Title

Topic

  • ‘Do Machine Learning Models Produce TypeScript Types that Type Check?’

    “Type migration is the process of adding types to untyped code to gain assurance at compile time. TypeScript and other gradual type systems facilitate type migration by allowing programmers to start with imprecise types and gradually strengthen them. … Existing machine learning models report a high degree of accuracy in predicting individual TypeScript type annotations. However, in this paper we argue that accuracy can be misleading, and we should address a different question: can an automatic type migration tool produce code that passes the TypeScript type checker?” Read the paper and see the full list of authors in ArXiv.

    Learn more

    ,
  • ‘CHiLL: Zero-Shot Custom Interpretable Feature Extraction From Clinical Notes With Large Language Models’

    “Large Language Models (LLMs) have yielded fast and dramatic progress in NLP, and now offer strong few- and zero-shot capabilities on new tasks, reducing the need for annotation. This is especially exciting for the medical domain, in which supervision is often scant and expensive. At the same time, model predictions are rarely so accurate that they can be trusted blindly. … We propose CHiLL (Crafting High-Level Latents), which uses LLMs to permit natural language specification of high-level features for linear models via zero-shot feature extraction using expert-composed queries.” Find the paper and the full list of authors in ArXiv.

    Learn more

  • Jornet receives best demo for ‘Adversarial Aerial Metasurfaces’ at ACM HotMobile 2023

    “Electrical and computer engineering associate professor Josep Jornet received the Best Demo Award at the 24th International Workshop on Mobile Computing Systems and Applications (HotMobile) for the work titled ‘Adversarial Aerial Metasurfaces,’ with electrical engineering student Sherif Badran, PhD’26, and collaborators at Rice and Brown Universities.”

    Learn more

    ,
  • ‘Certifiably Correct Range-Aided SLAM’

    “We present the first algorithm capable of efficiently computing certifiably optimal solutions to range-aided simultaneous localization and mapping (RA-SLAM) problems. Robotic navigation systems are increasingly incorporating point-to-point ranging sensors, leading state estimation which takes the form of RA-SLAM. However, the RA-SLAM problem is more difficult to solve than traditional pose-graph SLAM … a single range measurement does not uniquely determine the relative transform between the involved sensors, and RA-SLAM inference is highly sensitive to initial estimates.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • ‘Why is the State of Neural Network Pruning so Confusing?’

    “The state of neural network pruning has been noticed to be unclear and even confusing for a while, largely due to ‘a lack of standardized benchmarks and metrics.’ To standardize benchmarks, first, we need to answer: what kind of comparison setup is considered fair? … Meanwhile, we observe several papers have used (severely) sub-optimal hyper-parameters in pruning experiments, while the reason behind them is also elusive. These sub-optimal hyper-parameters further exacerbate the distorted benchmarks, rendering the state of neural network pruning even more obscure.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • ‘Adaptive Test Generation Using a Large Language Model’

    “Unit tests play a key role in ensuring the correctness of software. However, manually creating unit tests is a laborious task, motivating the need for automation. This paper presents TestPilot, an adaptive test generation technique that leverages Large Language Models (LLMs). TestPilot uses Codex, an off-the-shelf LLM, to automatically generate unit tests for a given program without requiring additional training or few-shot learning on examples of existing tests.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • ‘Improving Deep Policy Gradients With Value Function Search’

    “Deep Policy Gradient (PG) algorithms employ value networks to drive the learning of parameterized policies and reduce the variance of the gradient estimates. However, value function approximation gets stuck in local optima and struggles to fit the actual return, limiting the variance reduction efficacy and leading policies to sub-optimal performance. This paper focuses on improving value approximation and analyzing the effects on Deep PG primitives such as value prediction, variance reduction, and correlation of gradient estimates with the true gradient.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • ‘Safe Deep Reinforcement Learning by Verifying Task-Level Properties’

    “Cost functions are commonly employed in Safe Deep Reinforcement Learning (DRL). However, the cost is typically encoded as an indicator function due to the difficulty of quantifying the risk of policy decisions in the state space. Such an encoding requires the agent to visit numerous unsafe states to learn a cost-value function to drive the learning process toward safety. … In this paper, we investigate an alternative approach that uses domain knowledge to quantify the risk in the proximity of such states by defining a violation metric.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • Flood dangers rise as shipping channels deepen

    ,

    Maqsood Mansur, graduate teaching assistant, assistant professor Julia Hopkins and professor Qin Jim Chen, have published a study investigating if “depth increase in a navigational channel in an estuarine region results in the amplification of the inland penetration of storm surge, thereby increasing the flood vulnerability,” concluding “that even the most conservative scenario of [sea-level rise] will cause an approximately 51% increase in flooded area in … the deepest ship channel.” Find “Estuarine Response to Storm Surge and Sea-Level Rise Associated with Channel Deepening: A Flood Vulnerability Assessment of Southwest Louisiana, USA” and the full list of authors in Natural…

    Learn more

    , ,
  • ‘First and Foremost’: A literary journal from the first-generation, undocumented and low-income community at Northeastern

    ,

    “‘First and Foremost’ is a journal of writing and art created and published by the first-gen, undocumented, and low-income community at Northeastern. The journal is advised by Caitlin Thornbrugh, associate teaching professor in English and director of the Writing Minor, and Kat Gonso, teaching professor in English and director of the Writing Center. Students who identify as part of the first-generation, low-income, and/or undocumented community are invited and encouraged to submit creative pieces.”

