Oceania
Modelling the transition to a low-carbon energy supply
A transition to a low-carbon electricity supply is crucial to limit the impacts of climate change. Reducing carbon emissions could help prevent the world from reaching a tipping point, where runaway emissions are likely. Runaway emissions could lead to extremes in weather conditions around the world -- especially in problematic regions unable to cope with these conditions. However, the movement to a low-carbon energy supply can not happen instantaneously due to the existing fossil-fuel infrastructure and the requirement to maintain a reliable energy supply. Therefore, a low-carbon transition is required, however, the decisions various stakeholders should make over the coming decades to reduce these carbon emissions are not obvious. This is due to many long-term uncertainties, such as electricity, fuel and generation costs, human behaviour and the size of electricity demand. A well choreographed low-carbon transition is, therefore, required between all of the heterogenous actors in the system, as opposed to changing the behaviour of a single, centralised actor. The objective of this thesis is to create a novel, open-source agent-based model to better understand the manner in which the whole electricity market reacts to different factors using state-of-the-art machine learning and artificial intelligence methods. In contrast to other works, this thesis looks at both the long-term and short-term impact that different behaviours have on the electricity market by using these state-of-the-art methods.
Improved statistical machine translation using monolingual paraphrases
We propose a novel monolingual sentence paraphrasing method for augmenting the training data for statistical machine translation systems "for free" -- by creating it from data that is already available rather than having to create more aligned data. Starting with a syntactic tree, we recursively generate new sentence variants where noun compounds are paraphrased using suitable prepositions, and vice-versa -- preposition-containing noun phrases are turned into noun compounds. The evaluation shows an improvement equivalent to 33%-50% of that of doubling the amount of training data.
Overview of the CLEF-2019 CheckThat!: Automatic Identification and Verification of Claims
Elsayed, Tamer, Nakov, Preslav, Barrรณn-Cedeรฑo, Alberto, Hasanain, Maram, Suwaileh, Reem, Martino, Giovanni Da San, Atanasova, Pepa
We present an overview of the second edition of the CheckThat! Lab at CLEF 2019. The lab featured two tasks in two different languages: English and Arabic. Task 1 (English) challenged the participating systems to predict which claims in a political debate or speech should be prioritized for fact-checking. Task 2 (Arabic) asked to (A) rank a given set of Web pages with respect to a check-worthy claim based on their usefulness for fact-checking that claim, (B) classify these same Web pages according to their degree of usefulness for fact-checking the target claim, (C) identify useful passages from these pages, and (D) use the useful pages to predict the claim's factuality. CheckThat! provided a full evaluation framework, consisting of data in English (derived from fact-checking sources) and Arabic (gathered and annotated from scratch) and evaluation based on mean average precision (MAP) and normalized discounted cumulative gain (nDCG) for ranking, and F1 for classification. A total of 47 teams registered to participate in this lab, and fourteen of them actually submitted runs (compared to nine last year). The evaluation results show that the most successful approaches to Task 1 used various neural networks and logistic regression. As for Task 2, learning-to-rank was used by the highest scoring runs for subtask A, while different classifiers were used in the other subtasks. We release to the research community all datasets from the lab as well as the evaluation scripts, which should enable further research in the important tasks of check-worthiness estimation and automatic claim verification.
MINIMAL: Mining Models for Data Free Universal Adversarial Triggers
Parekh, Swapnil, Kumar, Yaman Singla, Singh, Somesh, Chen, Changyou, Krishnamurthy, Balaji, Shah, Rajiv Ratn
It is well known that natural language models are vulnerable to adversarial attacks, which are mostly input-specific in nature. Recently, it has been shown that there also exist input-agnostic attacks in NLP models, called universal adversarial triggers. However, existing methods to craft universal triggers are data intensive. They require large amounts of data samples to generate adversarial triggers, which are typically inaccessible by attackers. For instance, previous works take 3000 data samples per class for the SNLI dataset to generate adversarial triggers. In this paper, we present a novel data-free approach, MINIMAL, to mine input-agnostic adversarial triggers from models. Using the triggers produced with our data-free algorithm, we reduce the accuracy of Stanford Sentiment Treebank's positive class from 93.6% to 9.6%. Similarly, for the Stanford Natural Language Inference (SNLI), our single-word trigger reduces the accuracy of the entailment class from 90.95% to less than 0.6\%. Despite being completely data-free, we get equivalent accuracy drops as data-dependent methods.
