Difference between revisions of "Market Driven Innovations and Scaling up of Twitris"

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=This project is a follow-on to=
 
=This project is a follow-on to=
 
[http://grantome.com/grant/NSF/IIP-1343041  I-Corps: Towards Commercialization of Twitris — a system for collective intelligence]: (NSF IIP-1343041). Outcome summary [https://www.youtube.com/watch?v=Yt19dIKPsaY video]
 
[http://grantome.com/grant/NSF/IIP-1343041  I-Corps: Towards Commercialization of Twitris — a system for collective intelligence]: (NSF IIP-1343041). Outcome summary [https://www.youtube.com/watch?v=Yt19dIKPsaY video]
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=Publications=
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Kamer Yuksel, Sergio Biggemann, Amit Sheth, Jeremy Brunn (2016). Using Social Data to Understand Brand Development. Direct/Interactive Marketing Research Summit. Los Angeles, CA.
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Amit Sheth, Hemant Purohit, Gary Alan Smith, Jeremy Brunn, Ashutosh Jadhav, Pavan Kapanipathi, Chen Lu, Wenbo Wang (2018). Twitris: A System for Collective Social Intelligence. Encyclopedia of Social Network Analysis and Mining 2. Reda Alhajj, Jon Rokne.  Springer-Verlag New York.  New York. ISBN: 978-1-4939-7132-9.
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Sanjaya Wijeratne, Shreyansh Bhatt, Lakshika Balasuriya, Hussein Al-Olimat, Manas Gaur, Amir Hossein Yazdavar, Amit Sheth (2017). Feature Engineering for Twitter-based Applications. Feature Engineering for Machine Learning and Data Analytics  Guozhu Dong and Huan Liu.  Chapman and Hall/CRC. 
 +
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Andrew Hampton, Shreyansh Bhatt, Alan Smith, Jeremy Brunn, Hemant Purohit, Valerie Shalin, John Flach, Amit Sheth (2017). Constructing Synthetic Social Media Stimuli for an Emergency Preparedness Functional Exercise.  14th International Conference on Information Systems for Crisis Response and Management (ISCRAM 2017).  181. ISSN: 2411-3387
 +
 +
Michelle Miller, Tanvi Banerjee, RoopTeja Muppalla, William Romine, and Amit Sheth (2017). What Are People Tweeting About Zika? An Exploratory Study Concerning Its Symptoms, Treatment, Transmission, and Prevention.  JMIR Public Health Surveillance. 3 (2),  e38. PMID: 28630032
 +
 +
Amit Sheth, Hemant Purohit, Gary Alan Smith, Jeremy Brunn, Ashutosh Jadhav, Pavan Kapanipathi, Chen Lu, Wenbo Wang (2018). Encyclopedia of Social Network Analysis and Mining 2. Reda Alhajj, Jon Rokne. Springer-Verlag New York. New York. Published. ISBN. 978-1-4939-7130-5.
 +
 +
Andrew Hampton, Shreyansh Bhatt, Alan Smith, Jeremy Brunn, Hemant Purohit, Valerie Shalin, John Flach, Amit Sheth (2017). Constructing Synthetic Social Media Stimuli for an Emergency Preparedness Functional Exercise. 14th International Conference on Information Systems for Crisis Response and Management (ISCRAM 2017). 181.
 +
 +
 +
Michele Miller, Tanvi Banerjee, Roopteja Muppalla, William Romine, Amit Sheth (2017). What Are People Tweeting About Zika? An Exploratory Study Concerning Its Symptoms, Treatment, Transmission, and Prevention. 3. (2). JMIR Public Health Surveillance, 3. Published. DOI. 10.2196/publichealth.7157.
 +
 +
Monireh Ebrahimi, Amir Hossein Yazdavar, and Amit Sheth (2017). Challenges of Sentiment Analysis for Dynamic Events. Magazine article in IEEE Intelligent Systems (Series: Affective Computing and Sentiment Analysis Editor: Erik Cambria).
 +
 +
Sanjaya Wijeratne, Shreyansh Bhatt, Lakshika Balasuriya, Hussein Al-Olimat, Manas Gaur, Amir Hossein Yazdavar, Amit Sheth (2018). Feature Engineering for Machine Learning and Data Analytics. Guozhu Dong and Huan Liu. Chapman and Hall/CRC.  ISBN. 9781138744387.
 +
 +
 +
Sarasi Lalithsena, Pavan Kapanipathi, Amit Sheth (2016). Harnessing Relationships for Domain-specific Subgraph Extraction: A Recommendation Use Case. IEEE International Conference on Big Data. Published.  DOI. 10.1109/BigData.2016.7840663.
  
