Pembrokeshire
Massive overhaul of England and Wales policing announced
The home secretary has announced a blueprint for reforming what she called the broken policing model in England and Wales. Shabana Mahmood confirmed the shake-up will create a new National Police Service (NPS) to fight the most complex cross-border crime and could also see the number of local forces in England and Wales cut by around two-thirds. She told the House of Commons she also intends to make better use of technology - including the largest-ever rollout of facial recognition. This government's reforms will ensure we have the right policing in the right place, Mahmood said. I set out reforms that are long overdue and define a new model for policing in this country, with local policing that protects our communities and national policing that protects us all.
- North America > United States (0.30)
- Europe > United Kingdom > Northern Ireland (0.16)
- North America > Central America (0.15)
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UK lacks plan to defend itself from invasion, MPs warn
The UK lacks a plan to defend itself from military attack, a committee of MPs has warned. In a highly critical report, the defence committee says the UK is over-reliant on US resources and that preparations to defend itself and overseas territories in the event of attack are nowhere near where they need to be. The committee's chair, Labour MP Tan Dhesi, said: Putin's brutal invasion of Ukraine, unrelenting disinformation campaigns, and repeated incursions into European airspace mean that we cannot afford to bury our heads in the sand. It comes as the Ministry of Defence (MoD) identified parts of the country where six or more new munitions factories could be built. In June, Defence Secretary John Healey announced plans to move the UK to war-fighting readiness, including £1.5bn to support the construction of new munitions factories, which will be built by private contractors.
- Europe > Ukraine (0.26)
- South America (0.15)
- North America > Central America (0.15)
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- Media (1.00)
- Government > Regional Government > Europe Government > United Kingdom Government (1.00)
- Government > Military (1.00)
A Single Direction of Truth: An Observer Model's Linear Residual Probe Exposes and Steers Contextual Hallucinations
O'Neill, Charles, Chalnev, Slava, Zhao, Chi Chi, Kirkby, Max, Jayasekara, Mudith
Contextual hallucinations -- statements unsupported by given context -- remain a significant challenge in AI. We demonstrate a practical interpretability insight: a generator-agnostic observer model detects hallucinations via a single forward pass and a linear probe on its residual stream. This probe isolates a single, transferable linear direction separating hallucinated from faithful text, outperforming baselines by 5-27 points and showing robust mid-layer performance across Gemma-2 models (2B to 27B). Gradient-times-activation localises this signal to sparse, late-layer MLP activity. Critically, manipulating this direction causally steers generator hallucination rates, proving its actionability. Our results offer novel evidence of internal, low-dimensional hallucination tracking linked to specific MLP sub-circuits, exploitable for detection and mitigation. We release the 2000-example ContraTales benchmark for realistic assessment of such solutions.
- North America > United States (0.04)
- Europe > United Kingdom > Wales > Pembrokeshire (0.04)
- Europe > Greece (0.04)
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Contextual Compression Encoding for Large Language Models: A Novel Framework for Multi-Layered Parameter Space Pruning
Schmitt, Barnaby, Grosvenor, Alistair, Cunningham, Matthias, Walsh, Clementine, Pembrokeshire, Julius, Teel, Jonathan
Context-aware compression techniques have gained increasing attention as model sizes continue to grow, introducing computational bottlenecks that hinder efficient deployment. A structured encoding approach was proposed to selectively eliminate redundant parameter groups while ensuring that representational fidelity was preserved across multiple layers. Contextual Compression Encoding (CCE) introduced a multi-stage encoding mechanism that dynamically restructured parameter distributions, allowing for significant reductions in memory footprint and computational complexity. Experimental evaluations demonstrated that models compressed through CCE retained linguistic expressivity and coherence, maintaining accuracy across a range of text generation and classification tasks. Layer-wise analysis revealed that middle-network layers exhibited higher compression ratios, aligning with the observation that self-attention and feed-forward transformations contained redundancies that could be reorganized without impairing functional capacity. Comparisons against conventional quantization and pruning methods confirmed that CCE provided a more balanced trade-off between efficiency and model retention, achieving reductions in energy consumption and inference latency without requiring extensive retraining. Computational efficiency improvements were particularly evident in deployment scenarios involving resource-constrained environments, where reductions in memory usage enabled more scalable implementations. Further analyses of internal network behavior showed that compressed models exhibited stable activation distributions and adapted dynamically to input variations, reinforcing the viability of structured compression strategies for optimizing large-scale architectures.
Revealed: What the average people in 13 UK counties look like, according to AI - so do YOU agree?
The UK is home to 92 counties, each with its own distinctive look and feel. Now, a film editor has tasked artificial intelligence (AI) with putting faces to these counties - with hilarious results. Duncan Thomsen, 53, used the software Midjourney to create images of'average people' in 13 counties. The results suggest that the average residents in County Antrim are young with red hair, while people living in Anglesey are elderly (and wrapped up for the cold weather!). So, do you agree with what AI thinks the average people look like in your county?
