RESEARCH APPROACH.

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Presentation transcript:

RESEARCH APPROACH

Problem objectification How to solve the problem ? RESEARCH PROBLEM Problem objectification How to solve the problem ? Approach TEXTBOOK (Basic Theory) PAPER, JOURNAL, PROCIDING (The State of The Art)

PROBLEM – APPROACH RELATIONSHIP PROBLEMS APPROACH FOR EXAMPLE

WARNING !!!! Build of software or system are not main objective of research Examine, Development and Discovery of Theory are the main objective of research

WHAT IS APPROACH ? Sequence Stage Systematic The Problem To Solve

Ex : APPROACH DATA MINING ARTIFICIAL INTELLIGENCE SOFT COMPUTING SOFTWARE ENGINEERING

Data Mining Classification Estimation Variable Selection Clustering (Fuzzy C-Means, K- Mean) Visualization Market Based Analysis

Artificial Intelligence Searching Blind/Uninformed Search Heuristic Reasoning Propositional Logic First Order Logic Fuzzy Systems Planning Goal Stack Planning Constraint Posting Learning Decision Tree Neural Network Genetic Algorithm

Soft Computing Fuzzy Logic Neural Network Neural-Fuzzy Bayesian Network

Software Engineering Requirement Engineering Software Design Software Construction Software Testing Software Maintenance

SOFTWARE ENGINEERING RESEARCH TRENDS Software Process Improvement Software Quality Prediction Service Oriented Architecture Autonomic Computing Soft Computing and its Applications in Software Engineering