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

Bilingual Information Hiding System: A Formalized Approach

Steganography and cryptography are used to maintain privacy and security over communication channels. Due to their complexity and diversity, there is a need for their continuous improvements. In this paper, we consider s...

E-CLONALG: A classifier based on Clonal Selection Algorithm

This paper proposes an improved version of CLONALG, Clone Selection Algorithm based on Artificial Immune System(AIS), that matches with the conventional classifiers in terms of accuracy tested on the same data sets. Clon...

Difficulty-Level Classification for English Writings

The popularity of e-books has grown recently. As the number of e-books continues to increase, the task of categorizing all books manually requires a significant amount of time. If English sentences can be categorized acc...

Identification of Objects by Machines using RFID Technology Identify Objetcs in Internet of Things

Embedded Systems and Internet of Things know recently a revolution in terms of innovation. With connectivity and networks, embedded systems are becoming more communicative, intelligent, and autonomous. They had the abili...

Academic Performance: Text Anxiety during examinations of Freshmen Engineering students MLRIT, Hyderabad

The main aim of this research was to find the relationship between test anxiety and academic performance of students at the under graduate level. A sample of 414 students was randomly selected from five different departm...

Download PDF file
  • EP ID EP277048
  • DOI 10.14738/tmlai.51.2537
  • Views 72
  • 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