Feature Selection using Clustering Algorithms: FAST and LUFS

Abstract

Feature selection is used to reduce the number of features in many applications where hundreds or thousands of features are present in data. Many feature selection methods are proposed which mainly focus on finding relevant features. High dimensional data becomes very common with the emerging growth of applications. Thus, there is a need of mining High dimensional data very effectively and efficiently. Clustering is widely used data mining model that partitions data into a set of groups, each of which is called a cluster. To reduce the dimensionality of the data and to select a subset of useful features from this clusters is the main goal of feature subset selection. In dealing with high-dimensional data for efficient data mining, feature selection has been shown very effective. Popular social media data nowadays increasingly presents new challenges to feature selection. Social media data consists of data such as posts, comments, images, tweets, and linked data which describes the relationships between users of social media and the users who post the posts. The nature of social media increases the already challenging problem of feature selection because the social media data is massive, noisy, and incomplete. There are several algorithms applied to find the efficiency and effectiveness of the features. Here we are using the combination of FAST and Linked Unsupervised feature selection algorithm for the linked high dimensional data

Authors and Affiliations

Neha V. Dharmale

Keywords

Related Articles

Evaluation of Green Marketing Strategies in FMCG Segment

Going green, green economy or the green movement has gained massive popularity globally over the past several years and its influence has spread across just about FMCG industry. Being “green” helps preserve and sustain s...

Fast and Approximate Processing Unit for 2D Discrete Cosine System

The recent time witnesses a tremendous need for high performance digital signal Processing (DSP) systems for high end emerging applications like HD-TV, medical imaging, satellite communication, 3G mobile technologies etc...

Assessment of Some Heavy Metals Contamination in Some Vegetable and Canned Foods: A Review

Heavy metal depositions are associated with a wide range of sources such as small-scale industries including (battery production, metal products, metal smelting and cable coating industries), vehicular emissions, resuspe...

Error Free Cryptographic Secure Communication Using LDPC and Stopping Set Algorithm

In this paper we discuss how LDPC and Stopping set can be used in communication system design. In cryptographic secure communication we are transmitting data securely. LDPC algorithm implemented at sender side and stoppi...

Some Important Properties of Intuitionistic Fuzzy Soft Sequentially Compact & Totally Bounded(IFS) Spaces

The word, soft set is introduced by Molodtsov[1] as an innovative mathematical tool to handle uncertainties which occur in the developments and progress of Economics, Social Science, Environment, Engineering, Medical Sci...

Download PDF file
  • EP ID EP241058
  • DOI -
  • Views 113
  • Downloads 0

How To Cite

Neha V. Dharmale (2015). Feature Selection using Clustering Algorithms: FAST and LUFS. International journal of Emerging Trends in Science and Technology, 2(7), 2825-2829. https://europub.co.uk/articles/-A-241058