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Abstract
Recent growth and development of big social media platforms like Twitter, Facebook,Instagram etc. and personal blog sites generate huge amount of unstructured data.
Analysis of this data may provide insights into the opinion of people as well as their
feelings towards certain subjects, products or services. The process of extracting
valuable data from opinions of people to assess their feelings and thoughts is known
as opinion mining. Mining the opinions of people has applications in several areas:
understanding what people like or dislike is critical for making informed business and
political decisions. In this work, we focus on Opinion Mining from Text to suggest
Actionable Recommendations. The Actionable Patterns may suggest ways to alter
the user's sentiment or emotion to a more positive or desirable state. We apply our
method to Twitter Social Network Data, as well as Student Survey Education data.
We aim to suggest ways to improve the Social Network Experience and to improve
Teaching Methods and Student Learning. We implement and test our system in
Scalable Environment with BigData using the Apache Spark platform.