Formalization of Learning Patterns Through SNKA

Abstract

The Learning patterns found among the learners community is steadily progressing towards the digitalized world. The learning patterns arise from acquiring and sharing knowledge. More impact is found on the usage of knowledge sharing tools such as facebook, linkedin, weblogs, etc that are dominating the traditional means of learning. Since the knowledge patterns acquired through web unstructured data is insecure, it leads to poor decision making or decision making without a root cause. These acquired patterns are also shared to others which indirectly affect the trust patterns between users. In this paper, In order to streamline the knowledge acquisition patterns and their sharing means a new framework is defined as Social Networking based Knowledge Acquisition (SNKA) to formalize the observed data and the Dynamic Itemset Count (DIC) algorithm is tried for predicting the users about the usage of web content before and after the knowledge is acquired. Finally the rough idea in building a tool is also suggested.

Authors and Affiliations

Mr Rajesh D, Dr. K. David

Keywords

Related Articles

Toward Accurate Feature Selection Based on BSS-GRF

in recent years, Feature extraction in e-mail classification plays an important role. Many Feature extraction algorithms need more effort in term of accuracy. In order to improve the classifier accuracy and for faster cl...

Modeling and Control by Multi-Model Approach of the Greenhouse Dynamical System with Multiple Time-delays

This paper presents the Internal Multi-Model Control IMMC for a multivariable discrete-time system with variable multiple delays. This work focus on the Greenhouse climate model as a multivariable time-delay system. In f...

Enhanced K-mean Using Evolutionary Algorithms for Melanoma Detection and Segmentation in Skin Images

Nowadays, Melanoma has become one of the most significant public health concerns. Malignant Melanoma (MM) is considered the most rapidly spreading type of skin cancer. In this paper, we have built models for detection, s...

Threshold Based Penalty Functions for Constrained Multiobjective Optimization

This paper compares the performance of our re-cently proposed threshold based penalty function against its dynamic and adaptive variants. These penalty functions are incorporated in the update and replacement scheme of t...

QR Code Recognition based on Principal Components Analysis Method

QR (Quick Response) code recognition systems (based on computer vision) have always been challenging to be accurately devised due to two main constraints: (1) QR code recognition system must be able to localize QR codes...

Download PDF file
  • EP ID EP95871
  • DOI 10.14569/IJACSA.2016.070119
  • Views 108
  • Downloads 0

How To Cite

Mr Rajesh D, Dr. K. David (2016). Formalization of Learning Patterns Through SNKA. International Journal of Advanced Computer Science & Applications, 7(1), 127-131. https://europub.co.uk/articles/-A-95871