scholarly journals Summary-Source Proposition-level Alignment: Task, Datasets and Supervised Baseline

Author(s):  
Ori Ernst ◽  
Ori Shapira ◽  
Ramakanth Pasunuru ◽  
Michael Lepioshkin ◽  
Jacob Goldberger ◽  
...  
Keyword(s):  
2021 ◽  
Vol 11 (11) ◽  
pp. 4894
Author(s):  
Anna Scius-Bertrand ◽  
Michael Jungo ◽  
Beat Wolf ◽  
Andreas Fischer ◽  
Marc Bui

The current state of the art for automatic transcription of historical manuscripts is typically limited by the requirement of human-annotated learning samples, which are are necessary to train specific machine learning models for specific languages and scripts. Transcription alignment is a simpler task that aims to find a correspondence between text in the scanned image and its existing Unicode counterpart, a correspondence which can then be used as training data. The alignment task can be approached with heuristic methods dedicated to certain types of manuscripts, or with weakly trained systems reducing the required amount of annotations. In this article, we propose a novel learning-based alignment method based on fully convolutional object detection that does not require any human annotation at all. Instead, the object detection system is initially trained on synthetic printed pages using a font and then adapted to the real manuscripts by means of self-training. On a dataset of historical Vietnamese handwriting, we demonstrate the feasibility of annotation-free alignment as well as the positive impact of self-training on the character detection accuracy, reaching a detection accuracy of 96.4% with a YOLOv5m model without using any human annotation.


2019 ◽  
Author(s):  
Rakesh Nanjappa ◽  
Robert M. McPeek

ABSTRACTWhile aiming and shooting, we make tiny eye movements called microsaccades that shift gaze between task-relevant objects within a small region. However, in the brief period before pressing trigger, microsaccades are suppressed. This might be due to the lack of the requirement to shift gaze as the retinal images of the two objects start overlapping on fovea. Or we might be actively suppressing microsaccades to prevent any disturbances in visual perception caused by microsaccades around the time of their occurrence and their subsequent effect on shooting performance.In this study we looked at microsaccade rate while participants performed a simulated shooting task under two conditions: normal viewing in which they moved their eyes freely and eccentric condition in which they maintained gaze on a fixed target while performing shooting task at 5° eccentricity. As expected, microsaccade rate dropped at the end of the task in the normal viewing condition. However, we found the same for the eccentric condition in which microsaccade did not shift gaze between the task objects.Microsaccades are also produced in response to shifts in covert attention. To test whether disengagement of covert attention from eccentric shooting location caused the drop in microsaccade rate, we monitored participant’s spatial attention location by employing a RSVP task simultaneously at a location opposite to the shooting task. Target letter detection at RSVP location did not improve during the drop in microsaccade rate, suggesting that covert attention was maintained at the shooting task location.We conclude that in addition to their usual gaze-shifting function, microsaccades during fine acuity tasks might be modulated by cognitive processes other than spatial attention.


Author(s):  
Bayu Distiawan Trisedya ◽  
Jianzhong Qi ◽  
Rui Zhang

The task of entity alignment between knowledge graphs aims to find entities in two knowledge graphs that represent the same real-world entity. Recently, embedding-based models are proposed for this task. Such models are built on top of a knowledge graph embedding model that learns entity embeddings to capture the semantic similarity between entities in the same knowledge graph. We propose to learn embeddings that can capture the similarity between entities in different knowledge graphs. Our proposed model helps align entities from different knowledge graphs, and hence enables the integration of multiple knowledge graphs. Our model exploits large numbers of attribute triples existing in the knowledge graphs and generates attribute character embeddings. The attribute character embedding shifts the entity embeddings from two knowledge graphs into the same space by computing the similarity between entities based on their attributes. We use a transitivity rule to further enrich the number of attributes of an entity to enhance the attribute character embedding. Experiments using real-world knowledge bases show that our proposed model achieves consistent improvements over the baseline models by over 50% in terms of hits@1 on the entity alignment task.


