225 results
Relevance Newest Most Cited
HLXiON δ Ω Intent Σ Logic Ψ Synth Π Reason Γ Memory Processing: stat.ML
iON AI Synthesis
The search results on "stat.ML" highlight research focused on software startups, emphasizing the challenges and methodologies in software development within these companies. Key insights include the importance of understanding entrepreneurial decision-making and product development processes, which are crucial for innovation and success in fast-paced, resource-constrained environments. Additionally, one study explores predicting venture capital investment in startups using structural embeddings and temporal data, framing it as a binary classification task to enhance funding matches.
Ask iON more → 📚 Find Papers
arxiv.org
Software Development in Startup Companies: The Greenfield Startup Model

Software startups are newly created companies with no operating history and oriented towards producing cutting-edge products. However, despite the increasing importance of startups in the economy, few scientific studies attempt to address software engineering issues, especially for early-stage start…

cs.SE
arxiv.org
The entrepreneurial logic of startup software development: A study of 40 software startups

Context: Software startups are an essential source of innovation and software-intensive products. The need to understand product development in startups and to provide relevant support are highlighted in software research. While state-of-the-art literature reveals how startups develop their software…

cs.SE
arxiv.org
Towards understanding startup product development as effectual entrepreneurial behaviors

Software startups face with multiple technical and business challenges, which could make the startup journey longer, or even become a failure. Little is known about entrepreneurial decision making as a direct force to startup development outcome. In this study, we attempted to apply a behaviour theo…

cs.CY
arxiv.org
Predicting Startup-VC Fund Matches with Structural Embeddings and Temporal Investment Data

This study proposes a method for predicting startup inclusion, estimating the probability that a venture capital fund will invest in a given startup. Unlike general recommendation systems, which typically rank multiple candidates, our approach formulates the problem as a binary classification task t…

cs.CE cs.SI
arxiv.org
Software development in startup companies: A systematic mapping study

Context: Software startups are newly created companies with no operating history and fast in producing cutting-edge technologies. These companies develop software under highly uncertain conditions, tackling fast-growing markets under severe lack of resources. Therefore, software startups present an …

cs.SE
arxiv.org
Invasive species, extreme fire risk, and toxin release under a changing climate

Mediterranean ecosystems such as those found in California, Central Chile, Southern Europe, and Southwest Australia host numerous, diverse, fire-adapted micro-ecosystems. These micro-ecosystems are as diverse as mountainous conifer to desert-like chaparral communities. Over the last few centuries, h…

q-bio.PE physics.bio-ph
arxiv.org
Zonally opposing shifts of the intertropical convergence zone in response to climate change

Future changes in the location of the intertropical convergence zone (ITCZ) due to climate change are of high interest since they could substantially alter precipitation patterns in the tropics and subtropics. Although models predict a future narrowing of the ITCZ during the 21st century in response…

physics.ao-ph physics.geo-ph
arxiv.org
Deep Ensembles to Improve Uncertainty Quantification of Statistical Downscaling Models under Climate Change Conditions

Recently, deep learning has emerged as a promising tool for statistical downscaling, the set of methods for generating high-resolution climate fields from coarse low-resolution variables. Nevertheless, their ability to generalize to climate change conditions remains questionable, mainly due to the s…

cs.LG physics.ao-ph
arxiv.org
Fragility Modeling of Power Grid Infrastructure for Addressing Climate Change Risks and Adaptation

The resilience of electric power grids is threatened by natural hazards. Climate-related hazards are becoming more frequent and intense due to climate change. Statistical analyses clearly demonstrate a rise in the number of incidents (power failures) and their consequences in recent years. Therefore…

physics.soc-ph physics.ao-ph
arxiv.org
Active Amplification of the Terrestrial Albedo to Mitigate Climate Change: An Exploratory Study

This study explores the potential to enhance the reflectance of solar insolation by the human settlement and grassland components of the Earth's terrestrial surface as a climate change mitigation measure. Preliminary estimates derived using a static radiative transfer model indicate that such effort…

physics.ao-ph physics.geo-ph