UNiON Scholar
UNiON Web Scholar iON AI About Scholar
322 scholarly results for stat.OT
Scholar iON Academic Synthesis
This collection of scholarly papers spans diverse fields, each addressing significant advancements in their respective domains. The exploration of pressure-induced superconductivity in Bi2Te3 highlights the potential for topological superconductivity without structural phase transitions under high pressure, suggesting interactions between superconducting bulk states and Dirac-type surface states (Zhang et al., 2010). Concurrently, the development of pH-responsive polymers for drug delivery underscores the versatility of smart polymers in targeting specific physiological environments, with potential applications in non-invasive routes but challenges in biocompatibility and scalability (Singh & Nayak, 2023). In environmental science, the study of aerosol pH in Beijing identifies seasonal variations and the influence of specific ions, emphasizing the complexity of atmospheric chemistry and its regional specificity (Ding et al., 2019). In machine learning, Flow Q-Learning presents a novel approach in offline reinforcement learning by employing flow-matching policies, demonstrating enhanced performance and stability across various tasks (Park et al., 2025). Collectively, these studies contribute to the understanding and advancement of materials science, biomedical engineering, environmental chemistry, and artificial intelligence.
🎓 Deep dive with Scholar iON →
semanticscholar.org · scholarly article
Pressure-induced superconductivity in topological parent compound Bi2Te3
J. Zhang; S. J. Zhang; H. Weng; Wei Zhang; Li Yang; Q. Liu; S. Feng; X. -. Wang; R. Yu; Lipeng Cao; Lin Wang; Wenge Yang; H. Z. Liu; W. Y. Zhao; Shou-Cheng Zhang; X. Dai; Z. Fang; C. Jin
2010 Proceedings of the National Academy of Sciences of the United States of America 📖 Cited 269 times Open Access DOI: 10.1073/pnas.1014085108
We report a successful observation of pressure-induced superconductivity in a topological compound Bi2Te3 with Tc of ∼3 K between 3 to 6 GPa. The combined high-pressure structure investigations with synchrotron radiation indicated that the superconductivity occurred at the ambient phase without crystal structure phase transition. The Hall effects measurements indicated the hole-type carrier in the pressure-induced superconducting Bi2Te3 single crystal. Consequently, the first-principles calculations based on the structural data obtained by the Rietveld refinement of X-ray diffraction patterns at high pressure showed that the electronic structure under pressure remained topologically nontrivial. The results suggested that topological superconductivity can be realized in Bi2Te3 due to the proximity effect between superconducting bulk states and Dirac-type surface states. We also discuss the possibility that the bulk state could be a topological superconductor.
semanticscholar.org · scholarly article
pH‐responsive polymers for drug delivery: Trends and opportunities
J. Singh; P. Nayak
2023 Journal of Polymer Science 📖 Cited 213 times Open Access DOI: 10.1002/pol.20230403
Polymer science has applications in biomedical engineering, prosthetics, surgical implants, and prospective pharmaceutical excipients for drug delivery. “Intelligent or Smart Polymers” are created for drug targeting either by derivatization of natural polymers or controlled radical polymerization of electrolytes. Their mode of action is governed by the environmental stimuli viz. temperature, pH, ionic concentration, magnetism, and so on. pH‐responsive polymers, because of their self‐assembling behavior, alter their solubility, conformation, surface activity, and hydrophilicity when exposed to a specific pH. The physiological pH varies from acidic nuclei to alkaline cytoplasm and highly acidic gastric juice to slightly alkaline plasma; thus, various polymers are under study for delivering small molecules, genes, peptides, enzymes, growth factors, and antibodies. The non‐invasive drug delivery routes like oral, ocular, nasal, pulmonary, transdermal, and rectal routes can be explored for targeting recombinant proteins, monoclonal antibodies, and small molecules with particular emphasis on the individual's physiological and pathological state. Further, these polymers can be designed into various architectures like dendrimers, liposomes, micelles, and metallic nanoparticles that can serve as drug reservoirs for sustaining drug release. The challenges in this field are the selection of biocompatible polymers with ease of synthesis and scale‐up, ensuring effective drug‐loading, and stability aspects, producing robust pharmacological data, and timely regulatory approvals. This review exclusively explores the physicochemical characteristics of pH‐responsive polymers, their categorization, various architectural entities, recent studies and patents, and their emerging applications concerning specific diseases.
