Metadata-Version: 2.1
Name: NlpToolkit-NGram
Version: 1.0.16
Summary: NGram library
Home-page: https://github.com/StarlangSoftware/NGram-Py
Author: olcaytaner
Author-email: olcay.yildiz@ozyegin.edu.tr
License: UNKNOWN
Description: N-Gram
        ============
        
        An N-gram is a sequence of N words: a 2-gram (or bigram) is a two-word sequence of words like “lütfen ödevinizi”, “ödevinizi çabuk”, or ”çabuk veriniz”, and a 3-gram (or trigram) is a three-word sequence of words like “lütfen ödevinizi çabuk”, or “ödevinizi çabuk veriniz”.
        
        ## Smoothing
        
        To keep a language model from assigning zero probability to unseen events, we’ll have to shave off a bit of probability mass from some more frequent events and give it to the events we’ve never seen. This modification is called smoothing or discounting.
        
        ### Laplace Smoothing
        
        The simplest way to do smoothing is to add one to all the bigram counts, before we normalize them into probabilities. All the counts that used to be zero will now have a count of 1, the counts of 1 will be 2, and so on. This algorithm is called Laplace smoothing.
        
        ### Add-k Smoothing
        
        One alternative to add-one smoothing is to move a bit less of the probability mass from the seen to the unseen events. Instead of adding 1 to each count, we add a fractional count k. This algorithm is therefore called add-k smoothing.
        
        For Developers
        ============
        
        You can also see [Cython](https://github.com/starlangsoftware/NGram-Cy), [Java](https://github.com/starlangsoftware/NGram), [C++](https://github.com/starlangsoftware/NGram-CPP), [Swift](https://github.com/starlangsoftware/NGram-Swift), or [C#](https://github.com/starlangsoftware/NGram-CS) repository.
        
        ## Requirements
        
        * [Python 3.7 or higher](#python)
        * [Git](#git)
        
        ### Python 
        
        To check if you have a compatible version of Python installed, use the following command:
        
            python -V
            
        You can find the latest version of Python [here](https://www.python.org/downloads/).
        
        ### Git
        
        Install the [latest version of Git](https://git-scm.com/book/en/v2/Getting-Started-Installing-Git).
        
        ## Pip Install
        
        	pip3 install NlpToolkit-NGram
        
        ## Download Code
        
        In order to work on code, create a fork from GitHub page. 
        Use Git for cloning the code to your local or below line for Ubuntu:
        
        	git clone <your-fork-git-link>
        
        A directory called NGram will be created. Or you can use below link for exploring the code:
        
        	git clone https://github.com/starlangsoftware/NGram-Py.git
        
        ## Open project with Pycharm IDE
        
        Steps for opening the cloned project:
        
        * Start IDE
        * Select **File | Open** from main menu
        * Choose `NGram-PY` file
        * Select open as project option
        * Couple of seconds, dependencies will be downloaded. 
        
        Detailed Description
        ============
        
        + [Training NGram](#training-ngram)
        + [Using NGram](#using-ngram)
        + [Saving NGram](#saving-ngram)
        + [Loading NGram](#loading-ngram)
        
        ## Training NGram
             
        To create an empty NGram model:
        
        	NGram(N: int)
        
        For example,
        
        	a = NGram(2)
        
        this creates an empty NGram model.
        
        To add an sentence to NGram
        
        	addNGramSentence(self, symbols: list)
        
        For example,
        
        	nGram = NGram(2)
        	nGram.addNGramSentence(["jack", "read", "books", "john", "mary", "went"])
        	nGram.addNGramSentence(["jack", "read", "books", "mary", "went"])
        
        
        with the lines above, an empty NGram model is created and two sentences are
        added to the bigram model.
        
        NoSmoothing class is the simplest technique for smoothing. It doesn't require training.
        Only probabilities are calculated using counters. For example, to calculate the probabilities
        of a given NGram model using NoSmoothing:
        
        	a.calculateNGramProbabilities(NoSmoothing())
        
        LaplaceSmoothing class is a simple smoothing technique for smoothing. It doesn't require
        training. Probabilities are calculated adding 1 to each counter. For example, to calculate
        the probabilities of a given NGram model using LaplaceSmoothing:
        
        	a.calculateNGramProbabilities(LaplaceSmoothing())
        
        GoodTuringSmoothing class is a complex smoothing technique that doesn't require training.
        To calculate the probabilities of a given NGram model using GoodTuringSmoothing:
        
        	a.calculateNGramProbabilities(GoodTuringSmoothing())
        
        AdditiveSmoothing class is a smoothing technique that requires training.
        
        	a.calculateNGramProbabilities(AdditiveSmoothing())
        
        ## Using NGram
        
        To find the probability of an NGram:
        
        	getProbability(self, *args) -> float
        
        For example, to find the bigram probability:
        
        	a.getProbability("jack", "reads")
        
        To find the trigram probability:
        
        	a.getProbability("jack", "reads", "books")
        
        ## Saving NGram
            
        To save the NGram model:
        
        	saveAsText(self, fileName: str)
        
        For example, to save model "a" to the file "model.txt":
        
        	a.saveAsText("model.txt");              
        
        ## Loading NGram            
        
        To load an existing NGram model:
        
        	NGram(fileName: str)
        
        For example,
        
        	a = NGram("model.txt")
        
        this loads an NGram model in the file "model.txt".
        
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