Aden Governorate
NADI 2024: The Fifth Nuanced Arabic Dialect Identification Shared Task
Abdul-Mageed, Muhammad, Keleg, Amr, Elmadany, AbdelRahim, Zhang, Chiyu, Hamed, Injy, Magdy, Walid, Bouamor, Houda, Habash, Nizar
We describe the findings of the fifth Nuanced Arabic Dialect Identification Shared Task (NADI 2024). NADI's objective is to help advance SoTA Arabic NLP by providing guidance, datasets, modeling opportunities, and standardized evaluation conditions that allow researchers to collaboratively compete on pre-specified tasks. NADI 2024 targeted both dialect identification cast as a multi-label task (Subtask~1), identification of the Arabic level of dialectness (Subtask~2), and dialect-to-MSA machine translation (Subtask~3). A total of 51 unique teams registered for the shared task, of whom 12 teams have participated (with 76 valid submissions during the test phase). Among these, three teams participated in Subtask~1, three in Subtask~2, and eight in Subtask~3. The winning teams achieved 50.57 F\textsubscript{1} on Subtask~1, 0.1403 RMSE for Subtask~2, and 20.44 BLEU in Subtask~3, respectively. Results show that Arabic dialect processing tasks such as dialect identification and machine translation remain challenging. We describe the methods employed by the participating teams and briefly offer an outlook for NADI.
- Africa > Middle East > Somalia (0.14)
- Africa > Middle East > Djibouti (0.14)
- Africa > Middle East > Algeria (0.05)
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- Information Technology > Artificial Intelligence > Natural Language > Machine Translation (1.00)
- Information Technology > Artificial Intelligence > Machine Learning (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (0.93)
- Information Technology > Communications > Social Media (0.93)
RKLD: Reverse KL-Divergence-based Knowledge Distillation for Unlearning Personal Information in Large Language Models
Wang, Bichen, Zi, Yuzhe, Sun, Yixin, Zhao, Yanyan, Qin, Bing
With the passage of the Right to Be Forgotten (RTBF) regulations and the scaling up of language model training datasets, research on model unlearning in large language models (LLMs) has become more crucial. Before the era of LLMs, machine unlearning research focused mainly on classification tasks in models with small parameters. In these tasks, the content to be forgotten or retained is clear and straightforward. However, as parameter sizes have grown and tasks have become more complex, balancing forget quality and model utility has become more challenging, especially in scenarios involving personal data instead of classification results. Existing methods based on gradient ascent and its variants often struggle with this balance, leading to unintended information loss or partial forgetting. To address this challenge, we propose RKLD, a novel \textbf{R}everse \textbf{KL}-Divergence-based Knowledge \textbf{D}istillation unlearning algorithm for LLMs targeting the unlearning of personal information. Through RKLD, we achieve significant forget quality and effectively maintain the model utility in our experiments.
- Asia > Pakistan > Sindh > Karachi Division > Karachi (0.05)
- Asia > Pakistan > Punjab > Lahore Division > Lahore (0.05)
- Asia > Pakistan > Islamabad Capital Territory > Islamabad (0.05)
- (6 more...)
Fully Distributed Fog Load Balancing with Multi-Agent Reinforcement Learning
Ebrahim, Maad, Hafid, Abdelhakim
Real-time Internet of Things (IoT) applications require real-time support to handle the ever-growing demand for computing resources to process IoT workloads. Fog Computing provides high availability of such resources in a distributed manner. However, these resources must be efficiently managed to distribute unpredictable traffic demands among heterogeneous Fog resources. This paper proposes a fully distributed load-balancing solution with Multi-Agent Reinforcement Learning (MARL) that intelligently distributes IoT workloads to optimize the waiting time while providing fair resource utilization in the Fog network. These agents use transfer learning for life-long self-adaptation to dynamic changes in the environment. By leveraging distributed decision-making, MARL agents effectively minimize the waiting time compared to a single centralized agent solution and other baselines, enhancing end-to-end execution delay. Besides performance gain, a fully distributed solution allows for a global-scale implementation where agents can work independently in small collaboration regions, leveraging nearby local resources. Furthermore, we analyze the impact of a realistic frequency to observe the state of the environment, unlike the unrealistic common assumption in the literature of having observations readily available in real-time for every required action. The findings highlight the trade-off between realism and performance using an interval-based Gossip-based multi-casting protocol against assuming real-time observation availability for every generated workload.
