Oceania
Knowledge Adaption for Demand Prediction based on Multi-task Memory Neural Network
Li, Can, Bai, Lei, Liu, Wei, Yao, Lina, Waller, S Travis
Accurate demand forecasting of different public transport modes(e.g., buses and light rails) is essential for public service operation.However, the development level of various modes often varies sig-nificantly, which makes it hard to predict the demand of the modeswith insufficient knowledge and sparse station distribution (i.e.,station-sparse mode). Intuitively, different public transit modes mayexhibit shared demand patterns temporally and spatially in a city.As such, we propose to enhance the demand prediction of station-sparse modes with the data from station-intensive mode and designaMemory-Augmented Multi-taskRecurrent Network (MATURE)to derive the transferable demand patterns from each mode andboost the prediction of station-sparse modes through adaptingthe relevant patterns from the station-intensive mode. Specifically,MATUREcomprises three components: 1) a memory-augmentedrecurrent network for strengthening the ability to capture the long-short term information and storing temporal knowledge of eachtransit mode; 2) a knowledge adaption module to adapt the rele-vant knowledge from a station-intensive source to station-sparsesources; 3) a multi-task learning framework to incorporate all theinformation and forecast the demand of multiple modes jointly.The experimental results on a real-world dataset covering four pub-lic transport modes demonstrate that our model can promote thedemand forecasting performance for the station-sparse modes.
Multi-Objective Reinforcement Learning for Infectious Disease Control with Application to COVID-19 Spread
Wan, Runzhe, Zhang, Xinyu, Song, Rui
Severe infectious diseases such as the novel coronavirus (COVID-19) pose a huge threat to public health. Stringent control measures, such as school closures and stay-at-home orders, while having significant effects, also bring huge economic losses. A crucial question for policymakers around the world is how to make the trade-off and implement the appropriate interventions. In this work, we propose a Multi-Objective Reinforcement Learning framework to facilitate the data-driven decision making and minimize the long-term overall cost. Specifically, at each decision point, a Bayesian epidemiological model is first learned as the environment model, and then we use the proposed model-based multi-objective planning algorithm to find a set of Pareto-optimal policies. This framework, combined with the prediction bands for each policy, provides a real-time decision support tool for policymakers. The application is demonstrated with the spread of COVID-19 in China.
'Video Authenticator' is Microsoft's answer to Deepfake detection
Deepfakes is a class of synthetic media generated by AI and represents another dark side of technology -- this form of Artificial Intelligence stole the headlines last year when a LinkedIn user by the name Katie Jones, who appeared on the platform & started connecting with the Who's Who of the political elite in Washington DC. It was alarming, how deep learning created a real-life image of a person & then penetrated the social media spreading misinformation. With the U.S presidential elections looming, lawmakers in the country are worried about how deepfakes can greatly jeopardize the transparency of the democratic process. Many of the leading tech companies have been asked for help and are working on developing tools that can detect this fake synthetic media. Global software giant, Microsoft, has now released two new tools that can spot if a certain media has been artificially manipulated.
The organizations positioned to lobby against a US ban on facial recognition
Pressure on US lawmakers to create federal regulations on facial recognition has been mounting. IBM, Amazon, and Microsoft stopped selling the technology to US police, and called on Congress to regulate its use. Amidst international protests against racism and police misconduct, news broke that Detroit police had wrongfully arrested a Black man based on a faulty facial recognition match. In response, House Democrats proposed a bill last week that would ban police from using facial recognition. Against that backdrop, industry groups have quietly lobbied to soften regulations and avoid an outright ban.
Why humans should be wary of widening the intelligence gap
With our powers of reasoning, rich memories and the ability to imagine what the future might hold, human intelligence is unequalled in the animal kingdom. Our closest relatives, chimpanzees, are adept problem solvers, making their own tools to reach food, for example. They use sophisticated gestures and facial expressions to communicate. Yet, they fall a long way short of our own ability to think and plan for the future. Thomas Suddendorf, a psychologist at the University of Queensland, describes this as the gap – the cognitive gulf that separates us from animals.