    Learn more

    ,
  • Landherr receives American Institute of Chemical Engineers grant to create instructional comic for high schoolers

    “Chemical engineering distinguished teaching professor Lucas Landherr has received a $3,500 grant from the American Institute of Chemical Engineers Foundation to create a comic that details the work of chemical engineering for high school seniors and first-year college engineering students.”

    Learn more

    ,
  • ‘Efficient Resilient Functions’

    “An n-bit boolean function is resilient to coalitions of size q if no fixed set of q bits is likely to influence the value of the function when the other n — q bits are chosen uniformly at random, even though the function is nearly balanced. We construct explicit functions resilient to coalitions of size q = n/(log n)O(log log n) = n1-o(1) computable by linear-size circuits and linear-time algorithms. We also obtain a tight size-depth tradeoff for computing such resilient functions.” Read the paper and see the full list of authors at SIAM.

    Learn more

  • Tadigadapa joins 2023 National Academy of Inventors as Senior Member

    Professor and chair of electrical and computer engineering Srinivas Tadigadapa has been named as a Senior Member of the National Academy of Inventors. The National Academy of Inventors “was founded in 2010 to recognize and encourage inventors with patents issued from the United States Patent and Trademark Office, enhance the visibility of academic technology and innovation, encourage the disclosure of intellectual property, educate, and mentor innovative students, and translate the inventions of its members to benefit society,” they write in their mission statement.

    Learn more

  • Hofmann wins Outstanding Dissertation Award for work in disability studies and human-computer interaction

    Megan “Hofmann, a senior research fellow at Khoury College who will begin as an assistant professor this fall,” Matty Wasserman writes for the Khoury College of Computer Science, had been awarded with the SIGCHI Outstanding Dissertation Award for her work “within the fields of human–computer interaction (HCI) and digital fabrication.”

    Learn more

    , ,
  • Innovations in printed electronics: Transistors in silicon

    Professor of electrical and computer engineering Ravinder Dahiya, in collaboration with researchers from the University of Glasgow, has published research that advances electronic printing. Printing “high-performance and stable transistors … remains a major challenge. This is because of the difficulties to print high-mobility semiconducting materials and the lack of high-resolution printing techniques,” they write. Crucially, the researchers now propose “silicon based … transistors to demonstrate the possibility of developing high-performance complementary metal–oxide–semiconductor… computing architecture.” Read “Printed n- and p-Channel Transistors using Silicon Nanoribbons Enduring Electrical, Thermal, and Mechanical Stress” and see the full list of authors in ACS Publications.

    Learn more

    ,
  • ‘NapSS: Paragraph-Level Medical Text Simplification via Narrative Prompting and Sentence-Matching Summarization’

    “Accessing medical literature is difficult for laypeople as the content is written for specialists and contains medical jargon. Automated text simplification methods offer a potential means to address this issue. In this work, we propose a summarize-then-simplify two-stage strategy, which we call NapSS, identifying the relevant content to simplify while ensuring that the original narrative flow is preserved. In this approach, we first generate reference summaries via sentence matching between the original and the simplified abstracts.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • Bajpayee spotlight speaker at Orthopedic Research Society

    Associate professor Ambika Bajpayee presented as a spotlight speaker at the 2023 Orthopedic Research Society conferences, from February 10-14. Her talk was on “Bioelectricity for Cartilage Drug Delivery and Imaging.”

    Learn more

    ,
  • ‘Rosaries As Fashion: Why Not To Wear Prayer Beads As an Accessory’

    Professor of religion Elizabeth Bucar, with co-author Emma Cieslik, explains the recent trends behind wearing Catholic rosaries, or prayer beads, as fashion items, and also what prayer beads mean to the Catholic faith. “Given its use in expressing identity and as an instrument of prayer,” they write, “many of the college students we spoke to were uncomfortable with non-Catholics wearing rosaries as a fashion statement.”

    Learn more

    ,
  • Riley receives Black Heritage Award for ‘dedicated service to Northeastern’

    “Civil and environmental engineering lecturer and operations manager Rozanna Riley was selected to receive the Black Heritage Award, which is given to those Northeastern staff and administrators in recognition of their dedicated service to Northeastern, to the students, and/or to the John D. O’Bryant African American Institute.”

