This tool is used to turn Turkish text written in ASCII characters, which do not include some letters of the Turkish alphabet, into correctly written text with the appropriate Turkish characters (such as ı, ş, and so forth). It can also do the opposite, turning Turkish input into ASCII text, for the purpose of processing.
You can also see Cython, Java, C++, C, Swift, Js, or C# repository.
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.
Install the latest version of Git.
pip3 install NlpToolkit-Deasciifier
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 Deasciifier will be created. Or you can use below link for exploring the code:
git clone https://github.com/starlangsoftware/TurkishDeasciifier-Py.git
Steps for opening the cloned project:
- Start IDE
- Select File | Open from main menu
- Choose
TurkishDeasciifier-PY
file - Select open as project option
- Couple of seconds, dependencies will be downloaded.
Asciifier converts text to a format containing only ASCII letters. This can be instantiated and used as follows:
asciifier = SimpleAsciifier()
sentence = Sentence("çocuk")
asciified = asciifier.asciify(sentence)
print(asciified)
Output:
cocuk
Deasciifier converts text written with only ASCII letters to its correct form using corresponding letters in Turkish alphabet. There are two types of Deasciifier
:
-
SimpleDeasciifier
The instantiation can be done as follows:
fsm = FsmMorphologicalAnalyzer() deasciifier = SimpleDeasciifier(fsm)
-
NGramDeasciifier
-
To create an instance of this, both a
FsmMorphologicalAnalyzer
and aNGram
is required. -
FsmMorphologicalAnalyzer
can be instantiated as follows:fsm = FsmMorphologicalAnalyzer()
-
NGram
can be either trained from scratch or loaded from an existing model.-
Training from scratch:
corpus = Corpus("corpus.txt") ngram = NGram(corpus.getAllWordsAsArrayList(), 1) ngram.calculateNGramProbabilities(LaplaceSmoothing())
There are many smoothing methods available. For other smoothing methods, check here.
-
Loading from an existing model:
ngram = NGram("ngram.txt")
-
For further details, please check here.
-
Afterwards,
NGramDeasciifier
can be created as below:deasciifier = NGramDeasciifier(fsm, ngram)
-
A text can be deasciified as follows:
sentence = Sentence("cocuk")
deasciified = deasciifier.deasciify(sentence)
print(deasciified)
Output:
çocuk