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Managing and Understanding Player Feedback at Scale

Managing and Understanding Player Feedback at Scale

Whether you are working on a live title, pre/post production, ongoing maintenance, future releases, another version of a game, or a brand new title for the market, you're always looking for feedback from the community. There's no shortage of it out there, but it can be overwhelming and hard to sift through. For games shipped on PC and sold through Valve's Steam Store, a great source of player feedback for your title can be found in Steam's game reviews. We have built a new solution accelerator for Player Review Analysis that combines natural languages and machine learning techniques to help…
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Understanding Transformer Reasoning Capabilities via Graph Algorithms

Understanding Transformer Reasoning Capabilities via Graph Algorithms

arXiv:2405.18512v1 Announce Type: new Abstract: Which transformer scaling regimes are able to perfectly solve different classes of algorithmic problems? While tremendous empirical advances have been attained by transformer-based neural networks, a theoretical understanding of their algorithmic reasoning capabilities in realistic parameter regimes is lacking. We investigate this question in terms of the network's depth, width, and number of extra tokens for algorithm execution. Our novel representational hierarchy separates 9 algorithmic reasoning problems into classes solvable by transformers in different realistic parameter scaling regimes. We prove that logarithmic depth is necessary and sufficient for tasks like graph connectivity, while single-layer transformers…
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Feasibility and benefits of joint learning from MRI databases with different brain diseases and modalities for segmentation

Feasibility and benefits of joint learning from MRI databases with different brain diseases and modalities for segmentation

arXivLabs is a framework that allows collaborators to develop and share new arXiv features directly on our website. Both individuals and organizations that work with arXivLabs have embraced and accepted our values of openness, community, excellence, and user data privacy. arXiv is committed to these values and only works with partners that adhere to them. Have an idea for a project that will add value for arXiv's community? Learn more about arXivLabs. Source link lol
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BioBERT-based Deep Learning and Merged ChemProt-DrugProt for Enhanced Biomedical Relation Extraction

BioBERT-based Deep Learning and Merged ChemProt-DrugProt for Enhanced Biomedical Relation Extraction

arXiv:2405.18605v1 Announce Type: new Abstract: This paper presents a methodology for enhancing relation extraction from biomedical texts, focusing specifically on chemical-gene interactions. Leveraging the BioBERT model and a multi-layer fully connected network architecture, our approach integrates the ChemProt and DrugProt datasets using a novel merging strategy. Through extensive experimentation, we demonstrate significant performance improvements, particularly in CPR groups shared between the datasets. The findings underscore the importance of dataset merging in augmenting sample counts and improving model accuracy. Moreover, the study highlights the potential of automated information extraction in biomedical research and clinical practice. Source link lol
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IBM Unveils watsonx BI assistant to Simplify Business Decision-Making

IBM Unveils watsonx BI assistant to Simplify Business Decision-Making

via Shutterstock As the business world eagerly embraces the potential of GenAI, many companies are discovering that there are still lots of challenges along the way. One of the key challenges is complexity.  Companies are struggling to use decision-making tools because they are too complex. This is evident in the lack of growth in the adoption of business intelligence (BI) and data analytics tools. The percentage of employees actively using BI and analytics tools currently stands at only 25% on average.  (Laborant/Shutterstock) Despite advances in technology and investment in literacy programs to educate employees on the use of data, the…
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Introducing Salesforce BYOM for Databricks

Introducing Salesforce BYOM for Databricks

Salesforce and Databricks are excited to announce an expanded strategic partnership that delivers a powerful new integration - Salesforce Bring Your Own Model (BYOM) for Databricks. This collaboration enables data scientists and machine learning engineers to seamlessly leverage the best of both worlds: the robust customer data and business capabilities in Salesforce and the advanced analytics and AI capabilities of Databricks. With this integration, you can now build, train, and deploy custom AI models in Databricks and effortlessly integrate them into Salesforce to deliver intelligent and personalized customer experiences. Get ready to unlock the full potential of your data and…
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Injecting Hierarchical Biological Priors into Graph Neural Networks for Flow Cytometry Prediction

Injecting Hierarchical Biological Priors into Graph Neural Networks for Flow Cytometry Prediction

arXiv:2405.18507v1 Announce Type: new Abstract: In the complex landscape of hematologic samples such as peripheral blood or bone marrow derived from flow cytometry (FC) data, cell-level prediction presents profound challenges. This work explores injecting hierarchical prior knowledge into graph neural networks (GNNs) for single-cell multi-class classification of tabular cellular data. By representing the data as graphs and encoding hierarchical relationships between classes, we propose our hierarchical plug-in method to be applied to several GNN models, namely, FCHC-GNN, and effectively designed to capture neighborhood information crucial for single-cell FC domain. Extensive experiments on our cohort of 19 distinct patients, demonstrate that…
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Anomaly detection for the identification of volcanic unrest in satellite imagery

Anomaly detection for the identification of volcanic unrest in satellite imagery

[Submitted on 28 May 2024] View a PDF of the paper titled Anomaly detection for the identification of volcanic unrest in satellite imagery, by Robert Gabriel Popescu and 2 other authors View PDF HTML (experimental) Abstract:Satellite images have the potential to detect volcanic deformation prior to eruptions, but while a vast number of images are routinely acquired, only a small percentage contain volcanic deformation events. Manual inspection could miss these anomalies, and an automatic system modelled with supervised learning requires suitably labelled datasets. To tackle these issues, this paper explores the use of unsupervised deep learning on satellite data for…
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Learning diverse attacks on large language models for robust red-teaming and safety tuning

Learning diverse attacks on large language models for robust red-teaming and safety tuning

arXiv:2405.18540v1 Announce Type: new Abstract: Red-teaming, or identifying prompts that elicit harmful responses, is a critical step in ensuring the safe and responsible deployment of large language models (LLMs). Developing effective protection against many modes of attack prompts requires discovering diverse attacks. Automated red-teaming typically uses reinforcement learning to fine-tune an attacker language model to generate prompts that elicit undesirable responses from a target LLM, as measured, for example, by an auxiliary toxicity classifier. We show that even with explicit regularization to favor novelty and diversity, existing approaches suffer from mode collapse or fail to generate effective attacks. As a…
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The Unified Balance Theory of Second-Moment Exponential Scaling Optimizers in Visual Tasks

The Unified Balance Theory of Second-Moment Exponential Scaling Optimizers in Visual Tasks

arXiv:2405.18498v1 Announce Type: new Abstract: We have identified a potential method for unifying first-order optimizers through the use of variable Second-Moment Exponential Scaling(SMES). We begin with back propagation, addressing classic phenomena such as gradient vanishing and explosion, as well as issues related to dataset sparsity, and introduce the theory of balance in optimization. Through this theory, we suggest that SGD and adaptive optimizers can be unified under a broader inference, employing variable moving exponential scaling to achieve a balanced approach within a generalized formula for first-order optimizers. We conducted tests on some classic datasets and networks to confirm the impact…
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