- Europe > United Kingdom > Northern Ireland > County Antrim (0.27)
- Europe > United Kingdom > England > Tyne and Wear (0.18)
- Europe > United Kingdom > England > Oxfordshire (0.08)
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ZeroGen: Zero-shot Multimodal Controllable Text Generation with Multiple Oracles
Tu, Haoqin, Yang, Bowen, Zhao, Xianfeng
Automatically generating textual content with desired attributes is an ambitious task that people have pursued long. Existing works have made a series of progress in incorporating unimodal controls into language models (LMs), whereas how to generate controllable sentences with multimodal signals and high efficiency remains an open question. To tackle the puzzle, we propose a new paradigm of zero-shot controllable text generation with multimodal signals (\textsc{ZeroGen}). Specifically, \textsc{ZeroGen} leverages controls of text and image successively from token-level to sentence-level and maps them into a unified probability space at decoding, which customizes the LM outputs by weighted addition without extra training. To achieve better inter-modal trade-offs, we further introduce an effective dynamic weighting mechanism to regulate all control weights. Moreover, we conduct substantial experiments to probe the relationship of being in-depth or in-width between signals from distinct modalities. Encouraging empirical results on three downstream tasks show that \textsc{ZeroGen} not only outperforms its counterparts on captioning tasks by a large margin but also shows great potential in multimodal news generation with a higher degree of control. Our code will be released at https://github.com/ImKeTT/ZeroGen.
- North America > United States > New York (0.04)
- North America > Canada > Ontario > Middlesex County > London (0.04)
- North America > United States > District of Columbia > Washington (0.04)
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- Leisure & Entertainment (1.00)
- Law > Criminal Law (1.00)
- Government > Regional Government (1.00)
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Tracing Semantic Variation in Slang
The meaning of a slang term can vary in different communities. However, slang semantic variation is not well understood and under-explored in the natural language processing of slang. One existing view argues that slang semantic variation is driven by culture-dependent communicative needs. An alternative view focuses on slang's social functions suggesting that the desire to foster semantic distinction may have led to the historical emergence of community-specific slang senses. We explore these theories using computational models and test them against historical slang dictionary entries, with a focus on characterizing regularity in the geographical variation of slang usages attested in the US and the UK over the past two centuries. We show that our models are able to predict the regional identity of emerging slang word meanings from historical slang records. We offer empirical evidence that both communicative need and semantic distinction play a role in the variation of slang meaning yet their relative importance fluctuates over the course of history. Our work offers an opportunity for incorporating historical cultural elements into the natural language processing of slang.
- North America > Canada > Ontario > Toronto (0.14)
- North America > United States > New York > New York County > New York City (0.14)
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
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FRSUM: Towards Faithful Abstractive Summarization via Enhancing Factual Robustness
Wu, Wenhao, Li, Wei, Liu, Jiachen, Xiao, Xinyan, Cao, Ziqiang, Li, Sujian, Wu, Hua
Despite being able to generate fluent and grammatical text, current Seq2Seq summarization models still suffering from the unfaithful generation problem. In this paper, we study the faithfulness of existing systems from a new perspective of factual robustness which is the ability to correctly generate factual information over adversarial unfaithful information. We first measure a model's factual robustness by its success rate to defend against adversarial attacks when generating factual information. The factual robustness analysis on a wide range of current systems shows its good consistency with human judgments on faithfulness. Inspired by these findings, we propose to improve the faithfulness of a model by enhancing its factual robustness. Specifically, we propose a novel training strategy, namely FRSUM, which teaches the model to defend against both explicit adversarial samples and implicit factual adversarial perturbations. Extensive automatic and human evaluation results show that FRSUM consistently improves the faithfulness of various Seq2Seq models, such as T5, BART.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- Europe > United Kingdom > England > Tyne and Wear > Sunderland (0.05)
- Europe > Italy > Tuscany > Florence (0.04)
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- Leisure & Entertainment > Sports > Soccer (0.93)
- Government > Military (0.68)
- Leisure & Entertainment > Sports > Motorsports > Formula One (0.46)
Questioning the Validity of Summarization Datasets and Improving Their Factual Consistency
Guo, Yanzhu, Clavel, Chloé, Eddine, Moussa Kamal, Vazirgiannis, Michalis
The topic of summarization evaluation has recently attracted a surge of attention due to the rapid development of abstractive summarization systems. However, the formulation of the task is rather ambiguous, neither the linguistic nor the natural language processing community has succeeded in giving a mutually agreed-upon definition. Due to this lack of well-defined formulation, a large number of popular abstractive summarization datasets are constructed in a manner that neither guarantees validity nor meets one of the most essential criteria of summarization: factual consistency. In this paper, we address this issue by combining state-of-the-art factual consistency models to identify the problematic instances present in popular summarization datasets. We release SummFC, a filtered summarization dataset with improved factual consistency, and demonstrate that models trained on this dataset achieve improved performance in nearly all quality aspects. We argue that our dataset should become a valid benchmark for developing and evaluating summarization systems.
- Europe > Germany (0.04)
- Europe > France > Île-de-France > Paris > Paris (0.04)
- Europe > United Kingdom > Wales > Pembrokeshire (0.04)
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Researchers develop a tool to quantify the beauty of a landscape using artificial intelligence - Actu IA
Evaluating and quantifying the beauty of a landscape, an ecosystem and its effects on a person's well-being has become a central issue for public authorities. With this in mind, scientists from the École Polytechnique Fédérale de Lausanne (EPFL) in Switzerland and Wageningen University in the Netherlands have developed a new indicator based on deep learning and several million photos posted on the social network Flickr. An article was recently published in Nature Scientific Reports. When we walk in nature, whether in the mountains, in a forest or by the sea, we feel things, a certain well-being. Numerous studies have highlighted the benefits of such activities for our health, both physical and mental.
- Europe > Netherlands (0.28)
- Europe > Switzerland > Vaud > Lausanne (0.25)
- Europe > United Kingdom > Scotland (0.07)
- (4 more...)