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Dekonstruksi ◽  
2021 ◽  
Vol 5 (01) ◽  
pp. 156-170
Author(s):  
Asmudjo J. Irianto

Dalam estetika otonom modernis, seni lukis menduduki peranan utama, apa yang disebut seni rupa modern tak lain adalah seni lukis. Kendati setelah itu, seni lukis berkali-kali dinyatakan “mati”—karena kehadiran fotografi, seni instalasi, heppening art, performance art, dan new media art—namun seni lukis membuktikan dirinya dapat terus hidup dan berkembang. Ketika membahas lukisan-lukisan Syakieb Sungkar, Asmudjo J. Irianto mengatakan, pada dasarnya seni lukis menjadi bagian penting dalam praktik seni rupa kontemporer global, demikian pula yang tampak dalam seni rupa kontemporer Indonesia. Seni lukis tetap menjadi primadona. 


2021 ◽  
Author(s):  
R. Tyler McLaughlin ◽  
Maansi Asthana ◽  
Marc Di Meo ◽  
Michele Ceccarelli ◽  
Howard J. Jacob ◽  
...  

In precision oncology, reliable identification of tumor-specific DNA mutations requires sequencing tumor DNA and non-tumor DNA (so-called "matched normal") from the same patient. The normal sample allows researchers to distinguish acquired (somatic) and hereditary (germline) variants. The ability to distinguish somatic and germline variants facilitates estimation of tumor mutation burden (TMB), which is a recently FDA-approved pan-cancer marker for highly successful cancer immunotherapies; in tumor-only variant calling (i.e., without a matched normal), the difficulty in discriminating germline and somatic variants results in inflated and unreliable TMB estimates. We apply machine learning to the task of somatic vs germline classification in tumor-only samples using TabNet, a recently developed attentive deep learning model for tabular data that has achieved state of the art performance in multiple classification tasks (Arik and Pfister 2019). We constructed a training set for supervised classification using features derived from tumor-only variant calling and drawing somatic and germline truth-labels from an independent pipeline incorporating the patient-matched normal samples. Our trained model achieved state-of-the-art performance on two hold-out test datasets: a TCGA dataset including sarcoma, breast adenocarcinoma, and endometrial carcinoma samples (F1-score: 88.3), and a metastatic melanoma dataset, (F1-score 79.8). Concordance between matched-normal and tumor-only TMB improves from R2 = 0.006 to 0.705 with the addition of our classifier. And importantly, this approach generalizes across tumor tissue types and capture kits and has a call rate of 100%. The interpretable feature masks of the attentive deep learning model explain the reasons for misclassified variants. We reproduce the recent finding that tumor-only TMB estimates for Black patients are extremely inflated relative to that of White patients due to the racial biases of germline databases. We show that our machine learning approach appreciably reduces this racial bias in tumor-only variant-calling.


Symmetry ◽  
2021 ◽  
Vol 13 (12) ◽  
pp. 2275
Author(s):  
Wenjie Yang ◽  
Jianlin Zhang ◽  
Jingju Cai ◽  
Zhiyong Xu

Graph convolutional networks (GCNs) have made significant progress in the skeletal action recognition task. However, the graphs constructed by these methods are too densely connected, and the same graphs are used repeatedly among channels. Redundant connections will blur the useful interdependencies of joints, and the overly repetitive graphs among channels cannot handle changes in joint relations between different actions. In this work, we propose a novel relation selective graph convolutional network (RS-GCN). We also design a trainable relation selection mechanism. It encourages the model to choose solid edges to work and build a stable and sparse topology of joints. The channel-wise graph convolution and multiscale temporal convolution are proposed to strengthening the model’s representative power. Furthermore, we introduce an asymmetrical module named the spatial-temporal attention module for more stable context modeling. Combining those changes, our model achieves state-of-the-art performance on three public benchmarks, namely NTU-RGB+D, NTU-RGB+D 120, and Northwestern-UCLA.


Information ◽  
2021 ◽  
Vol 12 (11) ◽  
pp. 484
Author(s):  
Siyou Liu ◽  
Yuqi Sun ◽  
Longyue Wang

Recent years have seen a surge of interest in dialogue translation, which is a significant application task for machine translation (MT) technology. However, this has so far not been extensively explored due to its inherent characteristics including data limitation, discourse properties and personality traits. In this article, we give the first comprehensive review of dialogue MT, including well-defined problems (e.g., 4 perspectives), collected resources (e.g., 5 language pairs and 4 sub-domains), representative approaches (e.g., architecture, discourse phenomena and personality) and useful applications (e.g., hotel-booking chat system). After systematical investigation, we also build a state-of-the-art dialogue NMT system by leveraging a breadth of established approaches such as novel architectures, popular pre-training and advanced techniques. Encouragingly, we push the state-of-the-art performance up to 62.7 BLEU points on a commonly-used benchmark by using mBART pre-training. We hope that this survey paper could significantly promote the research in dialogue MT.


