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ML-For-Beginners/NLP/2-Tasks
Jen Looper 3260d89c0b
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README.md switching assignments 4 years ago
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README.md

Common Natural Language Processing Tasks and Techniques

For most Natural Language Processing tasks, the text to be processed must be broken down, examined, and the results stored or cross referenced with rules and data sets. This allows the programmer to derive the meaning or intent or only the frequency of terms and words in a text.

Let's discover common techniques used in processing text. Combined with machine learning, these techniques help you to analyse large amounts of text efficiently. Before applying ML to these tasks, however, let's understand the problems encountered by an NLP specialist.

Tasks common to NLP

🎓 Tokenization   Probably the first thing most NLP algorithms have to do is split the text into tokens, or words. While this sounds simple, having to account for punctuation and different language's word and sentence delimiters can make it tricky.

🎓 Parsing & Part-of-speech Tagging

Every word that has been tokenized can be tagged as a part of speech - a noun, verb, or adjective etc. The sentence the quick red fox jumped over the lazy brown dog might be POS tagged as fox = noun, jumped = verb etc.

Parsing is recognizing what words are related to each other in a sentence - for instance the quick red fox jumped is an adjective-noun-verb sequence that is is separate from lazy brown dog sequence.

🎓 Word and Phrase Frequencies

A useful tool when analyzing a large body of text is to build a dictionary of every word or phrase of interest and how often it appears. The phrase the quick red fox jumped over the lazy brown dog has a word frequency of 2 for the.

Example:

The Rudyard Kipling poem The Winners has a verse:

What the moral? Who rides may read.
When the night is thick and the tracks are blind
A friend at a pinch is a friend, indeed,
But a fool to wait for the laggard behind.
Down to Gehenna or up to the Throne,
He travels the fastest who travels alone.

As phrase frequencies can be case insensitive or case sensitive as required, the phrase a friend has a frequency of 2 and the has a frequency of 6, and travels is 2.

🎓 N-grams

A text can be split into sequences of words of a set length, a single word (unigram), two words (bigrams), three words (trigrams) or any number of words (n-grams).

Example

For instance the quick red fox jumped over the lazy brown dog with a n-gram score of 2 produces the following n-grams:

  1. the quick
  2. quick red
  3. red fox
  4. fox jumped
  5. jumped over
  6. over the
  7. the lazy
  8. lazy brown
  9. brown dog

It might be easier to visualise it as a sliding box over the sentence. Here it is for n-grams of 3 words, the n-gram is in bold in each sentence:

  1. the quick red fox jumped over the lazy brown dog
  2. the quick red fox jumped over the lazy brown dog
  3. the quick red fox jumped over the lazy brown dog
  4. the quick red fox jumped over the lazy brown dog
  5. the quick red fox jumped over the lazy brown dog
  6. the quick red fox jumped over the lazy brown dog
  7. the quick red fox jumped over the lazy brown dog
  8. the quick red fox jumped over the lazy brown dog

🎓 Noun phrase Extraction

In most sentences, there is a noun that is the subject, or object of the sentence. In English, it is often identifiable as having 'a' or 'an' or 'the' preceding it. Identifying the subject or object of a sentence by 'extracting the noun phrase' is a common task in NLP when attempting to understand the meaning of a sentence.

Example

In the sentence the quick red fox jumped over the lazy brown dog there are 2 noun phrases: quick red fox and lazy brown dog.

🎓 Sentiment analysis

A sentence or text can be analysed for sentiment, or how positive or negative it is. Sentiment is measured in polarity and objectivity/subjectivity. Polarity is measured from -1.0 to 1.0 (negative to positive) and 0.0 to 1.0 (most objective to most subjective).

Later you'll learn that there are different ways to determine sentiment using machine learning, but one way is to have a list of words and phrases that are categorized as positive or negative by a human expert and apply that model to text to calculate a polarity score. Can you see how this would work in some circumstances and less well in others?

🎓 Inflection

Inflection enables you to take a word and get the singular or plural of the word.

🎓 Lemmatization

A lemma is the root or headword for a set of words, for instance flew, flies, flying have a lemma of the verb fly.

