Web Interaction Mining Using Adaptive Feature Selection Basedpenta Layered Artificial Neural Network (AFS-Plan) Classifier

Abstract

Predicting the objective of internet users contains different applications in the areas such as e-commerce, entertainment in online, and several internet-based applications. The integral section of classifying the internet queries based on accessible features such as contextual information, keywords and their semantic relationships. This research article aims in proposing Adaptive Feature Selection based Penta Layered Artificial Neural Network Classifier for web interaction mining. Around 31 participants are chosen and given topics to search web contents. Parameters such as precision, recall and F1 score are taken for comparing the proposed AFS-PLANN classifier with the ANN and PLANN. Results proved that the proposed classifier attains better performance than that of the conventional ANN and PLANN

Authors and Affiliations

B. Kaviyarasu

Keywords

Related Articles

Engaging Students in Group Based learning through e-learning techniques in Higher Education System

Learning styles are growing fast as the technology growth in the world. New techniques are forthcoming within the higher education system to get better the student’s presentation, tutors philosophy and the institution en...

Mobile Agent Based MapReduce Framework for Big Data Processing

Distributed computing accomplished broad appropriation because of consequently parallelizing and transparently executing tasks in distributed environments. Straggling tasks is an essential test confronted by all Big Data...

Ethnomedicinal Values of Some Weed Plant Species of Bhavnagar, Gujarat, India

Weed plants are considered as unwanted and undesired plants in the fields in plant community. It is also considered as enemies to the farmers and gardeners. they are known as useless or unwanted plants .Many agriculturis...

An Intelligent and Electronic System based Classification and Prediction for Heart Disease Diagnosis

The healthcare industry collects massive amounts of healthcare data which, unfortunately, are not “mined” to discover hidden information for effective decision making. Discovery of hidden patterns and relationships often...

Malicious Agent Detection In Multi Party Data Access Structure

A data distributor has given sensitive data to a set of supposedly trusted agents (third parties). Some amount of data is leaked and found in an unauthorized machines (e.g., on the internet or computer). The distributor...

Download PDF file
  • EP ID EP245624
  • DOI -
  • Views 128
  • Downloads 0

How To Cite

B. Kaviyarasu (2017). Web Interaction Mining Using Adaptive Feature Selection Basedpenta Layered Artificial Neural Network (AFS-Plan) Classifier. International journal of Emerging Trends in Science and Technology, 4(9), 5879-5886. https://europub.co.uk/articles/-A-245624