16 results on '"Zahra, Kiran"'
Search Results
2. Two-dimensional Cu-based materials for electrocatalytic carbon dioxide reduction
- Author
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Hu, Mingliang, Li, Li, Li, Junjun, Zahra, Kiran, and Zhang, Zhicheng
- Published
- 2024
- Full Text
- View/download PDF
3. SNC_Net: Skin Cancer Detection by Integrating Handcrafted and Deep Learning-Based Features Using Dermoscopy Images
- Author
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Naeem, Ahmad, primary, Anees, Tayyaba, additional, Khalil, Mudassir, additional, Zahra, Kiran, additional, Naqvi, Rizwan Ali, additional, and Lee, Seung-Won, additional
- Published
- 2024
- Full Text
- View/download PDF
4. Deep Learning-Based Classification of Abrasion and Ischemic Diabetic Foot Sores Using Camera-Captured Images
- Author
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Khalil, Mudassir, primary, Naeem, Ahmad, additional, Naqvi, Rizwan Ali, additional, Zahra, Kiran, additional, Muqarib, Syed Atif, additional, and Lee, Seung-Won, additional
- Published
- 2023
- Full Text
- View/download PDF
5. Absence of GSTT1 and polymorphisms in GSTP1 and TP53 are associated with the incidence of acne vulgaris
- Author
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Ullah, Rehmat, primary, Afgan, Sher, additional, Akhtar, Mariyam, additional, Asif, Muhammad, additional, Latif, Muhammad, additional, Mehmood, Rashid, additional, Naeem, Muhammad, additional, Zahra, Kiran, additional, Farooq, Muhammad, additional, Ben Said, Mourad, additional, and Iqbal, Furhan, additional
- Published
- 2023
- Full Text
- View/download PDF
6. Towards an automated information extraction model from Twitter threads during disasters
- Author
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Zahra, Kiran, Das, Rahul Deb, Ostermann, F.O., Purves, Ross S., Department of Geo-information Processing, Faculty of Geo-Information Science and Earth Observation, UT-I-ITC-STAMP, and Digital Society Institute
- Abstract
Social media plays a vital role as a communication source during large-scale disasters. The unstructured and informal nature of such short individual posts makes it difficult to extract useful information, often due to a lack of additional context. The potential of social media threads– sequences of posts– has not been explored as a source of adding context and more information to the initiating post. In this research, we explored Twitter threads as an information source and developed an information extraction model capable of extracting relevant information from threads posted during disasters. We used a crowdsourcing platform to determine whether a thread adds more information to the initial tweet and defined disaster-related information present in these threads into six themes– event reporting, location, time, intensity, casualty and damage reports, and help calls. For these themes, we created the respective thematic lexicons from WordNet. Moreover, we developed and compared four information extraction models trained on GloVe, word2vec, bag-of-words, and thematic bag-of-words to extract and summarize the most critical information from the threads. Our results reveal that 70 percent of all threads add information to the initiating post for various disaster-related themes. Furthermore, the thematic bag-of-words information extraction model outperforms the other algorithms and models for preserving the highest number of disaster-related themes.
- Published
- 2022
7. Brassinosteroids: Molecular and physiological responses in plant growth and abiotic stresses
- Author
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Hafeez, Muhammad Bilal, primary, Zahra, Noreen, additional, Zahra, Kiran, additional, Raza, Ali, additional, Khan, Aaliya, additional, Shaukat, Kanval, additional, and Khan, Shahbaz, additional
- Published
- 2021
- Full Text
- View/download PDF
8. Impact of Women Education on Economic Growth: An Evidence from Pakistan
- Author
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Zahra, Kiran, Yasin, Mudassar, Sultana, Baserat, Haider, Zulqarnain, Khatoon, Raheela, Zahra, Kiran, Yasin, Mudassar, Sultana, Baserat, Haider, Zulqarnain, and Khatoon, Raheela
- Abstract
Education is the most fundamental right in the current situation, and it is an essential element of economic growth. No country can achieve economic development and goals without investing in education. Pakistan’s economic development is possible when education is equal for both men and women, but the government did not give importance to the sector as it deserved. This study investigated the determinants of female higher education in Pakistan and the impact of women's education on the economic growth of Pakistan. This study utilized time-series data from 1991 to 2019. The autoregressive distribution lag (ARDL) model is applied to estimate the impact. The result shows that in Pakistan, education expenditure has no positive effect on female education. In contrast, a positive relationship between female higher education and GDP growth exists, but this relation is not strong in the short run and long run.