    Learn more

  • Patent for ultrasonic, underwater communication system

    , ,

    “Electrical and computer engineering assistant professor Francesco Restuccia, research assistant professor Emrecan Demirors and professor Tommaso Melodia were awarded a patent for “Underwater ultrasonic communication system and method.”

    Learn more

    ,
  • ‘Generalization in Graph Neural Networks: Improved PAC-Bayesian Bounds on Graph Diffusion’

    “Graph neural networks are widely used tools for graph prediction tasks. Motivated by their empirical performance, prior works have developed generalization bounds for graph neural networks, which scale with graph structures in terms of the maximum degree. In this paper, we present generalization bounds that instead scale with the largest singular value of the graph neural network’s feature diffusion matrix.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • ‘How Many and Which Training Points Would Need To Be Removed To Flip this Prediction?’

    “We consider the problem of identifying a minimal subset of training data St such that if the instances comprising St had been removed prior to training, the categorization of a given test point xt would have been different. … We propose comparatively fast approximation methods to find St based on influence functions, and find that—for simple convex text classification models—these approaches can often successfully identify relatively small sets of training examples which, if removed, would flip the prediction.” Read the paper and see the full list of authors in ArXiv.

    Learn more

    ,
  • Kaufman gives presentation, ‘The Last Kings of Shanghai’

    “Jonathan Kaufman, professor and director in the School of Journalism, will speak about the extraordinary story of the Kadoorie and Sassoon families who stood astride China’s business, politics and economy for 175 years, as part of the Morton E. Ruderman Memorial Lecture Series from the Jewish Studies Program.”

    ,
  • Ganguly presents ‘a personal journey’ of climate resistance

    “Auroop Ganguly, professor of civil and environmental engineering at Northeastern University, will share his personal journey building climate resilience. Professor Ganguly co-founded the climate analytics startup risQ, which models the complex financial risks posed by climate change.”

    Learn more

    ,
  • Hajjar receives $3.1 million grant for carbon-neutral construction research

    “In a new $3.1 million grant from the Department of Energy’s Advanced Research Projects Agency-Energy (ARPA-E), Northeastern department of civil and environmental engineering chair and CDM Smith Professor Jerome Hajjar will lead a multi-institution team of researchers developing a new carbon sequestration technique using cross-laminated timber composite floor systems in bolted steel construction for building structures. The new structural method aims to decrease the use of steel while increasing the use of carbon-storing timber and design for deconstruction methods.”

    Learn more

    ,
  • ‘An Optimized Acidic Digestion for the Isolation of Microplastics From Biota-Rich Samples’

    “Plastic pollution is a growing concern. To analyze plastics in environmental samples, plastics need to be isolated. We present an acidic/oxidative method optimized to preserve plastics while digesting synthetic cellulose acetate and a range of organics encountered in environmental samples.” Find the paper and the full list of authors in Environmental Pollution.

    Learn more

    ,
  • ‘Generative Adversarial Symmetry Discovery’

    ,

    “Despite the success of equivariant neural networks in scientific applications, they require knowing the symmetry group a priori. However, it may be difficult to know which symmetry to use as an inductive bias in practice. Enforcing the wrong symmetry could even hurt the performance. In this paper, we propose a framework, LieGAN, to automatically discover equivariances from a dataset using a paradigm akin to generative adversarial training.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • ‘One-Shot Empirical Privacy Estimation for Federated Learning’

    “Privacy estimation techniques for differentially private (DP) algorithms are useful for comparing against analytical bounds, or to empirically measure privacy loss in settings where known analytical bounds are not tight. … In this work, we present a novel “one-shot” approach that can systematically address these challenges, allowing efficient auditing or estimation of the privacy loss of a model during the same, single training run used to fit model parameters, and without requiring any a priori knowledge about the model architecture or task.” Read the paper and see the full list of authors in ArXiv.

    Learn more

  • Byron Wallace named Sy and Laurie Sternberg Interdisciplinary Associate Professor for work on machine learning

    “Professor Byron Wallace ‘has been awarded Northeastern’s Sy and Laurie Sternberg Interdisciplinary Associate Professorship for his work’ on applying machine learning and natural language processing to healthcare.” In an interview, Wallace gave one example of these applications: “the evolution of NLP systems [means they] can now spit out very plausible text, which medical practitioners can use to synthesize medical evidence and make better decisions for patient treatment.”

    Learn more

    ,
  • DeSteno podcast ‘How God Works’ is Ambie finalist

    Professor of psychology David DeSteno’s podcast “How God Works” was a finalist for “Best Personal Growth/Spirituality Podcast” in the Ambies, the top awards show in the podcast industry. “How God Works” interrogates why, despite the fact that “religion and science often seem at odds, there’s one thing they can agree on: people who take part in spiritual practices tend to live longer, healthier, and happier lives.” The Ambies award show took place on March 7.

    Learn more

    ,