2021 ◽  
pp. 1-21
Author(s):  
Andrei C. Apostol ◽  
Maarten C. Stol ◽  
Patrick Forré

We propose a novel pruning method which uses the oscillations around 0, i.e. sign flips, that a weight has undergone during training in order to determine its saliency. Our method can perform pruning before the network has converged, requires little tuning effort due to having good default values for its hyperparameters, and can directly target the level of sparsity desired by the user. Our experiments, performed on a variety of object classification architectures, show that it is competitive with existing methods and achieves state-of-the-art performance for levels of sparsity of 99.6 % and above for 2 out of 3 of the architectures tested. Moreover, we demonstrate that our method is compatible with quantization, another model compression technique. For reproducibility, we release our code at https://github.com/AndreiXYZ/flipout.


Electronics ◽  
2021 ◽  
Vol 10 (20) ◽  
pp. 2488
Author(s):  
Daohui Ge ◽  
Ruyi Liu ◽  
Yunan Li ◽  
Qiguang Miao

Effectively learning the appearance change of a target is the key point of an online tracker. When occlusion and misalignment occur, the tracking results usually contain a great amount of background information, which heavily affects the ability of a tracker to distinguish between targets and backgrounds, eventually leading to tracking failure. To solve this problem, we propose a simple and robust reliable memory model. In particular, an adaptive evaluation strategy (AES) is proposed to assess the reliability of tracking results. AES combines the confidence of the tracker predictions and the similarity distance, which is between the current predicted result and the existing tracking results. Based on the reliable results of AES selection, we designed an active–frozen memory model to store reliable results. Training samples stored in active memory are used to update the tracker, while frozen memory temporarily stores inactive samples. The active–frozen memory model maintains the diversity of samples while satisfying the limitation of storage. We performed comprehensive experiments on five benchmarks: OTB-2013, OTB-2015, UAV123, Temple-color-128, and VOT2016. The experimental results show that our tracker achieves state-of-the-art performance.


2021 ◽  
Author(s):  
Hye-jin Shim ◽  
Ju-ho Kim ◽  
Jee-weon Jung ◽  
Ha-Jin Yu

The attention mechanism has been widely adopted in acoustic scene classification. However, we find that during the process of attention exclusively emphasizing information, it tends to excessively discard information although improving the performance. We propose a mechanism referred to as the attentive max feature map which combines two effective techniques, attention and max feature map, to further elaborate the attention mechanism and mitigate the abovementioned phenomenon. Furthermore, we explore various joint learning methods that utilize additional labels originally generated for subtask B (3-classes) on top of existing labels for subtask A (10-classes) of the DCASE2020 challenge. We expect that using two kinds of labels simultaneously would be helpful because the labels of the two subtasks differ in their degree of abstraction. Applying two proposed techniques, our proposed system achieves state-of-the-art performance among single systems on subtask A. In addition, because the model has a complexity comparable to subtask B's requirement, it shows the possibility of developing a system that fulfills the requirements of both subtasks; generalization on multiple devices and low-complexity.


2021 ◽  
Vol 9 (3) ◽  
pp. 587
Author(s):  
Samsul Arifin ◽  
Athik Hidayatul Ummah

The Ministry of Health of the Republic of Indonesia held a national campaign movement to wear masks to prevent transmission of COVID-19. The movement was welcomed by the pesantren. The purpose of this study was to describe the movement of wearing masks with the at-tawazun counseling approach (pesantren-based counseling) in Pondok Pesantren Salafiyah Syafi'iyah Situbondo, East Java. This research used a service-learning approach. The results of this study revealed the campaign to wear masks by balancing (at-tawazun) between physical and spiritual efforts, namely: a counseling approach with (1) uswah hasanah techniques, namely giving concrete examples of wearing good masks, (2) megha' kalemmar aéngnga sé ta' lekkoa, namely modeling using masks from students figures so that they are imitated by other students, (3) mauidhah hasanah, namely educational speech using masks, (4) balance between targhib and ta'zir which is giving reinforcement or punishment, and (5) art, namely campaigns using masks through the students' art performance. This research should be adopted in several other pesantren or Islamic-based educational institutions for the campaign to wear masks. This research contributes to the development of "Islamic Guidance and Counseling", "Islamic Psychology", and several other counseling theories.


2021 ◽  
Author(s):  
Timothée P. Allenet ◽  
Thomas Mortelmans ◽  
Michaela Vockenhuber ◽  
Chia-Kai Yeh ◽  
Yasin Ekinci

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