Author(s):  
Laura Diosan ◽  
Alexandrina Rogozan ◽  
Jean-Pierre Pécuchet

The automatic alignment between a specialized terminology used by librarians in order to index concepts and a general vocabulary employed by a neophyte user in order to retrieve medical information will certainly improve the performances of the search process, this being one of the purposes of the ANR VODEL project. The authors propose an original automatic alignment of definitions taken from different dictionaries that could be associated to the same concept although they may have different labels. The definitions are represented at different levels (lexical, semantic and syntactic), by using an original and shorter representation, which concatenates more similarities measures between definitions, instead of the classical one (as a vector of word occurrence, whose length equals the number of different words from all the dictionaries). The automatic alignment task is considered as a classification problem and three Machine Learning algorithms are utilised in order to solve it: a k Nearest Neighbour algorithm, an Evolutionary Algorithm and a Support Vector Machine algorithm. Numerical results indicate that the syntactic level of nouns seems to be the most important, determining the best performances of the SVM classifier.


2010 ◽  
Vol 5 (1) ◽  
pp. 1-28 ◽  
Author(s):  
Willem Robert van Hage ◽  
Margherita Sini ◽  
Lori Finch ◽  
Hap Kolb ◽  
Guus Schreiber
Keyword(s):  

2013 ◽  
Vol 39 (2) ◽  
pp. 229-266 ◽  
Author(s):  
Yufeng Chen ◽  
Chengqing Zong ◽  
Keh-Yih Su

In this article, an integrated model is derived that jointly identifies and aligns bilingual named entities (NEs) between Chinese and English. The model is motivated by the following observations: (1) whether an NE is translated semantically or phonetically depends greatly on its entity type, (2) entities within an aligned pair should share the same type, and (3) the initially detected NEs can act as anchors and provide further information while selecting NE candidates. Based on these observations, this article proposes a translation mode ratio feature (defined as the proportion of NE internal tokens that are semantically translated), enforces an entity type consistency constraint, and utilizes additional new NE likelihoods (based on the initially detected NE anchors). Experiments show that this novel method significantly outperforms the baseline. The type-insensitive F-score of identified NE pairs increases from 78.4% to 88.0% (12.2% relative improvement) in our Chinese–English NE alignment task, and the type-sensitive F-score increases from 68.4% to 83.0% (21.3% relative improvement). Furthermore, the proposed model demonstrates its robustness when it is tested across different domains. Finally, when semi-supervised learning is conducted to train the adopted English NE recognition model, the proposed model also significantly boosts the English NE recognition type-sensitive F-score.


1979 ◽  
Vol 31 (1) ◽  
pp. 111-120 ◽  
Author(s):  
Leslie Buck

Overshoot rate in a target alignment task depends on the location of the target with reference to the operational boundary of the task. Subjects performed a step tracking task under four conditions combining pursuit and compensatory display modes with joystick and crank control devices. The boundary effect was found when the joystick was used but not the crank, while the display mode had no effect, indicating that subjects moved with respect to a frame of reference based on proprioceptive information. Movements were made according to the postures adopted, irrespective of the concomitant visual consequences.


Author(s):  
Shengnan Li ◽  
Xin Li ◽  
Rui Ye ◽  
Mingzhong Wang ◽  
Haiping Su ◽  
...  

Most existing solutions for the alignment of multi-relational networks, such as multi-lingual knowledge bases, are ``translation''-based which facilitate the network embedding via the trans-family, such as TransE. However, they cannot address triangular or other structural properties effectively. Thus, we propose a non-translational approach, which aims to utilize a probabilistic model to offer more robust solutions to the alignment task, by exploring the structural properties as well as leveraging on anchors to project each network onto the same vector space during the process of learning the representation of individual networks. The extensive experiments on four multi-lingual knowledge graphs demonstrate the effectiveness and robustness of the proposed method over a set of state-of-the-art alignment methods.


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