Country
AVA: an Automatic eValuation Approach to Question Answering Systems
Vu, Thuy, Moschitti, Alessandro
We introduce AVA, an automatic evaluation approach for Question Answering, which given a set of questions associated with Gold Standard answers, can estimate system Accuracy. AVA uses Transformer-based language models to encode question, answer, and reference text. This allows for effectively measuring the similarity between the reference and an automatic answer, biased towards the question semantics. To design, train and test AVA, we built multiple large training, development, and test sets on both public and industrial benchmarks. Our innovative solutions achieve up to 74.7% in F1 score in predicting human judgement for single answers. Additionally, AVA can be used to evaluate the overall system Accuracy with an RMSE, ranging from 0.02 to 0.09, depending on the availability of multiple references.
RMM: A Recursive Mental Model for Dialog Navigation
Roman, Homero Roman, Bisk, Yonatan, Thomason, Jesse, Celikyilmaz, Asli, Gao, Jianfeng
Fluent communication requires understanding your audience. In the new collaborative task of Vision-and-Dialog Navigation, one agent must ask questions and follow instructive answers, while the other must provide those answers. We introduce the first true dialog navigation agents in the literature which generate full conversations, and introduce the Recursive Mental Model (RMM) to conduct these dialogs. RMM dramatically improves generated language questions and answers by recursively propagating reward signals to find the question expected to elicit the best answer, and the answer expected to elicit the best navigation. Additionally, we provide baselines for future work to build on when investigating the unique challenges of embodied visual agents that not only interpret instructions but also ask questions in natural language.
Decision Support for Intoxication Prediction Using Graph Convolutional Networks
Burwinkel, Hendrik, Keicher, Matthias, Bani-Harouni, David, Zellner, Tobias, Eyer, Florian, Navab, Nassir, Ahmadi, Seyed-Ahmad
Every day, poison control centers (PCC) are called for immediate classification and treatment recommendations if an acute intoxication is suspected. Due to the time-sensitive nature of these cases, doctors are required to propose a correct diagnosis and intervention within a minimal time frame. Usually the toxin is known and recommendations can be made accordingly. However, in challenging cases only symptoms are mentioned and doctors have to rely on their clinical experience. Medical experts and our analyses of a regional dataset of intoxication records provide evidence that this is challenging, since occurring symptoms may not always match the textbook description due to regional distinctions, inter-rater variance, and institutional workflow. Computer-aided diagnosis (CADx) can provide decision support, but approaches so far do not consider additional information of the reported cases like age or gender, despite their potential value towards a correct diagnosis. In this work, we propose a new machine learning based CADx method which fuses symptoms and meta information of the patients using graph convolutional networks. We further propose a novel symptom matching method that allows the effective incorporation of prior knowledge into the learning process and evidently stabilizes the poison prediction. We validate our method against 10 medical doctors with different experience diagnosing intoxication cases for 10 different toxins from the PCC in Munich and show our method's superiority in performance for poison prediction.
Are Emojis Emotional? A Study to Understand the Association between Emojis and Emotions
Given the growing ubiquity of emojis in language, there is a need for methods and resources that shed light on their meaning and communicative role. One conspicuous aspect of emojis is their use to convey affect in ways that may otherwise be non-trivial to achieve. In this paper, we seek to explore the connection between emojis and emotions by means of a new dataset consisting of human-solicited association ratings. We additionally conduct experiments to assess to what extent such associations can be inferred from existing data, such that similar associations can be predicted for a larger set of emojis. Our experiments show that this succeeds when high-quality word-level information is available.
The ILASP system for Inductive Learning of Answer Set Programs
Law, Mark, Russo, Alessandra, Broda, Krysia
The goal of Inductive Logic Programming (ILP) is to learn a program that explains a set of examples in the context of some pre-existing background knowledge. Until recently, most research on ILP targeted learning Prolog programs. Our own ILASP system instead learns Answer Set Programs, including normal rules, choice rules and hard and weak constraints. Learning such expressive programs widens the applicability of ILP considerably; for example, enabling preference learning, learning common-sense knowledge, including defaults and exceptions, and learning non-deterministic theories. In this paper, we first give a general overview of ILASP's learning framework and its capabilities. This is followed by a comprehensive summary of the evolution of the ILASP system, presenting the strengths and weaknesses of each version, with a particular emphasis on scalability.
Computing With Words for Student Strategy Evaluation in an Examination
Gupta, Prashant K, Muhuri, Pranab K.
