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Home/ Questions/Q 7194939
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Editorial Team
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Editorial Team
Asked: May 28, 20262026-05-28T20:28:38+00:00 2026-05-28T20:28:38+00:00

I’m currently taking a Natural Language Processing course at my University and still confused

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I’m currently taking a Natural Language Processing course at my University and still confused with some basic concept. I get the definition of POS Tagging from the Foundations of Statistical Natural Language Processing book:

Tagging is the task of labeling (or tagging) each word in a sentence
with its appropriate part of speech. We decide whether each word is a
noun, verb, adjective, or whatever.

But I can’t find a definition of Shallow Parsing in the book since it also describe shallow parsing as one of the utilities of POS Tagging. So I began to search the web and found no direct explanation of shallow parsing, but in Wikipedia:

Shallow parsing (also chunking, “light parsing”) is an analysis of a sentence which identifies the constituents (noun groups, verbs, verb groups, etc.), but does not specify their internal structure, nor their role in the main sentence.

I frankly don’t see the difference, but it may be because of my English or just me not understanding simple basic concept. Can anyone please explain the difference between shallow parsing and POS Tagging? Is shallow parsing often also called Shallow Semantic Parsing?

Thanks before.

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  1. Editorial Team
    Editorial Team
    2026-05-28T20:28:39+00:00Added an answer on May 28, 2026 at 8:28 pm

    POS tagging would give a POS tag to each and every word in the input sentence.

    Parsing the sentence (using the stanford pcfg for example) would convert the sentence into a tree whose leaves will hold POS tags (which correspond to words in the sentence), but the rest of the tree would tell you how exactly these these words are joining together to make the overall sentence. For example an adjective and a noun might combine to be a ‘Noun Phrase’, which might combine with another adjective to form another Noun Phrase (e.g. quick brown fox) (the exact way the pieces combine depends on the parser in question).
    You can see how parser output looks like at http://nlp.stanford.edu:8080/parser/index.jsp

    A shallow parser or ‘chunker’ comes somewhere in between these two. A plain POS tagger is really fast but does not give you enough information and a full blown parser is slow and gives you too much. A POS tagger can be thought of as a parser which only returns the bottom-most tier of the parse tree to you. A chunker might be thought of as a parser that returns some other tier of the parse tree to you instead. Sometimes you just need to know that a bunch of words together form a Noun Phrase but don’t care about the sub-structure of the tree within those words (i.e. which words are adjectives, determiners, nouns, etc and how do they combine). In such cases you can use a chunker to get exactly the information you need instead of wasting time generating the full parse tree for the sentence.

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