future fact
Learning to Sample and Aggregate: Few-shot Reasoning over Temporal Knowledge Graphs
In this paper, we investigate a realistic but underexplored problem, called few-shot temporal knowledge graph reasoning, that aims to predict future facts for newly emerging entities based on extremely limited observations in evolving graphs. It offers practical value in applications that need to derive instant new knowledge about new entities in temporal knowledge graphs (TKGs) with minimal supervision. The challenges mainly come from the few-shot and time shift properties of new entities. First, the limited observations associated with them are insufficient for training a model from scratch. Second, the potentially dynamic distributions from the initially observable facts to the future facts ask for explicitly modeling the evolving characteristics of new entities.
Learning to Sample and Aggregate: Few-shot Reasoning over Temporal Knowledge Graphs
In this paper, we investigate a realistic but underexplored problem, called few-shot temporal knowledge graph reasoning, that aims to predict future facts for newly emerging entities based on extremely limited observations in evolving graphs. It offers practical value in applications that need to derive instant new knowledge about new entities in temporal knowledge graphs (TKGs) with minimal supervision. The challenges mainly come from the few-shot and time shift properties of new entities. First, the limited observations associated with them are insufficient for training a model from scratch. Second, the potentially dynamic distributions from the initially observable facts to the future facts ask for explicitly modeling the evolving characteristics of new entities.
Learning to Sample and Aggregate: Few-shot Reasoning over Temporal Knowledge Graphs
Wang, Ruijie, Li, Zheng, Sun, Dachun, Liu, Shengzhong, Li, Jinning, Yin, Bing, Abdelzaher, Tarek
In this paper, we investigate a realistic but underexplored problem, called few-shot temporal knowledge graph reasoning, that aims to predict future facts for newly emerging entities based on extremely limited observations in evolving graphs. It offers practical value in applications that need to derive instant new knowledge about new entities in temporal knowledge graphs (TKGs) with minimal supervision. The challenges mainly come from the few-shot and time shift properties of new entities. First, the limited observations associated with them are insufficient for training a model from scratch. Second, the potentially dynamic distributions from the initially observable facts to the future facts ask for explicitly modeling the evolving characteristics of new entities. We correspondingly propose a novel Meta Temporal Knowledge Graph Reasoning (MetaTKGR) framework. Unlike prior work that relies on rigid neighborhood aggregation schemes to enhance low-data entity representation, MetaTKGR dynamically adjusts the strategies of sampling and aggregating neighbors from recent facts for new entities, through temporally supervised signals on future facts as instant feedback. Besides, such a meta temporal reasoning procedure goes beyond existing meta-learning paradigms on static knowledge graphs that fail to handle temporal adaptation with large entity variance. We further provide a theoretical analysis and propose a temporal adaptation regularizer to stabilize the meta temporal reasoning over time. Empirically, extensive experiments on three real-world TKGs demonstrate the superiority of MetaTKGR over state-of-the-art baselines by a large margin.
Learning from History: Modeling Temporal Knowledge Graphs with Sequential Copy-Generation Networks
Zhu, Cunchao, Chen, Muhao, Fan, Changjun, Cheng, Guangquan, Zhan, Yan
Large knowledge graphs often grow to store temporal facts that model the dynamic relations or interactions of entities along the timeline. Since such temporal knowledge graphs often suffer from incompleteness, it is important to develop time-aware representation learning models that help to infer the missing temporal facts. While the temporal facts are typically evolving, it is observed that many facts often show a repeated pattern along the timeline, such as economic crises and diplomatic activities. This observation indicates that a model could potentially learn much from the known facts appeared in history. To this end, we propose a new representation learning model for temporal knowledge graphs, namely CyGNet, based on a novel timeaware copy-generation mechanism. CyGNet is not only able to predict future facts from the whole entity vocabulary, but also capable of identifying facts with repetition and accordingly predicting such future facts with reference to the known facts in the past. We evaluate the proposed method on the knowledge graph completion task using five benchmark datasets. Extensive experiments demonstrate the effectiveness of CyGNet for predicting future facts with repetition as well as de novo fact prediction.
Three Technology Hard Trends That Are Transforming Healthcare Today!
Three anticipatory leaders are getting involved in the challenge of transforming healthcare together. Why do I think these three unlikely partners may succeed where other have struggled? Yesterday I talked about the big news this week in healthcare. You can find out more about why they got involved at Can These Three Anticipatory Leaders Disrupt Healthcare? My faith lies in understanding technology hard trends.
Will Artificial Intelligence Replace Human Intelligence, not just Our Processes? - Daniel Burrus
The single most disruptive influence on business, as well as society, will be artificial intelligence (A.I.), which includes technology such as machine learning and cognitive computing to name just two. In other words, there is more than one type of A.I. and each represents a new way of doing both big things as well as everyday things in amazing ways. When I say big things, I mean solving highly complex problems such as enabling the development of highly personalized drugs and genetic therapies designed for your genetic makeup. A.I. will keep you from having an accident, whether you are driving your car or not, by knowing the surroundings in real time, predicting a problem, and helping you avoid the accident. Eighty-five percent of traffic accidents are caused by blind spots, and soon your car won't let you have that accident.