Producing Usable Taxonomies Cheaply and Rapidly at Pinterest Using Discovered Dynamic $\mu$-Topics
Abhijit Mahabal, Jiyun Luo, Rui Huang, Michael Ellsworth, Rui Li

TL;DR
This paper introduces a rapid, low-cost method for creating dynamic taxonomies at Pinterest using discovered $$-topics called pincepts, which adapt to shifting interests and improve search and engagement metrics.
Contribution
The paper presents a novel bottom-up discovery approach for $$-topics that automatically connect interests with relevant entities, enabling quick taxonomy creation and dynamic interest modeling.
Findings
Achieved 94% precision in taxonomy creation.
Improved search success rate by 34.8%.
Enhanced user engagement through better personalization.
Abstract
Creating a taxonomy of interests is expensive and human-effort intensive: not only do we need to identify nodes and interconnect them, in order to use the taxonomy, we must also connect the nodes to relevant entities such as users, pins, and queries. Connecting to entities is challenging because of ambiguities inherent to language but also because individual interests are dynamic and evolve. Here, we offer an alternative approach that begins with bottom-up discovery of -topics called pincepts. The discovery process itself connects these -topics dynamically with relevant queries, pins, and users at high precision, automatically adapting to shifting interests. Pincepts cover all areas of user interest and automatically adjust to the specificity of user interests and are thus suitable for the creation of various kinds of taxonomies. Human experts associate taxonomy nodes with…
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Taxonomy
TopicsData Visualization and Analytics · Advanced Text Analysis Techniques · Scientific Computing and Data Management