semanticscholar.org · scholarly article
Aerosol pH and its driving factors in Beijing
Jing Ding; P. Zhao; Jie Su; Qun Dong; Xiang Du; Yufen Zhang
2019 Atmospheric Chemistry and Physics 📖 Cited 194 times Open Access DOI: 10.5194/ACP-19-7939-2019
Abstract. Aerosol acidity plays a key role in secondary aerosol formation. The high-temporal-resolution PM2.5 pH and size-resolved aerosol pH in Beijing were calculated with ISORROPIA II. In 2016–2017, the mean PM2.5 pH (at relative humidity (RH) > 30 %) over four seasons was 4.5±0.7 (winter) > 4.4±1.2 (spring) > 4.3±0.8 (autumn) > 3.8±1.2 (summer), showing moderate acidity. In coarse-mode aerosols, Ca2+ played an important role in aerosol pH. Under heavily polluted conditions, more secondary ions accumulated in the coarse mode, leading to the acidity of the coarse-mode aerosols shifting from neutral to weakly acidic. Sensitivity tests also demonstrated the significant contribution of crustal ions to PM2.5 pH. In the North China Plain (NCP), the common driving factors affecting PM2.5 pH variation in all four seasons were SO42-, TNH3 (total ammonium (gas + aerosol)), and temperature, while unique factors were Ca2+ in spring and RH in summer. The decreasing SO42- and increasing NO3- mass fractions in PM2.5 as well as excessive NH3 in the atmosphere in the NCP in recent years are the reasons why aerosol acidity in China is lower than that in Europe and the United States. The nonlinear relationship between PM2.5 pH and TNH3 indicated that although NH3 in the NCP was abundant, the PM2.5 pH was still acidic because of the thermodynamic equilibrium between NH4+ and NH3. To reduce nitrate by controlling ammonia, the amount of ammonia must be greatly reduced below excessive quantities.
semanticscholar.org · scholarly article
Flow Q-Learning
Seohong Park; Qiyang Li; Sergey Levine
2025 International Conference on Machine Learning 📖 Cited 129 times DOI: 10.48550/arXiv.2502.02538
We present flow Q-learning (FQL), a simple and performant offline reinforcement learning (RL) method that leverages an expressive flow-matching policy to model arbitrarily complex action distributions in data. Training a flow policy with RL is a tricky problem, due to the iterative nature of the action generation process. We address this challenge by training an expressive one-step policy with RL, rather than directly guiding an iterative flow policy to maximize values. This way, we can completely avoid unstable recursive backpropagation, eliminate costly iterative action generation at test time, yet still mostly maintain expressivity. We experimentally show that FQL leads to strong performance across 73 challenging state- and pixel-based OGBench and D4RL tasks in offline RL and offline-to-online RL. Project page: https://seohong.me/projects/fql/
semanticscholar.org · scholarly article
Observation of a Near-Threshold Structure in the K^{+} Recoil-Mass Spectra in e^{+}e^{-}→K^{+}(D_{s}^{-}D^{*0}+D_{s}^{*-}D^{0}).
B. C. M. Ablikim; M. Achasov; P. Adlarson; S. Ahmed; M. Albrecht; R. Aliberti; A. Amoroso; Q. An; X. Bai; Y. Bai; O. Bakina; R. Ferroli; I. Balossino; Y. Ban; K. Begzsuren; N. Berger; M. Bertani; D. Bettoni; F. Bianchi; J. Biernat; J. Bloms; A. Bortone; I. Boyko; R. Briere; H. Cai; X. Cai; A. Calcaterra; G. Cao; N. Cao; S. Cetin; J. Chang; W. Chang; G. Chelkov; D. Chen; G. Chen; H. Chen; M. Chen; S. Chen; X. Chen; Y. Chen; Z. Chen; W. Cheng; G. Cibinetto; F. Cossio; X. Cui; H. Dai; X. Dai; A. Dbeyssi; R. Bo
2021 Physical Review Letters 📖 Cited 110 times Open Access DOI: 10.1103/PhysRevLett.126.102001
We report a study of the processes of e^{+}e^{-}→K^{+}D_{s}^{-}D^{*0} and K^{+}D_{s}^{*-}D^{0} based on e^{+}e^{-} annihilation samples collected with the BESIII detector operating at BEPCII at five center-of-mass energies ranging from 4.628 to 4.698 GeV with a total integrated luminosity of 3.7  fb^{-1}. An excess of events over the known contributions of the conventional charmed mesons is observed near the D_{s}^{-}D^{*0} and D_{s}^{*-}D^{0} mass thresholds in the K^{+} recoil-mass spectrum for events collected at sqrt[s]=4.681  GeV. The structure matches a mass-dependent-width Breit-Wigner line shape, whose pole mass and width are determined as (3982.5_{-2.6}^{+1.8}±2.1)  MeV/c^{2} and (12.8_{-4.4}^{+5.3}±3.0)  MeV, respectively. The first uncertainties are statistical and the second are systematic. The significance of the resonance hypothesis is estimated to be 5.3  σ over the contributions only from the conventional charmed mesons. This is the first candidate for a charged hidden-charm tetraquark with strangeness, decaying into D_{s}^{-}D^{*0} and D_{s}^{*-}D^{0}. However, the properties of the excess need further exploration with more statistics.
