Metadata-Version: 2.1
Name: Feature-Selction-Ranking-Algorithms
Version: 1.0.4
Summary: A Feature Selection and Feature ranking Package that can be used to select and rank features in datasets
Home-page: UNKNOWN
Author: Lakshajyoti Paul
Author-email: lakshajyotipaul777@gmail.com
License: MIT
Description: #Feature Selection and Feature Ranking Algorithms :
        
        
        A Python package that provides many feature selection and feature ranking algorithms
        
        
        Use the function call like :
        
        
        fsfr(dataset, fs = 'string_value', fr = 'string_value', ftf = 'string_value')
        
        
        Parameters :
        
        dataset  :   pandas dataframe of the original dataset
        
        It must only contain numerical values (categorical, ordinal values are excluded) and 
        the class variable (decisional attribute or variable) should be also of numerical type.
        
        
        fs    :  string values - 'gpso' or 'ga' 
        
        fs means feature selection method can be either :
        gpso : Geometric Particle Swarm Optimisation
        ga : Genetic Alogorithm
        
        
        fr    :  string values - 'rsm_a' , 'rsm_b' , 'rsm_c' , 'mifsnd' , 'mrmr'
        
        fr means feature ranking and can be either :
        rsm_a : Rough Set Method 1
        rsm_b : Rough Set Method 2
        rsm_c : Rough Set Method 3
        mifsnd : Mutual Information Feature Selection-ND
        mrmr : Minimum Redundancy Maximum Relevance
        
        
        ftf   :   string values - 'ftf_1' , 'ftf_2' , 'ftf_3'
        
        ftf means fitness function
        If 'fs' is used then, it is mandatory to specify the value of 'ftf'
        ftf_1 : fitness function = 0.75 * (100/accuracy) + 0.25 * (no of features)
        ftf_2 : fitness function = 0.75 * accuracy + 0.25 * (1 / no of features)
        ftf_3 : fitness_function = accuracy * (1 - no of features/total no of features)
        no of features = no of features that are selected by the algorithm at that instance
        
        
        
        Returns :
        list of features ranked in descending order if both 'fs' and 'fr' are used or only 'fr' is used.
        
         
        The feature selection and ranking can be used independently of each other by mentioning either fs='' or fr='' 
        but both cannot be '' and it is preferable to use both at the same time in case of larger datasets.
        
        
        
        Refrences for algorithms :
        
        gpso with ftf_1 : https://www.researchgate.net/publication/4307926_Gene_selection_in_cancer_
        
        rsm_a : http://library.isical.ac.in:8080/jspui/bitstream/10263/5158/1/Rough%20Sets%20for%20Selection%20of%20Molecular%20Descriptors%20to%20Predict%20Biological%20Activity%20of%20Molecules-IEEETOSMAC-%20Part%20C-AAR-40-6-2010-p%20639-648.pdf
        
        rsm_b : https://ieeexplore.ieee.org/document/7104131 
        
        mifsnd : https://www.sciencedirect.com/science/article/pii/S0957417414002164
        
        The rest of the algorithms have been self developed and do not contain any materials from any other sources
        
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3.7
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Description-Content-Type: text/markdown