 
=References=
 
=References=

Revision as of 18:54, 12 June 2018

This PFI: AIR Technology Translation project focuses on translating Twitris’ collective social media intelligence technology to capabilities well beyond current state-of-the-art social media monitoring and analysis tools. The Twitris platform is important because it can provide collective exploitation of real-time social media streams, and a variety of relevant knowledge, to significantly improve decision-making and support timely actions in various domains of economic, human, and social development. Twitris’ unique features include real-time semantic analysis of social media content along spatio-temporal-thematic, people-content-network, and sentiment-emotion-intent dimensions. These features result in deeper, contextually-relevant analysis and actionable insights when compared to the leading competing technology in this market space. This project will result in a scale-up of Twitris.

This project addresses several technology gaps as it transitions Twitris from a research prototype to a scaled-up technology capable of supporting commercial applications. Consequently, three areas of research and technology enhancement will be conducted: 1) enhancing the functionalities of Twitris with a broad range of location-specific processing that requires addressing the challenge of scarcity of spatial metadata on Twitter, 2) semantics-enhanced filtering and improved user experience for automatic and semi-automatic filtering of tweets, which requires addressing challenges such as content ambiguity and information overload, and 3) scalable architecture supporting domain-specific, knowledge-enabled modules to handle high volume, variety and velocity of data.

In addition, the project will also provide a unique education and training platform for students and recent graduates to prepare them for careers involving entrepreneurship and business and economic development, and careers in startups. Specifically, the project (a) bridges basic research with technology development and intellectual property development that can lead to successful commercialization and (b) involves close collaboration with successful entrepreneurs, business partners, and customers. It will also undertake structured educational activities involving five technical and business courses, while continuing to foster much-needed diversity in high-tech fields and computer science. This project engages several business partners in strategically-important markets to carry out trials involving their customers in an effort to evaluate the efficacy and benefits of research and technology enhancements involved in this scale-up.


People

Principal Investigators: Prof. Amit P. Sheth
Collaborators: Jeremy Brunn, Pavan Kapanipathi, Alan Smith

Funding

Nsf.jpg
  • NSF Award#: IIP 1542911
  • PFI:AIR-TT: Market-driven Innovations and Scaling up of Twitris - A System for Collective Social Intelligence
  • Timeline: 01 Oct 2015 - 31 Mar 2017
  • Award Amount: $200,000.

Social Media

Follow us on Twitter


Related Projects Using Twitris

NSF SoCS: Social Media Enhanced Organizational Sensemaking in Emergency Response

NIH eDrugTrends: Social Media Analysis to Monitor Cannabis and Synthetic Cannabinoid Use

Harassment: Context-aware Online Harassment Detection on Social Media

Project Safe Neighborhood (PSN): Westwood Partnership to Prevent Juvenile Repeat Offenders

Hazards SEES: Social and Physical Sensing Enabled Decision Support

Depression: Modeling Social Behavior for Healthcare Utilization in Depression

kHealth: Semantic Multisensory Mobile Approach to Personalized Asthma Care


Twitris is also being used for graduate courses in Computer Science, Internet Marketing, and Management Sciences.

This project is a follow-on to

I-Corps: Towards Commercialization of Twitris — a system for collective intelligence: (NSF IIP-1343041). Outcome summary video

Publications

Kamer Yuksel, Sergio Biggemann, Amit Sheth, Jeremy Brunn (2016). Using Social Data to Understand Brand Development. Direct/Interactive Marketing Research Summit. Los Angeles, CA.

