Analysis of Meta-Heuristic Feature Selection Techniques on classifier performance with specific reference to psychiatric disorder

Journal Title: International Journal of Experimental Research and Review - Year 2023, Vol 31, Issue 2

Abstract

Optimization plays an important role in solving complex computational problems. Meta-Heuristic approaches work as an optimization technique. In any search space, these approaches play an excellent role in local as well as global search. Nature-inspired approaches, especially population-based ones, play a role in solving the problem. In the past decade, many nature-inspired population-based methods have been explored by researchers to facilitate computational intelligence. These methods are based on insects, birds, animals, sea creatures, etc. This research focuses on the use of Meta-Heuristic methods for the feature selection. A better optimization approach must be introduced to reduce the computational load, depending on the problem size and complexity. The correct feature set must be chosen for the diagnostic system to operate effectively. Here, population-based Meta-Heuristic optimization strategies have been used to pick the features. By choosing the best feature set, the Butterfly Optimization Algorithm (BOA) with the Enhanced Lion Optimization Algorithm (ELOA) approach would reduce classifier overhead. The results clearly demonstrate that the combined strategy has higher performance outcomes when compared to other optimization strategies.

Authors and Affiliations

Chandrabhan Singh, Mohit Gangwar, Upendra Kumar

Keywords

Related Articles

Metal-Based Drugs in Cancer Therapy

Metal-based drugs have emerged as pivotal therapeutics in cancer therapy, enlightening a path toward innovative and effective treatment strategies. Platinum-based therapeutics, notably cisplatin, carboplatin, and oxalipl...

Creating Urban Green Spaces (UGS) in Educational Institutions: A pilot project in Gurudas College, Kolkata-700054, West Bengal, India

Urban green spaces (UGS) supply ecosystem services such as biodiversity, climate regulation and other benefits. Urban green spaces are essential for the quality of life, health, and wellbeing of citizens. Urban green spa...

Alcoholic Extracts of Eleusine indica as Alternative Diuretic Regimens: A Computational Based Investigation

Diuretics are widely used in current clinical practice to increase urine production and excrete electrolytes, particularly sodium and chloride ions, without affecting the absorption of protein, vitamins, carbohydrates, o...

Relationship between physical activity and smoking behavior among college students

Poor diet, alcohol consumption and cigarette smoking constitute a major public health concern for West Bengal, India. These behaviours are increased among day by day among students which are problematic particularly in t...

A Study to Assess the Level of Softskill Practices Among Nursing Students in Selected Colleges

Soft skills are the habits and traits that determine how a person operates in the workplace like communicating with others. Students are in a position to prove themselves in different aspects, which is not possible by te...

Download PDF file
  • EP ID EP719463
  • DOI https://doi.org/10.52756/10.52756/ijerr.2023.v31spl.006
  • Views 39
  • Downloads 0

How To Cite

Chandrabhan Singh, Mohit Gangwar, Upendra Kumar (2023). Analysis of Meta-Heuristic Feature Selection Techniques on classifier performance with specific reference to psychiatric disorder. International Journal of Experimental Research and Review, 31(2), -. https://europub.co.uk/articles/-A-719463