Stock Recommendations using Bio-Inspired Computations on Social Media

Journal Title: Transactions on Machine Learning and Artificial Intelligence - Year 2017, Vol 5, Issue 1

Abstract

The tremendous growth of the social networks has paved way for social interactions of investing communities about a company�s stock performance. Investors are able to share their comments on stocks using social media platforms. These interactions are captured and mined to produce advice on investing which helps retail investors to do prospective investments to increase profits. In this paper, we propose a novel stock recommendation methodology using Ant Colony Optimization (ACO). This method extracts sentiments from the investor�s stock reviews and performs the sentiment analysis, which is optimized by the ACO. This method helps to find the correlation between sentiments and stock values, to make future stock predictions and to give stock recommendations to the retail investor.

Authors and Affiliations

Sophia Swamiraj, Rajkumar Kannan

Keywords

Related Articles

Development of SLA Monitoring Tools Based on Proposed DMI in Cloud Computing

Service level agreement (SLA) is a contract between service provider and user about the quality of service (QoS) in cloud computing. The cost value and benefit value of SLA monitoring systems is a concerned issue in clou...

Stress Management in Primary Caregivers: A Health Challenge

Technology based advances in healthcare are leading to social changes that, in turn, will require innovative responses from health systems. Mainly due to these advances, life expectancy grows so, the aging of world popul...

Frame Based Postprocessor for Speech Recognition Based on Augmented Conditional Random Fields

In this paper, we present a novel postprocessor for speech recognition using the Augmented Conditional Random Field (ACRF) framework. In this framework, a primary acoustic model is used to generate state poste- rior scor...

Disassembly Modeling of an of End-Of-Life (EOL) Mechanical Damper for Recycling

Today’s rapidly developing technologies and product designs have enabled manufacturers to deliver new products to consumers at a dramatic rate. This has in turn resulted in shorter lifespan for products, because, more of...

Survey and Comparative Study on Agile Methods in Software Engineering

Today‘s business environment is very much dynamic, and organizations are constantly changing their software requirements to adjust with new environment. They also demand for fast delivery of software products as well as...

Download PDF file
  • EP ID EP277048
  • DOI 10.14738/tmlai.51.2537
  • Views 96
  • Downloads 0

How To Cite

Sophia Swamiraj, Rajkumar Kannan (2017). Stock Recommendations using Bio-Inspired Computations on Social Media. Transactions on Machine Learning and Artificial Intelligence, 5(1), 26-42. https://europub.co.uk/articles/-A-277048