Domain Switch-Aware Holistic Recurrent Neural Network for Modeling Multi-Domain User Behavior

Author(s):  
Donghyun Kim ◽  
Sungchul Kim ◽  
Handong Zhao ◽  
Sheng Li ◽  
Ryan A. Rossi ◽  
...  
2022 ◽  
Vol 40 (1) ◽  
pp. 1-27
Author(s):  
Agnès Mustar ◽  
Sylvain Lamprier ◽  
Benjamin Piwowarski

When conducting a search task, users may find it difficult to articulate their need, even more so when the task is complex. To help them complete their search, search engine usually provide query suggestions. A good query suggestion system requires to model user behavior during the search session. In this article, we study multiple Transformer architectures applied to the query suggestion task and compare them with recurrent neural network (RNN)-based models. We experiment Transformer models with different tokenizers, with different Encoders (large pretrained models or fully trained ones), and with two kinds of architectures (flat or hierarchic). We study the performance and the behaviors of these various models, and observe that Transformer-based models outperform RNN-based ones. We show that while the hierarchical architectures exhibit very good performances for query suggestion, the flat models are more suitable for complex and long search tasks. Finally, we investigate the flat models behavior and demonstrate that they indeed learn to recover the hierarchy of a search session.


2020 ◽  
Vol 896 ◽  
pp. 183-194
Author(s):  
Chang Yan He ◽  
Niravkumar Patel ◽  
Marin Kobilarov ◽  
Iulian Iordachita

Retinal microsurgery is one of the most technically demanding surgeries, during which the surgical tool needs to be inserted into the eyeball and is constantly constrained by the sclerotomy port. During the surgery, any unexpected manipulation could cause extreme tool-sclera contact force leading to sclera damage. Although, a robot assistant could reduce hand tremor and improve the tool positioning accuracy, it cannot prevent or alarm the surgeon about the upcoming danger caused by surgeon’s misoperations, i.e., applying excessive force on the sclera. In this paper, we present a new method based on a Long Short Term Memory recurrent neural network for predicting the user behavior, i.e., the contact force between the tool and sclera (sclera force) and the insertion depth of the tool from sclera contact point (insertion depth) in real time (40Hz). The predicted force information is provided to the user through auditory feedback to alarm any unexpected sclera force. The user behavior data is collected in a mock retinal surgical operation on a dry eye phantom with Steady Hand Eye Robot and a novel multi-function sensing tool. The Long Short Term Memory recurrent neural network is trained on the collected time series of sclera force and insertion depth. The network can predict the sclera force and insertion depth 100 milliseconds in the future with 95.29% and 96.57% accuracy, respectively, and can help reduce the fraction of unsafe sclera forces from 40.19% to 15.43%.


2020 ◽  
Vol 39 (6) ◽  
pp. 8927-8935
Author(s):  
Bing Zheng ◽  
Dawei Yun ◽  
Yan Liang

Under the impact of COVID-19, research on behavior recognition are highly needed. In this paper, we combine the algorithm of self-adaptive coder and recurrent neural network to realize the research of behavior pattern recognition. At present, most of the research of human behavior recognition is focused on the video data, which is based on the video number. At the same time, due to the complexity of video image data, it is easy to violate personal privacy. With the rapid development of Internet of things technology, it has attracted the attention of a large number of experts and scholars. Researchers have tried to use many machine learning methods, such as random forest, support vector machine and other shallow learning methods, which perform well in the laboratory environment, but there is still a long way to go from practical application. In this paper, a recursive neural network algorithm based on long and short term memory (LSTM) is proposed to realize the recognition of behavior patterns, so as to improve the accuracy of human activity behavior recognition.


2020 ◽  
Vol 2020 (17) ◽  
pp. 2-1-2-6
Author(s):  
Shih-Wei Sun ◽  
Ting-Chen Mou ◽  
Pao-Chi Chang

To improve the workout efficiency and to provide the body movement suggestions to users in a “smart gym” environment, we propose to use a depth camera for capturing a user’s body parts and mount multiple inertial sensors on the body parts of a user to generate deadlift behavior models generated by a recurrent neural network structure. The contribution of this paper is trifold: 1) The multimodal sensing signals obtained from multiple devices are fused for generating the deadlift behavior classifiers, 2) the recurrent neural network structure can analyze the information from the synchronized skeletal and inertial sensing data, and 3) a Vaplab dataset is generated for evaluating the deadlift behaviors recognizing capability in the proposed method.


2019 ◽  
Author(s):  
Qi Yuan ◽  
Alejandro Santana-Bonilla ◽  
Martijn Zwijnenburg ◽  
Kim Jelfs

<p>The chemical space for novel electronic donor-acceptor oligomers with targeted properties was explored using deep generative models and transfer learning. A General Recurrent Neural Network model was trained from the ChEMBL database to generate chemically valid SMILES strings. The parameters of the General Recurrent Neural Network were fine-tuned via transfer learning using the electronic donor-acceptor database from the Computational Material Repository to generate novel donor-acceptor oligomers. Six different transfer learning models were developed with different subsets of the donor-acceptor database as training sets. We concluded that electronic properties such as HOMO-LUMO gaps and dipole moments of the training sets can be learned using the SMILES representation with deep generative models, and that the chemical space of the training sets can be efficiently explored. This approach identified approximately 1700 new molecules that have promising electronic properties (HOMO-LUMO gap <2 eV and dipole moment <2 Debye), 6-times more than in the original database. Amongst the molecular transformations, the deep generative model has learned how to produce novel molecules by trading off between selected atomic substitutions (such as halogenation or methylation) and molecular features such as the spatial extension of the oligomer. The method can be extended as a plausible source of new chemical combinations to effectively explore the chemical space for targeted properties.</p>


2019 ◽  
Vol 24 (2) ◽  
pp. 91-101
Author(s):  
Tjut Awaliyah Zuraiyah ◽  
Dian Kartika Utami ◽  
Degi Herlambang

Chatbot adalah perangkat lunak yang dapat berkomunikasi dengan manusia menggunakan bahasa alami. Model percakapan menggunakan kecerdasan buatan agar mampu memahami ucapan pengguna dan memberi tanggapan yang relevan dengan masalah yang dibahas oleh pengguna. Pendaftaran mahasiswa baru memerlukan banyak informasi mengenai prosedur pendaftaran di perguruan tinggi. Website pendaftaran online di Universitas Pakuan masih sebatas berisi informasi umum. Penelitian ini bertujuan untuk membuat suatu aplikasi Chatbot otomatis yang dapat berkomunikasi dengan manusia mengenai informasi pendaftaran mahasiswa baru di Universitas Pakuan menggunakan Recurrent Neural Network (RNN) untuk klasifikasi teks. Aplikasi Chatbot diimplementasikan menggunakan bahasa pemrograman Python dan Telegram API. Tahapan pada implementasi Chatbot terdiri dari preprocessing, transformasi data ke format .JSON, pelatihan data, bag of word dan full connection. Pengujian aplikasi Chatbot menggunakan data sebanyak 251 kalimat pertanyaan tentang pendaftaran mahasiswa baru di Universitas Pakuan. Hasil pengujian menunjukkan bahwa Chatbot dapat menjawab pertanyaan mengenai pendaftaran mahasiswa baru dengan akurasi sebesar 88%, presisi sebesar 95% dan recall sebesar 92%.


Sign in / Sign up

Export Citation Format

Share Document