Listener Modeling and Context-aware Music Recommendation Based on Country Archetypes
Schedl, Markus, Bauer, Christine, Reisinger, Wolfgang, Kowald, Dominik, Lex, Elisabeth
Music preferences are strongly shaped by the cultural and socio-economic background of the listener, which is reflected, to a considerable extent, in country-specific music listening profiles. Previous work has already identified several country-specific differences in the popularity distribution of music artists listened to. In particular, what constitutes the "music mainstream" strongly varies between countries. To complement and extend these results, the article at hand delivers the following major contributions: First, using state-of-the-art unsupervised learning techniques, we identify and thoroughly investigate (1) country profiles of music preferences on the fine-grained level of music tracks (in contrast to earlier work that relied on music preferences on the artist level) and (2) country archetypes that subsume countries sharing similar patterns of listening preferences. Second, we formulate four user models that leverage the user's country information on music preferences. Among others, we propose a user modeling approach to describe a music listener as a vector of similarities over the identified country clusters or archetypes. Third, we propose a context-aware music recommendation system that leverages implicit user feedback, where context is defined via the four user models. More precisely, it is a multi-layer generative model based on a variational autoencoder, in which contextual features can influence recommendations through a gating mechanism. Fourth, we thoroughly evaluate the proposed recommendation system and user models on a real-world corpus of more than one billion listening records of users around the world (out of which we use 369 million in our experiments) and show its merits vis-a-vis state-of-the-art algorithms that do not exploit this type of context information.
On the Fairness of 'Fake' Data in Legal AI
Boswell, Lauren, Prakash, Arjun
The economics of smaller budgets and larger case numbers necessitates the use of AI in legal proceedings. We examine the concept of disparate impact and how biases in the training data lead to the search for fairer AI. This paper seeks to begin the discourse on what such an implementation would actually look like with a criticism of pre-processing methods in a legal context . We outline how pre-processing is used to correct biased data and then examine the legal implications of effectively changing cases in order to achieve a fairer outcome including the black box problem and the slow encroachment on legal precedent. Finally we present recommendations on how to avoid the pitfalls of pre-processed data with methods that either modify the classifier or correct the output in the final step.
Improving Indonesian Text Classification Using Multilingual Language Model
Putra, Ilham Firdausi, Purwarianti, Ayu
Compared to English, the amount of labeled data for Indonesian text classification tasks is very small. Recently developed multilingual language models have shown its ability to create multilingual representations effectively. This paper investigates the effect of combining English and Indonesian data on building Indonesian text classification (e.g., sentiment analysis and hate speech) using multilingual language models. Using the feature-based approach, we observe its performance on various data sizes and total added English data. The experiment showed that the addition of English data, especially if the amount of Indonesian data is small, improves performance. Using the fine-tuning approach, we further showed its effectiveness in utilizing the English language to build Indonesian text classification models.
An Atlas of Cultural Commonsense for Machine Reasoning
Acharya, Anurag, Talamadupula, Kartik, Finlayson, Mark A
Existing commonsense reasoning datasets for AI and NLP tasks fail to address an important aspect of human life: cultural differences. In this work, we introduce an approach that extends prior work on crowdsourcing commonsense knowledge by incorporating differences in knowledge that are attributable to cultural or national groups. We demonstrate the technique by collecting commonsense knowledge that surrounds three fairly universal rituals---coming-of-age, marriage, and funerals---across three different national groups: the United States, India, and the Philippines. Our pilot study expands the different types of relationships identified by existing work in the field of commonsense reasoning for commonplace events, and uses these new types to gather information that distinguishes the knowledge of the different groups. It also moves us a step closer towards building a machine that doesn't assume a rigid framework of universal (and likely Western-biased) commonsense knowledge, but rather has the ability to reason in a contextually and culturally sensitive way. Our hope is that cultural knowledge of this sort will lead to more human-like performance in NLP tasks such as question answering (QA) and text understanding and generation.
Generating Random Logic Programs Using Constraint Programming
Dilkas, Paulius, Belle, Vaishak
Testing algorithms across a wide range of problem instances is crucial to ensure the validity of any claim about one algorithm's superiority over another. However, when it comes to inference algorithms for probabilistic logic programs, experimental evaluations are limited to only a few programs. Existing methods to generate random logic programs are limited to propositional programs and often impose stringent syntactic restrictions. We present a novel approach to generating random logic programs and random probabilistic logic programs using constraint programming, introducing a new constraint to control the independence structure of the underlying probability distribution. We also provide a combinatorial argument for the correctness of the model, show how the model scales with parameter values, and use the model to compare probabilistic inference algorithms across a range of synthetic problems. Our model allows inference algorithm developers to evaluate and compare the algorithms across a wide range of instances, providing a detailed picture of their (comparative) strengths and weaknesses.