Learning Neural Templates for Recommender Dialogue System
Liang, Zujie, Hu, Huang, Xu, Can, Miao, Jian, He, Yingying, Chen, Yining, Geng, Xiubo, Liang, Fan, Jiang, Daxin
Though recent end-to-end neural models have shown promising progress on Conversational Recommender System (CRS), two key challenges still remain. First, the recommended items cannot be always incorporated into the generated replies precisely and appropriately. Second, only the items mentioned in the training corpus have a chance to be recommended in the conversation. To tackle these challenges, we introduce a novel framework called NTRD for recommender dialogue system that decouples the dialogue generation from the item recommendation. NTRD has two key components, i.e., response template generator and item selector. The former adopts an encoder-decoder model to generate a response template with slot locations tied to target items, while the latter fills in slot locations with the proper items using a sufficient attention mechanism. Our approach combines the strengths of both classical slot filling approaches (that are generally controllable) and modern neural NLG approaches (that are generally more natural and accurate). Extensive experiments on the benchmark ReDial show our NTRD significantly outperforms the previous state-of-the-art methods. Besides, our approach has the unique advantage to produce novel items that do not appear in the training set of dialogue corpus. The code is available at \url{https://github.com/jokieleung/NTRD}.
Finetuning Transformer Models to Build ASAG System
Research towards creating systems for automatic grading of student answers to quiz and exam questions in educational settings has been ongoing since 1966. Over the years, the problem was divided into many categories. Among them, grading text answers were divided into short answer grading, and essay grading. The goal of this work was to develop an ML-based short answer grading system. I hence built a system which uses finetuning on Roberta Large Model pretrained on STS benchmark dataset and have also created an interface to show the production readiness of the system. I evaluated the performance of the system on the Mohler extended dataset and SciEntsBank Dataset. The developed system achieved a Pearsons Correlation of 0.82 and RMSE of 0.7 on the Mohler Dataset which beats the SOTA performance on this dataset which is correlation of 0.805 and RMSE of 0.793. Additionally, Pearsons Correlation of 0.79 and RMSE of 0.56 was achieved on the SciEntsBank Dataset, which only reconfirms the robustness of the system. A few observations during achieving these results included usage of batch size of 1 produced better results than using batch size of 16 or 32 and using huber loss as loss function performed well on this regression task. The system was tried and tested on train and validation splits using various random seeds and still has been tweaked to achieve a minimum of 0.76 of correlation and a maximum 0.15 (out of 1) RMSE on any dataset.
Could Artificial Intelligence prevent domestic violence?
Audio Player failed to load. Try to Download directly (6.17 MB) Space to play or pause, M to mute, left and right arrows to seek, up and down arrows for volume. Domestic and family violence accounts for one in four calls for police assistance. The Queensland Police Service is trialling a program that predicts who is a likely DV perpetrator. Police call it'focussed deterrence', using Artificial Intelligence to prevent Domestic violence.
First-person footage from PS5 racing game 'looks identical to real life'
First-person footage from Ride 4, the new racing game for PlayStation 5 and Xbox, is circulating โ and it looks almost identical to real life. Ride 4 from Italian video game developer Milestone based in Milan brings to life 34 racing tracks from around the world, including Donington and Snetterton in the UK, which were all meticulously digitally recreated with the aid of laser scanning. The gameplay features little touches such as overcast lighting and rain on the tracks, in an incredibly convincing recreation of the British weather. Gamers can also choose from more than 250 bikes from 22 official manufacturers, such as Honda, Suzuki and Yamaha. Ride 4 is now available on PlayStation5 and Xbox Series X, as well as online gaming platform Steam via a PC.
4 ways startups can use AI to make a real social impact, right now
In northern Canada, translator apps are helping researchers preserve a threatened Inuit language and connecting the remote communities that still speak it. In London, developers are working to make object recognition more personal for blind and low-vision individuals, a critical step in including the users of the technology in collecting the data that creates it, and improving their access to the world. At the Metropolitan Museum of Art in New York, cognitive search functions are being used to tag and classify artworks in more detail than ever before in order to make the collection accessible, in a meaningful way, to people who may never set foot inside. Scientists at the CSIRO in Australia are reducing plastic waste flowing into the ocean by using object recognition on river bridges and sensors in stormwater drains to identify, quantify and remove rubbish before it reaches the sea. The common denominators in these initiatives is the fact they are powered by AI and supported by Microsoft Azure's cloud technology, with funds also provided by Microsoft.
A failure of artificial intelligence โ or bureaucratic bastardry?
Automation in public administration is inevitable and can bring great benefits. The broadly accepted law of robotics is that a robot may not injure a human being. In an attempt to reduce welfare costs in 2016, the commonwealth government engaged in an unlawful debt recovery process. The bureaucratic process was malign and was meant either directly or collaterally to harm and stigmatise welfare recipients. The Online Compliance Intervention โ or OCI, but more commonly known as robodebt โ used algorithms to average out incomes of welfare recipients by matching ATO income data with social welfare recipients' income as self-reported to Centrelink with Centrelink.