DISA SEMINAR

InnoVAE: Generative AI for Understanding Patents and Innovation

Speaker
Dr. Dokyun (DK) Lee, Kelli Questrom Associate Professor in Management, Questrom School of Business, Boston University

13 May 2022 Friday, 10:30 AM to 12:00 PM

Via Zoom

Abstract:
A lack of interpretability limits the use of common unsupervised learning techniques (e.g., PCA, t-SNE) in contexts where they are meant to augment managerial decision-making. We develop a generative deep learning model based on a Variational AutoEncoder ("InnoVAE") that converts unstructured patent text into an interpretable, spatial representation of innovation ("Innovation Space"). After validating the internal consistency of the model, we apply it to three decades of computing system patents to show that our approach can be used to construct economically interpretable measures-at scale-that characterize a firm's IP portfolio from the text of its patents, such as whether a patent is a breakthrough innovation, the volume of intellectual property enclosed by a portfolio of patents, or the density of patents at a point in Innovation Space. We show that for explaining innovation outcomes, these interpretable, engineered features have explanatory power that augments and often surpasses the structured patent variables that have informed the very large and influential literature on patents and innovation. Our findings illustrate the potential of using generative methods on unstructured data to guide managerial decision-making.

Bio:
Dokyun (DK) Lee studies the {application, development, impact} of AI in e-commerce and the digital economy with focus on text. Specific agenda includes (1) developing and applying interpretable machine learning & natural language processing algorithms for economics of unstructured data, and (2) applying generative models on text for algorithmic theory building. He also runs the BITLab (Business Insights through Text Lab) to study application domains such as content engineering and advertising, social media marketing, brand sentiment, technological innovation, and persuasion. His work has been published at journals and conferences including Management Science, Information Systems Research, Journal of Marketing Research, AAAI, AIES, and WWW. DK holds a Bachelor's degree in Computer Science from Columbia University, a Master's degree in Statistics from Yale University and PhD from the Operation, Information and Decisions department of the Wharton School.