- North America > Canada > Quebec > Montreal (0.05)
- Asia > Middle East > Jordan (0.04)
- North America > United States (0.04)
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- Information Technology (1.00)
- Energy > Power Industry (0.62)
Yemen's Houthi rebels continue to launch attacks despite month of US-led airstrikes
Former Acting Defense Secretary Chris Miller joined'Fox & Friends' to discuss the latest on the escalation in the Middle East as the U.S. continues to strike Iranian proxies. Despite a month of U.S.-led airstrikes, Yemen's Iran-backed Houthi rebels remain capable of launching significant attacks -- just this week, they seriously damaged a ship in a crucial strait and apparently downed an American drone worth tens of millions of dollars. The continued assaults by the Houthis on shipping through the crucial Red Sea corridor -- the Bab el-Mandeb Strait -- against the backdrop of Israel's war on Hamas in the Gaza Strip underscore the challenges in trying to stop the guerrilla-style attacks that have seen them hold onto Yemen's capital and much of the war-ravaged country's north since 2014. Meanwhile, the campaign has boosted the rebels' standing in the Arab world, despite their own human rights abuses in a yearslong stalemated war with several of America's allies in the region. And the longer their attacks go on, analysts warn the greater the risk that disruptions to international shipping will begin to weigh down on the global economy.
- North America > United States (1.00)
- Africa > Middle East > Djibouti (0.39)
- Indian Ocean > Red Sea (0.29)
- (17 more...)
- Government > Regional Government > North America Government > United States Government (1.00)
- Government > Military (1.00)
A look at al-Qaida's most lethal branch, Yemen's AQAP
ADEN, Yemen – Al-Qaida in the Arabian Peninsula, based in Yemen, is considered the most dangerous branch of the terror network after a series of failed attacks on U.S. soil. AQAP has been enmeshed in conflicts in impoverished Yemen for nearly 20 years -- at times working with the government and at times facing crackdown, all the while building ties among tribes in the mountainous countryside to establish refuges and allies. The first anti-American attack in Yemen linked to al-Qaida took place in 1992 when a group called the Islamic Jihad Movement attacked a hotel in the southern city of Aden housing U.S. troops heading to Somalia, killing a Yemeni and an Australian. The group was made up of jihadis who had returned from Afghanistan, where they fought the Soviets alongside Osama bin Laden. The group fell apart after defections spurred by its cozy relationship with ruling authorities as then-President Ali Abdullah Saleh used AQAP fighters to liquidate his top foes, the socialists.
- Asia > Middle East > Yemen > Aden Governorate > Aden (0.25)
- Asia > Afghanistan (0.25)
- Africa > Middle East > Somalia (0.25)
- (4 more...)
- Government > Military (1.00)
- Government > Regional Government > North America Government > United States Government (0.71)
U.S. Navy's Drone Boat Swarm Practices Harbor Defense
Drone boats belonging to the U.S. Navy have begun learning to work together like a swarm with a shared hive mind. Two years ago, they would have individually reacted to possible threats by all swarming over like a chaotic group of kids learning to play soccer for the first time. Now the drone boats have showed that they can cooperate intelligently as a team to defend a harbor area against intruders. The U.S. Office of Naval Research (ONR) held its latest robot swarm demonstration in the lower Chesapeake Bay off the Virginia coast for about a month. Four drone boats showed off their improved control and navigation software by patrolling an area of 4 nautical miles by 4 nautical miles. If they spotted a possible threat, the swarm of roboboats would collectively decide which of them would go track and trail the intruder vessel.
- North America > United States > Virginia (0.59)
- North America > United States > Maryland (0.27)
- Atlantic Ocean > North Atlantic Ocean > Chesapeake Bay (0.27)
- Asia > Middle East > Yemen > Aden Governorate > Aden (0.05)
- Government > Military > Navy (1.00)
- Government > Regional Government > North America Government > United States Government (0.90)