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FrameNet library

Project description

Turkish FrameNet ============

    ## FrameNet
    
    Introduced in 1997, FrameNet (Lowe, 1997; Baker et al., 1998; Fillmore and Atkins, 1998; Johnson et al., 2001) has been developed by the International Computer Science Institute in Berkeley, California. It is a growing computational lexicography project that offers in-depth semantic information on English words and 
    predicates. Based on the theory of Frame Semantics by Fillmore (Fillmore and others, 1976; Fillmore, 2006), FrameNet offers semantic information on predicate-argument structure in a way that is loosely similar to wordnet (Kilgarriff and Fellbaum, 2000).
    
    In FrameNet, predicates and related lemmas are categorized under frames. The notion of frame here is thoroughly described in Frame Semantics as a schematic representation of an event, state or relationship. These semantic information packets called frames are constituted of individual lemmas (also known as Lexical Units) and frame elements (such as the agent, theme, instrument, duration, manner, direction etc.). Frame elements can be described as semantic roles that are related to the frame. Lexical Units, or lemmas, are linked to a frame through a single sense. For instance, the lemma ”roast” can mean to criticise harshly
    or to cook by exposing to dry heat. With its latter meaning, ”roast” belongs to the Apply Heat frame.
    
    ## Turkish FrameNet
    
    In this version of Turkish FrameNet, we aimed to release a version of Turkish FrameNet that captures at least a considerable majority of the most frequent predicates, thus offering a valuable and practical resource from day one. Because Turkish is a low-resource language, it was important to ensure that FrameNet had enough coverage that it could be incorporated into NLP solutions as soon as it is released to the public.
    
    We took a closer look at Turkish WordNet and designated 8 domains that would possibly contain the most frequent predicates in Turkish: Activity, Cause, Change, Motion, Cognition, Perception, Judgement and Commerce. For the first phase, the focus was on the thorough annotation of these domains. Frames from
    English FrameNet were adopted when possible and new frames were created when needed. In the next phase, team of annotators will attack the
    Turkish predicate compilation offered by TRopBank and KeNet for a lemma-by-lemma annotation process. This way, both penetration and coverage of the Turkish FrameNet will be increased.
    
    Video Lectures
    ============
    
    [<img src="https://github.com/StarlangSoftware/TurkishFrameNet/blob/master/video.jpg" width="50%">](https://youtu.be/mE600WMdSrQ)
    
    For Developers
    ============
    
    You can also see [Cython](https://github.com/starlangsoftware/TurkishFrameNet-Cy), [Java](https://github.com/starlangsoftware/TurkishFrameNet), 
    [C++](https://github.com/starlangsoftware/TurkishFrameNet-CPP), [C](https://github.com/starlangsoftware/TurkishFrameNet-C), [C#](https://github.com/starlangsoftware/TurkishFrameNet-CS), [Js](https://github.com/starlangsoftware/TurkishFrameNet-Js), [Php](https://github.com/starlangsoftware/TurkishFrameNet-Php), or [Swift](https://github.com/starlangsoftware/TurkishFrameNet-Swift) 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-Framenet
    	
    ## 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 Corpus will be created. Or you can use below link for exploring the code:
    
    	git clone https://github.com/olcaytaner/TurkishFrameNet-Py.git
    
    ## Open project with Pycharm IDE
    
    Steps for opening the cloned project:
    
    * Start IDE
    * Select **File | Open** from main menu
    * Choose `TurkishFrameNet-Py` file
    * Select open as project option
    * Couple of seconds, dependencies will be downloaded. 
    
    Detailed Description
    ============
    
    + [FrameNet](#framenet)
    + [Frame](#frame)
    
    ## FrameNet
    
    FrameNet'i okumak ve tüm Frameleri hafızada tutmak için
    
    	a = FrameNet()
    
    Frameleri tek tek gezmek için
    
    	for i in range(a.size()):
    		frame = a.getFrame(i)
    	
    
    Bir fiile ait olan Frameleri bulmak için
    
    	frames = a.getFrames("TUR10-1234560")
    
    ## Frame
    
    Bir framein lexical unitlerini getirmek için
    
    	getLexicalUnit(self, index: int) -> str
    		
    Bir framein frame elementlerini getirmek için
    
    	getFrameElement(self, index: int) -> str
    
    # Cite
    
    	@inproceedings{marsan20,
     	title = {{B}uilding the {T}urkish {F}rame{N}et},
     	year = {2021},
     	author = {B. Marsan and N. Kara and M. Ozcelik and B. N. Arican and N. Cesur and A. Kuzgun and E. Saniyar and O. Kuyrukcu and O. T. Y{\i}ld{\i}z},
     	booktitle = {Proceedings of GWC 2021}
    	}

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