GVU Center Brown Bag Seminar: Thomas Ploetz "Machine Learning for Sensor Data Analysis in HCI"

*********************************
There is now a CONTENT FREEZE for Mercury while we switch to a new platform. It began on Friday, March 10 at 6pm and will end on Wednesday, March 15 at noon. No new content can be created during this time, but all material in the system as of the beginning of the freeze will be migrated to the new platform, including users and groups. Functionally the new site is identical to the old one. webteam@gatech.edu
*********************************

Event Details
  • Date/Time:
    • Thursday November 30, 2017 - Friday December 1, 2017
      11:30 am - 12:59 pm
  • Location: Technology Square Research Building, Atlanta, GA
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
    Free food
Contact

gvu@cc.gatech.edu

Summaries

Summary Sentence: This seminar will take a foray into pitfalls of utilitarian use of machine learning, and ways to avoid them.

Full Summary: In this talk I will advocate the enormous potential machine learning methods have for current and next generations of HCI applications and systems — specifically targeting time-series assessment as it is most common for HCI related sensor data analysis problems. In doing so I will focus on common pitfalls that a utilitarian use of machine learning methods inevitably brings — and will offer ways to avoid these.

Media
  • Thomas Ploetz Thomas Ploetz
    (image/jpeg)

ABSTRACT

Many contemporary systems in human computer interaction (HCI) including mobile and ubiquitous computing are based on some form of automated sensor data analysis. Prominent examples are innovative and more intuitive input modalities such as voice and gesture, or automated activity logging and analysis. It is fair to conclude that sensor data analysis is key to context aware computing as a whole. Such prominence requires robust and reliable methods that can cope with the challenges of real-world HCI applications and systems, of which there are many: Noisy sensor readings; often ambiguous, sometimes erroneous ground truth annotation (labeling); small datasets that can be used for method development; hard real-time constraints for analysis; etc.
 
As a key component of sensor data analysis in HCI (and beyond) many researchers have moved towards employing machine learning techniques, especially those related to the automated analysis of time-series data as they are recorded through the multitude of sensors used in HCI. In recent years the field of machine learning has seen an explosion in growth and very sophisticated methods now do exist that are key enablers for a plethora of application areas. Most appealing to many practitioners is the availability of toolkits such as Matlab, Weka, scikit-learn, and the various deep learning frameworks to name but a few, that nicely package machine learning methods. These toolkits effectively hide the complexity of machine learning methods — which, I argue, is both a blessing and a curse. Packaging away complex functionality is common practice in, for example, software engineering where libraries with clear interface specifications provide higher level functionality to practitioners. To some extent machine learning toolkits provide similar functionalities and as such make these methods accessible to practitioners in the first place. Yet, hiding the complexity of machine learning can be dangerous. Without careful considerations of appropriateness of methods for specific problems beyond the mere interface fit of the chosen toolkit, practitioners are at risk of falling victim to flaky conclusions.
 
In this talk I will advocate the enormous potential machine learning methods have for current and next generations of HCI applications and systems — specifically targeting time-series assessment as it is most common for HCI related sensor data analysis problems. In doing so I will focus on common pitfalls that a utilitarian use of machine learning methods inevitably brings — and will offer ways to avoid these.
 

SPEAKER BIO

Thomas Ploetz is a Computer Scientist with expertise and almost 15 years experience in Pattern Recognition and Machine Learning research (PhD from Bielefeld University, Germany). His research agenda focuses on applied machine learning, that is developing systems and innovative sensor data analysis methods for real world applications. Primary application domain for his work is computational behavior analysis where he develops methods for automated and objective behavior assessments in naturalistic environments. Main driving functions for his work are "in the wild" deployments and as such the development of systems and methods that have a real impact on people's lives.
 
Thomas has “recently” (February 2017) joined the School of Interactive Computing where he works as an Associate Professor of Computing. Prior to this he was an academic at the School of Computing Science at Newcastle University in Newcastle upon Tyne, UK, where he was a Reader (Assoc. Prof.) for "Computational Behaviour Analysis" affiliated with Open Lab, Newcastle's interdisciplinary research centre for cross-disciplinary research in digital technologies.

Additional Information

In Campus Calendar
Yes
Groups

GVU Center, IPaT, School of Interactive Computing

Invited Audience
Faculty/Staff, Public, Graduate students, Undergraduate students
Categories
Seminar/Lecture/Colloquium
Keywords
No keywords were submitted.
Status
  • Created By: Dorie Taylor
  • Workflow Status: Published
  • Created On: Nov 14, 2017 - 11:52am
  • Last Updated: Nov 27, 2017 - 2:45pm