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DAPPER: Label-Free Performance Estimation after Personalization for Heterogeneous Mobile Sensing

Gong, Taesik, Kim, Yewon, Orzikulova, Adiba, Liu, Yunxin, Hwang, Sung Ju, Shin, Jinwoo, Lee, Sung-Ju

arXiv.org Artificial Intelligence

Many applications utilize sensors in mobile devices and machine learning to provide novel services. However, various factors such as different users, devices, and environments impact the performance of such applications, thus making the domain shift (i.e., distributional shift between the training domain and the target domain) a critical issue in mobile sensing. Despite attempts in domain adaptation to solve this challenging problem, their performance is unreliable due to the complex interplay among diverse factors. In principle, the performance uncertainty can be identified and redeemed by performance validation with ground-truth labels. However, it is infeasible for every user to collect high-quality, sufficient labeled data. To address the issue, we present DAPPER (Domain AdaPtation Performance EstimatoR) that estimates the adaptation performance in a target domain with only unlabeled target data. Our key idea is to approximate the model performance based on the mutual information between the model inputs and corresponding outputs. Our evaluation with four real-world sensing datasets compared against six baselines shows that on average, DAPPER outperforms the state-of-the-art baseline by 39.8% in estimation accuracy. Moreover, our on-device experiment shows that DAPPER achieves up to 396X less computation overhead compared with the baselines.


IBM and Deloitte Launch Offering for AI in Hybrid Cloud Environments - insideHPC

#artificialintelligence

NEW YORK AND ARMONK, N.Y., Oct. 11, 2021 – IBM (NYSE: IBM) and Deloitte today announced a new offering--DAPPER, an AI-enabled managed analytics solution. The solution reinforces the two organizations' 21-year global alliance--which helps organizations accelerate the adoption of hybrid cloud and AI across the enterprise--and 10 years of experience implementing the Deloitte Analytics Platform. DAPPER's end-to-end capabilities will allow organizations to gain confidence in the insights that their data provides via a secured, simple to consume managed service offering that aims to resolve the challenges of adopting AI. Relevant and actionable data can catapult companies to success in today's competitive, insights-driven business environment. Clients across industries report they are struggling to accelerate the value of AI and analytics--due to lack of trust in data, domain expertise, and the resources to create a solution that can work across business environments--while simultaneously meeting strict security and compliance requirements.


DAPPER: Scaling Dynamic Author Persona Topic Model to Billion Word Corpora

Giaquinto, Robert, Banerjee, Arindam

arXiv.org Machine Learning

Extracting common narratives from multi-author dynamic text corpora requires complex models, such as the Dynamic Author Persona (DAP) topic model. However, such models are complex and can struggle to scale to large corpora, often because of challenging non-conjugate terms. To overcome such challenges, in this paper we adapt new ideas in approximate inference to the DAP model, resulting in the DAP Performed Exceedingly Rapidly (DAPPER) topic model. Specifically, we develop Conjugate-Computation Variational Inference (CVI) based variational Expectation-Maximization (EM) for learning the model, yielding fast, closed form updates for each document, replacing iterative optimization in earlier work. Our results show significant improvements in model fit and training time without needing to compromise the model's temporal structure or the application of Regularized Variation Inference (RVI). We demonstrate the scalability and effectiveness of the DAPPER model by extracting health journeys from the CaringBridge corpus --- a collection of 9 million journals written by 200,000 authors during health crises.