Info Start-up company founded by academicians and graduate students from Sabanci University. We offer social media analysis tools and services including.

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Info Start-up company founded by academicians and graduate students from Sabanci University. We offer social media analysis tools and services including Social Network Analysis, Text Summarization, Topic Categorization, and Sentiment Analysis in Turkish and English. We use our academic background in Machine Learning and Data Mining. Gebze Org.San.B. TEKNOPARK 1.Üretim Binası No:5/ Gebze/ Kocaeli

Products Sentiment Analysis Tools ▫ Fully automatic engine that is adapted with a small effort, to specific domains such as banking, telecommunication, education, and politics. ▫ Used for doing statistical analysis of social media messages. ▫ Works for both Turkish and English %60 negative- %20 objective - %20 positive Number of messages: …..… Most frequent topics: …..…. Most frequent users: …….... Topic-wise distribution: ….....

Products Sentiment Analysis Annotation Tool ▫ Semi-automatic annotation tool to speed up human labelling of social media messages (e.g. tweets) – includes the sentiment analysis engine.  Used by media analysis companies to get accurate reports on sentiment, topics etc. of social media messages  Can be adapted for different domains.  Based on language independent techniques.

Products Social Monitoring Tool  Used by companies to monitor the latest, the most influential tweets and the most influential users.  Observe the activity of your company with respect to time and the most trending services, products or by key words related to your company.

Products Social media sentiment and influence analysis used by companies to see positive and negative tweets with their spread effect.

Products Sentiment Analysis (Tweets ranked wrt influence)

Products Text analytics: Topic categorization.