Amit Sheth, Hemant Purohit, Gary Alan Smith, Jeremy Brunn, Ashutosh Jadhav, Pavan Kapanipathi, Chen Lu, Wenbo Wang (2018). Twitris: A System for Collective Social Intelligence. Encyclopedia of Social Network Analysis and Mining 2. Reda Alhajj, Jon Rokne. Springer-Verlag New York. New York. ISBN: 978-1-4939-7132-9.

Sanjaya Wijeratne, Shreyansh Bhatt, Lakshika Balasuriya, Hussein Al-Olimat, Manas Gaur, Amir Hossein Yazdavar, Amit Sheth (2017). Feature Engineering for Twitter-based Applications. Feature Engineering for Machine Learning and Data Analytics Guozhu Dong and Huan Liu. Chapman and Hall/CRC.

Andrew Hampton, Shreyansh Bhatt, Alan Smith, Jeremy Brunn, Hemant Purohit, Valerie Shalin, John Flach, Amit Sheth (2017). Constructing Synthetic Social Media Stimuli for an Emergency Preparedness Functional Exercise. 14th International Conference on Information Systems for Crisis Response and Management (ISCRAM 2017). 181. ISSN: 2411-3387

Michelle Miller, Tanvi Banerjee, RoopTeja Muppalla, William Romine, and Amit Sheth (2017). What Are People Tweeting About Zika? An Exploratory Study Concerning Its Symptoms, Treatment, Transmission, and Prevention. JMIR Public Health Surveillance. 3 (2), e38. PMID: 28630032

Amit Sheth, Hemant Purohit, Gary Alan Smith, Jeremy Brunn, Ashutosh Jadhav, Pavan Kapanipathi, Chen Lu, Wenbo Wang (2018). Encyclopedia of Social Network Analysis and Mining 2. Reda Alhajj, Jon Rokne. Springer-Verlag New York. New York. Published. ISBN. 978-1-4939-7130-5.

Andrew Hampton, Shreyansh Bhatt, Alan Smith, Jeremy Brunn, Hemant Purohit, Valerie Shalin, John Flach, Amit Sheth (2017). Constructing Synthetic Social Media Stimuli for an Emergency Preparedness Functional Exercise. 14th International Conference on Information Systems for Crisis Response and Management (ISCRAM 2017). 181.


Michele Miller, Tanvi Banerjee, Roopteja Muppalla, William Romine, Amit Sheth (2017). What Are People Tweeting About Zika? An Exploratory Study Concerning Its Symptoms, Treatment, Transmission, and Prevention. 3. (2). JMIR Public Health Surveillance, 3. Published. DOI. 10.2196/publichealth.7157.

Monireh Ebrahimi, Amir Hossein Yazdavar, and Amit Sheth (2017). Challenges of Sentiment Analysis for Dynamic Events. Magazine article in IEEE Intelligent Systems (Series: Affective Computing and Sentiment Analysis Editor: Erik Cambria).

Sanjaya Wijeratne, Shreyansh Bhatt, Lakshika Balasuriya, Hussein Al-Olimat, Manas Gaur, Amir Hossein Yazdavar, Amit Sheth (2018). Feature Engineering for Machine Learning and Data Analytics. Guozhu Dong and Huan Liu. Chapman and Hall/CRC. ISBN. 9781138744387.


Sarasi Lalithsena, Pavan Kapanipathi, Amit Sheth (2016). Harnessing Relationships for Domain-specific Subgraph Extraction: A Recommendation Use Case. IEEE International Conference on Big Data. Published. DOI. 10.1109/BigData.2016.7840663.

References

Twitris

News/Media

WSU Lab Works to Mine Social Media Posts, Dayton Daily News, July 13, 2016. [PDF]
[Discusses commercialization effort for Twitris developed at Kno.e.sis by Dayton startup Cognovi Labs, and quotes Prof. Sheth.]

The Twitris sentiment analysis tool by Cognovi Labs predicted the Brexit hours earlier than polls, TechCrunch, June 29, 2016. [PDF]
[Hours before the EU referendum votes closed and well before results were declared, Prof. Sheth’s analysis of Twitter data predicted #Brexit - votes for leave outpacing remain. Analysis was done using a campaign set up by Cognovi Labs that is powered by Twitris technology.]

Contact

Contact Prof. Amit P. Sheth for more details