There are also useful databases available for the NLP researcher, notably:

🎓 WordNet

WordNet is a database of words, synonyms, antonyms and many other details for every word in many different languages. It is incredibly useful when attempting to build translations, spell checkers, or language tools of any type.

NLP Libraries

Luckily, you don't have to build all of these techniques yourself, as there are excellent Python libraries available that make it much more accessible to developers who aren't specialized in natural language processing or machine learning. The next lessons include more examples of these, but here you will learn some useful examples to help you with the next task.

Let's use a library called TextBlob as it contains helpful APIs for tackling these types of tasks. TextBlob "stands on the giant shoulders of NLTK and pattern, and plays nicely with both." It has a considerable amount of ML embedded in its API.

Note: A useful Quick Start guide is available for TextBlob that is recommended for experienced Python developers

When attempting to identify noun phrases, TextBlob offers several options of extractors to find noun phrases. Take a look at ConllExtractor.

from textblob import TextBlob
from textblob.np_extractors import ConllExtractor
# import and create a Conll extractor to use later 
extractor = ConllExtractor()

# later when you need a noun phrase extractor:
user_input = input("> ")
user_input_blob = TextBlob(user_input, np_extractor=extractor)  # note non-default extractor specified
np = user_input_blob.noun_phrases                                    

What's going on here? ConllExtractor is "A noun phrase extractor that uses chunk parsing trained with the ConLL-2000 training corpus." ConLL-2000 refers to the Conference on Computational Natural Language Learning (CoNLL-2000). Each year the conference hosted a workshop to tackle a thorny NLP problem, and in 2000 it was noun chunking. A model was trained on the Wall Street Journal, with "sections 15-18 as training data (211727 tokens) and section 20 as test data (47377 tokens)". You can look at the procedures used here and the results.

Task: Improving your bot with a little NLP

In the previous lesson you built a very simple Q&A bot. Now, you'll make Marvin a bit more sympathetic by analyzing your input for sentiment and printing out a response to match the sentiment. You'll also need to identify a noun_phrase and ask about it.

Your steps when building a better conversational bot:

  1. Print instructions advising the user how to interact with the bot
  2. Start loop
    1. Accept user input
    2. If user has asked to exit, then exit
    3. Process user input and determine appropriate sentiment response
    4. If a noun phrase is detected in the sentiment, pluralize it and ask for more input on that topic
    5. Print response
  3. loop back to step 2

Here is the code snippet to determine sentiment using TextBlob. Note there are only four gradients of sentiment response (you could have more if you like):

if user_input_blob.polarity <= -0.5:
	response = "Oh dear, that sounds bad. "
elif user_input_blob.polarity <= 0:
	response = "Hmm, that's not great. "
elif user_input_blob.polarity <= 0.5:
	response = "Well, that sounds positive. "
elif user_input_blob.polarity <= 1:
	response = "Wow, that sounds great. "

Here is some sample output to guide you (user input is on the lines with starting with >):

Hello, I am Marvin, the friendly robot.
You can end this conversation at any time by typing 'bye'
After typing each answer, press 'enter'
How are you today?
> I am ok
Well, that sounds positive. Can you tell me more?
> I went for a walk and saw a lovely cat
Well, that sounds positive. Can you tell me more about lovely cats?
> cats are the best. But I also have a cool dog
Wow, that sounds great. Can you tell me more about cool dogs?
> I have an old hounddog but he is sick
Hmm, that's not great. Can you tell me more about old hounddogs?
> bye
It was nice talking to you, goodbye!

One possible solution to the task is here

Knowledge Check

  1. Do you think the sympathetic responses would 'trick' someone into thinking that the bot actually understood them?
  2. Does identifying the noun phrase make the bot more 'believable'?
  3. Why would extracting a 'noun phrase' from a sentence a useful thing to do?

🚀Challenge

Take a task in the prior knowledge check and try to implement it. Test the bot on a friend. Can it trick them? Can you make your bot more 'believable?'

Post-lecture quiz

Review & Self Study

In the next few lessons you will learn more about sentiment analysis. Research this interesting technique in articles such as these on KDNuggets

Assignment: Make a bot talk back