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Sentiment Analysis using R - [Download Data files]

Sentiment Analysis is the analysis of the feelings (i.e attitudes, emotions and opinions) that are expressed in the news reports/blog posts/twitter messages etc., using lanugage processing tools. This post will discuss sentiment analysis in brief, and then present a basic model in R.

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Guest Post by Alex Boykov, WFAToolbox

WFAToolbox provides the easiest way to develop algorithmic trading strategies in MATLAB. The post will give you a tool that will help you solve the problem of getting free daily and intraday historical stock prices from 20+ Stock Exchanges, including Shanghai Stock Exchange (SSE), Bombay Stock Exchange (BSE) and many others.

Building Technical Indicators in Python

There are several kinds of technical indicators that are used to analyse and detect the direction of movement of the price. The post will highlight the following six technical indicators: CCI, Ease of Movement (EVM), Moving Average (MA), Rate of Change (ROC), Bollinder Bands, Force Index

Sharpe Ratio Explained

To measure performance of a trading strategy, annualised returns are often a common metric. Even if two strategies have comparable returns, risk is still an important aspect. Sharpe ratio is the ratio of the excess expected return of an investment per unit of volatility or standard deviation.

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