLP is a must-have tool for modern data scientists. Ready to discover how words are shaping the future of data science? Check out for Data Science Courses In Bangalore. In this blog, we'll explore how NLP is revolutionizing the way we interact with data, and why mastering it can give you the edge in today’s fast-paced, data-driven world. Let’s dive in!
What is NLP?
NLP is a technology that is used by machines to understand, analyze, interpret, and manipulate human language which is made up of a combination of Computer Science, Human Language, and Artificial Intelligence. NLP is used by developers for various tasks like speech recognition, topic segmentation, translation, Named Entity Recognition (NER), and so on.
Phases of NLP
The NLP process is divided into five phases namely Lexical Analysis, Syntactic Analysis, Semantic Analysis, Disclosure Integration, and Pragmatic Analysis. Each Phase of NLP plays an important role in understanding and processing the data. Take the next step in your learning journey by enrolling in a Data Science Course In Marathahalli.
Lexical and Morphological Analysis
Lexical analysis is the first phase of NLP. In this phase, a text will be scanned and broken down into small parts of paragraphs, sentences, and words referred to as a process of tokenization. It helps users understand and process the text and also includes data cleaning and extraction techniques which help to correct misspelled words and remove stopwords.
Morphological analysis is the phase where the text will be scanned and cannot be divided as it carries a meaningful word. It helps in improving accuracy, making
meaningful words, and understanding word structure.
Syntactic Analysis (Parsing)
Syntactic analysis is the second phase of NLP. This phase is used to check grammar and the arrangement of words and understand the structure of a sentence. It also checks the relationship between words and ensures their logical consistency by comparing whether it has gone against any grammatical rules. Parsing helps in analyzing grammar, and relationships between given text. To avoid confusion a technique called Parts-of-speech (POS) is used which helps analyze nouns, verbs, adverbs, pronouns, etc, and helps understand how each word relates, avoiding ambiguity.
Semantic Analysis
Semantic analysis is the third phase of NLP. This phase focuses on meaning representation. It checks for the correct meaning of a phrase, word, or sentence. It determines whether the given sentence makes a meaningful statement. To identify and process texts NER method is used to classify texts such as a person’s name, place, and organization.
Disclosure Integration
Disclosure Integration is the fourth phase of NLP. This phase involves analyzing the relationship between the current sentence, phrase, or words with the previously given texts. This is the crucial phase of NLP as it’s difficult to gather the meaning conveyed overall. By understanding the context of the given text NLP will provide more accurate results.
Pragmatic Analysis
Pragmatic analysis is the fifth and final phase of NLP. Every word or phrase carries a different tone and a different meaning according to the situation conveyed by the user. While communicating people do not say exactly what they mean, the word “Hello” can be taken as an expression of greeting, anger, or surprise. So this phase helps in analyzing the exact meaning of the sentence. By diving deeper, NLP can understand human language, emotion, and intentions which will help result in more accurate results.
The journey of Natural Language Processing (NLP) in data science is evolving from basic language understanding to experienced models that can generate human-like responses. Each phase from collecting data and preprocessing text to building models and deploying solutions is integral in turning raw text into valuable insights. As NLP technology advances, its ability to automate processes, boost decision-making, and reveal hidden patterns in unstructured data is only growing stronger, opening up endless possibilities. The future of NLP in data science is bright, and mastering its phases is your key to staying ahead in this transformative field. Advance your learning by signing up today at the Training Institute in Bangalore.
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