Paper Title
Sentimental Analysis Techniques For Unstructured Data
Abstract
Text classification is established research area of data mining. Nowadays additional and more applications are relied
on this approach. This survey paper presents an overview on the recent updates in Text classification algorithms and
applications. With the fast growth of the social media, unstructured data is growing rapidly and complexity in data mining also
increasing. Typically users post reviews for every type of products and services and put them on online forums. Potential
customers can be influenced a lot by other’s opinion about product and service. By processing the reviews, product
manufacturers and marketing professional can keep track of customer opinion about their products, and can get better user
satisfaction. The proposed survey paper exploits classification performance of two techniques Semantic approach functional for
the assignment of sentiment based classification of online reviews. Though, the estimated algorithms can diminish the
computation time, they considerably degrade the classification accuracy.
Keywords-Sentiment analysis, Text mining, Machine learning, Data mining, Word net.