- Published
- 2021
9. Automatic identification of eyewitness messages on twitter during disasters
- Author
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Zahra, Kiran, Imran, Muhammad, Ostermann, Frank O, Zahra, Kiran, Imran, Muhammad, and Ostermann, Frank O
- Abstract
Social media platforms such as Twitter provide convenient ways to share and consume important information during disasters and emergencies. Information from bystanders and eyewitnesses can be useful for law enforcement agencies and humanitarian organizations to get firsthand and credible information about an ongoing situation to gain situational awareness among other potential uses. However, the identification of eyewitness reports on Twitter is a challenging task. This work investigates different types of sources on tweets related to eyewitnesses and classifies them into three types (i) direct eyewitnesses, (ii) indirect eyewitnesses, and (iii) vulnerable eyewitnesses. Moreover, we investigate various characteristics associated with each kind of eyewitness type. We observe that words related to perceptual senses (feeling, seeing, hearing) tend to be present in direct eyewitness messages, whereas emotions, thoughts, and prayers are more common in indirect witnesses. We use these characteristics and labeled data to train several machine learning classifiers. Our results performed on several real-world Twitter datasets reveal that textual features (bag-of-words) when combined with domain-expert features achieve better classification performance. Our approach contributes a successful example for combining crowdsourced and machine learning analysis, and increases our understanding and capability of identifying valuable eyewitness reports during disasters.
- Published
- 2020
10. Understanding eyewitness reports on Twitter during disasters
- Author
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Zahra, Kiran, Imran, Muhammad, Ostermann, Frank O., Boersma, K., Tomaszewski, B., Department of Geo-information Processing, Faculty of Geo-Information Science and Earth Observation, and UT-I-ITC-STAMP
- Subjects
ITC-GOLD - Abstract
Social media platforms such as Twitter provide convenient ways to share and consume important information during disasters and emergencies. Information from bystanders and eyewitnesses can be useful for law enforcement agencies and humanitarian organizations to get firsthand and credible information about an ongoing situation to gain situational awareness among other uses. However, identification of eyewitness reports on Twitter is challenging for many reasons. This work investigates the sources of tweets and classifies them into three types (i) direct eyewitnesses, (ii) indirect eyewitness, and (iii) vulnerable accounts. Moreover, we investigate various characteristics associated with each kind of eyewitness account. We observe that words related to perceptual senses (feeling, seeing, hearing) tend to be present in direct eyewitness messages, whereas emotions, thoughts, and prayers are more common in indirect witnesses. We believe these characteristics can help make more e cient computational methods and systems in the future for automatic identification of eyewitness accounts.
- Published
- 2018
11. Understanding eyewitness reports on Twitter during disasters
- Author
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Boersma, Kees, Tomaszewski, Brian, Boersma, K ( Kees ), Tomaszewski, B ( Brian ), Zahra, Kiran, Imran, Muhammad, Ostermann, Frank O, Boersma, Kees, Tomaszewski, Brian, Boersma, K ( Kees ), Tomaszewski, B ( Brian ), Zahra, Kiran, Imran, Muhammad, and Ostermann, Frank O
- Abstract
Social media platforms such as Twitter provide convenient ways to share and consume important information during disasters and emergencies. Information from bystanders and eyewitnesses can be useful for law enforcement agencies and humanitarian organizations to get firsthand and credible information about an ongoing situation to gain situational awareness among other uses. However, identification of eyewitness reports on Twitter is challenging for many reasons. This work investigates the sources of tweets and classifies them into three types (i) direct eyewitnesses, (ii) indirect eyewitness, and (iii) vulnerable accounts. Moreover, we investigate various characteristics associated with each kind of eyewitness account. We observe that words related to perceptual senses (feeling, seeing, hearing) tend to be present in direct eyewitness messages, whereas emotions, thoughts, and prayers are more common in indirect witnesses. We believe these characteristics can help make more efficient computational methods and systems in the future for automatic identification of eyewitness accounts.