In the framework of Granular Computing (GC), Interval type 2 Fuzzy Sets (IT2 FSs) play a prominent role by facilitating a better representation of uncertain linguistic information. Perceptual Computing (Per C), a well known computing with words (CWW) approach, and its various applications have nicely exploited this advantage. This paper reports a novel Per C based approach for student strategy evaluation. Examinations are generally oriented to test the subject knowledge of students. The number of questions that they are able to solve accurately judges success rates of students in the examinations. However, we feel that not only the solutions of questions, but also the strategy adopted for finding those solutions are equally important. More marks should be awarded to a student, who solves a question with a better strategy compared to a student, whose strategy is relatively not that good. Furthermore, the students strategy can be taken as a measure of his or her learning outcome as perceived by a faculty member. This can help to identify students, whose learning outcomes are not good, and, thus, can be provided with any relevant help, for improvement. The main contribution of this paper is to illustrate the use of CWW for student strategy evaluation and present a comparison of the recommendations generated by different CWW approaches. CWW provides us with two major advantages. First, it generates a numeric score for the overall evaluation of strategy adopted by a student in the examination. This enables comparison and ranking of the students based on their performances. Second, a linguistic evaluation describing the student strategy is also obtained from the system. Both these numeric score and linguistic recommendation are together used to assess the quality of a students strategy. We found that Per-C generates unique recommendations in all cases and outperforms other CWW approaches.
Imputation of missing sub-hourly precipitation data in a large sensor network: a machine learning approach
Chivers, Benedict Delahaye, Wallbank, John, Cole, Steven J., Sebek, Ondrej, Stanley, Simon, Fry, Matthew, Leontidis, Georgios
Precipitation data collected at sub-hourly resolution represents specific challenges for missing data recovery by being largely stochastic in nature and highly unbalanced in the duration of rain vs nonrain. Here we present a two-step analysis utilising current machine learning techniques for imputing precipitation data sampled at 30-minute intervals by devolving the task into (a) the classification of rain or non-rain samples, and (b) regressing the absolute values of predicted rain samples. Investigating 37 weather stations in the UK, this machine learning process produces more accurate predictions for recovering precipitation data than an established surface fitting technique utilising neighbouring rain gauges. Increasing available features for the training of machine learning algorithms increases performance with the integration of weather data at the target site with externally sourced rain gauges providing the highest performance. This method informs machine learning models by utilising information in concurrently collected environmental data to make accurate predictions of missing rain data. Capturing complex nonlinear relationships from weakly correlated variables is critical for data recovery at sub-hourly resolutions. Such pipelines for data recovery can be developed and deployed for highly automated and near instantaneous imputation of missing values in ongoing datasets at high temporal resolutions. Keywords: machine learning, data imputation, gradient boosted trees, environmental sensor networks, precipitation, soil moisture 1. Introduction Precipitation data is of critical importance across multiple lines of enquiry, informing statistical models and analysis relating to weather forecasting, extreme weather events, climate change, water-resource management, droughts, flooding, agricultural impact, and hydroelectric power. Historical rainfall data can reveal long term trends in environmental hydrological issues with real-time data input allowing for immediate forecasting of future conditions. Distributed networks of rain gauges are typically used to provide precipitation data at the earth's surface at varying temporal resolutions and can cover large geographical areas (Kidd, 2001). As is the case in many databases, particularly those utilising physical sensors, the problem of missing data arises. Missing data can be a result of sensor failure, data storage/transmission failure, or post-collection quality control procedures resulting in removal of identified problem data (Blenkinsop et al., 2017). Missing data in precipitation databases represents a serious limitation for the effective use of the data. Given the global scale and importance of precipitation and meteorological data (Sun et al., 2018), developing solutions to missing data is of paramount importance for maximising information gain.
Travel Industry Automates Pandemic Response With New Digital Tools
"We've set it to alert us if someone has a fever over 100.5 degrees Fahrenheit," Brett Smith, chief information officer of the airport's operator, Propeller Airports, said about the repurposed device. The camera screens passengers as they line up for standard security checks by the Transportation Security Administration. Passengers with high fevers are screened a second time, and ultimately the airline determines if they pose a danger to others on board, Mr. Smith said. The airport began operations in March 2019 and serves as a northwestern hub for Alaska Airlines and United Airlines. Developed in 2018, in the wake of a mass shooting in Las Vegas, Athena's gun-detecting camera operates by combining object detection, computer vision and machine-learning to identify weapons and automatically alert on-site workers and police.
Identifying Bias in Hospital Length of Stay Algorithm
Recognizing the need to support shorter lengths of stay, Dr. John Fahrenbach, a data scientist at the University of Chicago Medicine (UCM), developed a machine learning model that used clinical characteristics to identify patients most suitable for discharge after 48 hours. Using this tool, the hospital could ensure the timely release of specific patients by allocating and prioritizing care management resources, including discharge planning, home health services, and clinician or patient administrative assistance. During the development process, Dr. Fahrenbach's team determined that including zip codes as a feature increased the model's predictive accuracy. After introducing zip codes into the model, however, a team member who reviewed the output raised concerns. "We know Chicago's patient population and knew something was off when stratifying the model by race," said Dr. Fahrenbach.
How AI Can Help Companies Thrive In Post-Pandemic Uncertainty
In the last week, globally, we are slowly moving into a post-pandemic world. In the U.S. where the Covid-19 pandemic affected everyone, states are starting to open up. During the pandemic, many of us, have been working from home, adapting to our country's social distancing protocols. Post-pandemic, most of us know that this pandemic has forever changed the way that we work and the way that we view work. Companies have a new set of organizational challenges.