NEW RESEARCH
Scalable Differentiable Causal Discovery in the Presence of Latent Confounders with Skeleton Posterior
Differentiable causal discovery has made significant advancements in the learning of directed acyclic graphs. However, its application to real-world datasets remains restricted due to the ubiquity of latent confounders and the requirement to learn maximal ancestral graphs (MAGs). Previous differentiable MAG learning algorithms have been limited to small datasets and failed to scale to larger ones (e.g., with more than 50 variables).
In a recent paper: Scalable Differentiable Causal Discovery in the Presence of Latent Confounders with Skeleton Posterior, researchers from Microsoft and external colleagues explore the potential for causal skeleton, which is the undirected version of the causal graph, to improve accuracy and reduce the search space of the optimization procedure, thereby enhancing the performance of differentiable causal discovery. They propose SPOT (Skeleton Posterior-guided OpTimization), a two-phase framework that harnesses skeleton posterior for differentiable causal discovery in the presence of latent confounders.
Extensive experiments on various datasets show that SPOT substantially outperforms state-of-the-art methods for MAG learning. SPOT also demonstrates its effectiveness in the accuracy of skeleton posterior estimation in comparison with non-parametric bootstrap-based, or more recently, variational inference-based methods. The adoption of skeleton posterior exhibits strong promise in various causal discovery tasks.
NEW RESEARCH
Evaluating the Feasibility of Visual Imagery for an EEG-Based Brain–Computer Interface
Brain signals recorded via non-invasive electroencephalography (EEG) could help patients with severe neuromuscular disorders communicate with and control the world around them. Brain-computer interface (BCI) technology could use visual imagery, or the mental simulation of visual information from memory, as an effective control paradigm, directly conveying the user’s intention.
Initial investigations have been unable to fully evaluate the capabilities of true spontaneous visual mental imagery. One major limitation is that the target image is typically displayed immediately preceding the imagery period. This paradigm does not capture spontaneous mental imagery, as would be necessary in an actual BCI application, but something more akin to short-term retention in visual working memory.
In a recent paper: Evaluating the Feasibility of Visual Imagery for an EEG-Based Brain–Computer Interface, researchers from Microsoft and external colleagues show that short-term visual imagery following the presentation of a specific target image provides a stronger, more easily classifiable neural signature in EEG than spontaneous visual imagery from long-term memory following an auditory cue for the image. This research, published in IEEE Transactions on Neural Systems and Rehabilitation Engineering, provides the first direct comparison of short-term and long-term visual imagery tasks and provides greater insight into the feasibility of using visual imagery as a BCI control strategy.
Microsoft Research Blog
Microsoft Research Forum Episode 3: Globally inclusive and equitable AI, new use cases for AI, and more
In the latest episode of Microsoft Research Forum, researchers explored the importance of globally inclusive and equitable AI, shared updates on AutoGen and MatterGen, presented novel use cases for AI, including industrial applications and the potential of multimodal models to improve assistive technologies.
NEW RESEARCH
Evolving Roles and Workflows of Creative Practitioners in the Age of Generative AI
Many creative practitioners – designers, software developers, and architects, for example – are using generative AI models to produce text, images, and other assets. While human-computer interaction (HCI) research explores specific generative AI models and creativity support tools, little is known about practitioners’ evolving roles and workflows with models across a project’s stages. This knowledge could help guide the development of the next generation of creativity support tools.
In a recent paper: Evolving Roles and Workflows of Creative Practitioners in the Age of Generative AI, researchers from Microsoft and the University of California-San Diego, contribute to this knowledge by employing a triangulated method to capture information from interviews, videos, and survey responses of creative practitioners reflecting on projects they completed with generative AI. Their observations help uncover a set of factors that capture practitioners’ perceived roles, challenges, benefits, and interaction patterns when creating with generative AI. From these factors, the researchers offer insights and propose design opportunities and priorities that serve to encourage reflection from the wider community of creativity support tools and generative AI stakeholders, such as systems creators, researchers, and educators, on how to develop systems that meet the needs of creatives in human-centered ways.
NEW RESEARCH
“It’s like a rubber duck that talks back”: Understanding Generative AI-Assisted Data Analysis Workflows through a Participatory Prompting Study
End-user tools based on generative AI can help people complete many tasks. One such task is data analysis, which is notoriously challenging for non-experts, but also holds much potential for AI. To understand how data analysis workflows can be assisted or impaired by generative AI, researchers from Microsoft conducted a study using Bing Chat via participatory prompting, a newer methodology in which users and researchers reflect together on tasks through co-engagement with generative AI. The recent paper: “It’s like a rubber duck that talks back”: Understanding Generative AI-Assisted Data Analysis Workflows through a Participatory Prompting Study, demonstrates the value of the participatory prompting method. The researchers found that generative AI benefits the information foraging and sensemaking loops of data analysis in specific ways, but also introduces its own barriers and challenges, arising from the difficulties of query formulation, specifying context, and verifying results. Based on these findings, the paper presents several implications for future AI research and the design of new generative AI interactions.