semanticscholar.org · scholarly article
Contextual Stochastic Block Model: Sharp Thresholds and Contiguity
Chen Lu; S. Sen
2020 Journal of machine learning research 📖 Cited 24 times
We study community detection in the contextual stochastic block model arXiv:1807.09596 [cs.SI], arXiv:1607.02675 [stat.ME]. In arXiv:1807.09596 [cs.SI], the second author studied this problem in the setting of sparse graphs with high-dimensional node-covariates. Using the non-rigorous cavity method from statistical physics, they conjectured the sharp limits for community detection in this setting. Further, the information theoretic threshold was verified, assuming that the average degree of the observed graph is large. It is expected that the conjecture holds as soon as the average degree exceeds one, so that the graph has a giant component. We establish this conjecture, and characterize the sharp threshold for detection and weak recovery.
semanticscholar.org · scholarly article
Identifying the Development and Application of Artificial Intelligence in Scientific Text
James W. Dunham; Jennifer Melot; D. Murdick
2020 arXiv.org 📖 Cited 19 times
We describe a strategy for identifying the universe of research publications relevant to the application and development of artificial intelligence. The approach leverages the arXiv corpus of scientific preprints, in which authors choose subject tags for their papers from a set defined by editors. We compose a functional definition of AI relevance by learning these subjects from paper metadata, and then inferring the arXiv-subject labels of papers in larger corpora: Clarivate Web of Science, Digital Science Dimensions, and Microsoft Academic Graph. This yields predictive classification $F_1$ scores between .75 and .86 for Natural Language Processing (cs.CL), Computer Vision (cs.CV), and Robotics (cs.RO). For a single model that learns these and four other AI-relevant subjects (cs.AI, cs.LG, stat.ML, and cs.MA), we see precision of .83 and recall of .85. We evaluate the out-of-domain performance of our classifiers against other sources of topic information and predictions from alternative methods. We find that a supervised solution can generalize to identify publications that belong to the high-level fields of study represented on arXiv. This offers a method for identifying AI-relevant publications that updates at the pace of research output, without reliance on subject-matter experts for query development or labeling.
semanticscholar.org · scholarly article
NLLG Quarterly arXiv Report 09/24: What are the most influential current AI Papers?
Christoph Leiter; Jonas Belouadi; Yanran Chen; Ran Zhang; Daniil Larionov; A. Kostikova; Steffen Eger
2024 arXiv.org 📖 Cited 4 times DOI: 10.48550/arXiv.2412.12121
The NLLG (Natural Language Learning&Generation) arXiv reports assist in navigating the rapidly evolving landscape of NLP and AI research across cs.CL, cs.CV, cs.AI, and cs.LG categories. This fourth installment captures a transformative period in AI history - from January 1, 2023, following ChatGPT's debut, through September 30, 2024. Our analysis reveals substantial new developments in the field - with 45% of the top 40 most-cited papers being new entries since our last report eight months ago and offers insights into emerging trends and major breakthroughs, such as novel multimodal architectures, including diffusion and state space models. Natural Language Processing (NLP; cs.CL) remains the dominant main category in the list of our top-40 papers but its dominance is on the decline in favor of Computer vision (cs.CV) and general machine learning (cs.LG). This report also presents novel findings on the integration of generative AI in academic writing, documenting its increasing adoption since 2022 while revealing an intriguing pattern: top-cited papers show notably fewer markers of AI-generated content compared to random samples. Furthermore, we track the evolution of AI-associated language, identifying declining trends in previously common indicators such as"delve".
semanticscholar.org · scholarly article
On the Origin of Species of Self-Supervised Learning
Samuel Albanie; Erika Lu; João F. Henriques
2021 arXiv.org 📖 Cited 1 times
In the quiet backwaters of cs.CV, cs.LG and stat.ML, a cornucopia of new learning systems is emerging from a primordial soup of mathematics-learning systems with no need for external supervision. To date, little thought has been given to how these self-supervised learners have sprung into being or the principles that govern their continuing diversification. After a period of deliberate study and dispassionate judgement during which each author set their Zoom virtual background to a separate Galapagos island, we now entertain no doubt that each of these learning machines are lineal descendants of some older and generally extinct species. We make five contributions: (1) We gather and catalogue row-major arrays of machine learning specimens, each exhibiting heritable discriminative features; (2) We document a mutation mechanism by which almost imperceptible changes are introduced to the genotype of new systems, but their phenotype (birdsong in the form of tweets and vestigial plumage such as press releases) communicates dramatic changes; (3) We propose a unifying theory of self-supervised machine evolution and compare to other unifying theories on standard unifying theory benchmarks, where we establish a new (and unifying) state of the art; (4) We discuss the importance of digital biodiversity, in light of the endearingly optimistic Paris Agreement.
arxiv.org · scholarly article
Non thermal small black holes
Xavier Calmet; Dionysios Fragkakis; Nina Gausmann
2012 arXiv Open Access
In this chapter we review the current theoretical state of the art of small black holes at the LHC. We discuss the production mechanism for small non thermal black holes at the LHC and discuss new signatures due to a possible discrete mass spectrum of these black holes.