(118b) Finding the Proverbial “Needle in the Haystack” (Poster)
AIChE Spring Meeting and Global Congress on Process Safety
2021
2021 AIChE Virtual Spring Meeting and 17th Global Congress on Process Safety
Industry 4.0 Topical Conference
Poster Session: Industry 4.0 and Big Data Analytics
Wednesday, April 21, 2021 - 3:00pm to 4:00pm
Often the tasks of Big Data Analysis and/or Discovery are impeded by the size of data sets. Moreover, when data sets are large and the desired information content in the data is quite small, the ability to discover and/or analysis this content is extremely challenged. This is akin to a real mining effort when most of the solids and elements are not the precious âgemsâ being sought. A powerful multivariate statistical approach that is often applied in such situations is Principal Component Analysis (PCA). However, the common application of PCA is to keep the top most latent variables that explain a certain threshold of the variation and discard all the rest. This approach can miss rare âgemsâ that show up in the extreme low percentages of the variation. The talk presents a PCA methodology that can find critical behavior (i.e., effects) in very large data sets when the number of experiments are very small in comparison to the number features for each experiment. An illustration of this approach will be given for a micro-array Covid-19 study of three groups types: smokers, never smokers and smokers that quit. This deep analysis will identify subgroups in these three groups with as many as one subject out of more than seventy subjects in the study.
Checkout
This paper has an Extended Abstract file available; you must purchase the conference proceedings to access it.
Do you already own this?
Log In for instructions on accessing this content.
Pricing
Individuals
AIChE Pro Members | $150.00 |
AIChE Emeritus Members | $105.00 |
Employees of CCPS Member Companies | $150.00 |
AIChE Graduate Student Members | Free |
AIChE Undergraduate Student Members | Free |
AIChE Explorer Members | $225.00 |
Non-Members | $225.00 |