- Published
- 2018
12. NEMATOCIDAL, INSECTICIDAL, ANTI-INFLAMMATORY AND CYTOTOXIC ACTIVITIES OF SELECTED MEDICINAL PLANTS.
- Author
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ISMAIL, Muhammad, JAVED, Salma, BATOOL, Zahra, ZAHRA, Kiran, DIN, Iffat, SHAHEEN, Salma, HUSSAIN, Ejaz, Yupei YANG, and Wei WANG
- Subjects
SOUTHERN root-knot nematode ,ANTI-inflammatory agents ,PLANT extracts ,HELA cells ,CELL lines ,HEXANE - Abstract
Medicinal plants play a vital role in human life. The plant-based botanicals are considered to be safer, selective, and effective to conventional and synthetic chemicals used for the same purposes. There are huge number of bioactive plants around the globe which needs to be explored for their potential as herbal alternatives to traditional chemicals. In the present study, the methanolic extracts of Anaphalis nepalensis (AN), Anaphalis virgata (AV), Artemisia foetida (AF), and Anthemis cotula (AC) were collected from Gilgit-Baltistan. The main plant extracts were further fractionated into n-hexanes (H), dichloromethane (D) and aqueous (A) fractions. All these fractions were analyzed for their nematocidal, insecticidal, anti-inflammatory, and anti-cancer activities. All three fractions of AC, AV, and AF showed excellent nematocidal activity against Meloidogyne incognita (90, 94, 95%, respectively) at conc. of 1% after 72 h of the treatment. Similarly, AV-D and AC-D showed excellent anti-inflammatory response with IC50 values of 20 and 32 through inhibition of ROS. The cytotoxic activities of AC-H, AC-D, and AC-A against Hela tumor cell lines was found active with IC50 values of 22.7, 12.7, and 7.6, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2021
13. Geographic variability of Twitter usage characteristics during disaster events : open access
- Author
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Zahra, Kiran, Ostermann, F.O., Purves, Ross S., Department of Geo-information Processing, UT-I-ITC-STAMP, and Faculty of Geo-Information Science and Earth Observation
- Published
- 2017
14. Geographic variability of Twitter usage characteristics during disaster events
- Author
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Zahra, Kiran, Ostermann, Frank O, Purves, Ross S, Zahra, Kiran, Ostermann, Frank O, and Purves, Ross S
- Abstract
Twitter is a well-known microblogging platform for rapid diffusion of views, ideas, and information. During disasters, it has widely been used to communicate evacuation plans, distribute calls for help, and assist in damage assessment. The reliability of such information is very important for decision-making in a crisis situation, but also difficult to assess. There is little research so far on the transferability of quality assessment methods from one geographic region to another. The main contribution of this research is to study Twitter usage characteristics of users based in different geographic locations during disasters. We examine tweeting activity during two earthquakes in Italy and Myanmar. We compare the granularity of geographic references used, user profile characteristics that are related to credibility, and the performance of Naïve Bayes models for classifying Tweets when used on data from a different region than the one used to train the model. Our results show similar geographic granularity for Myanmar and Italy earthquake events, but the Myanmar earthquake event has less information from locations nearby when compared to Italy. Additionally, there are significant and complex differences in user and usage characteristics, but a high performance for the Naïve Bayes classifier even when applied to data from a different geographic region. This research provides a basis for further research in credibility assessment of users reporting about disasters
- Published
- 2017
15. Geographic variability of Twitter usage characteristics during disaster events
- Author
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Frank O. Ostermann, Ross S. Purves, Kiran Zahra, University of Zurich, and Zahra, Kiran
- Subjects
Volunteered geographic information ,Microblogging ,Computer science ,Geography, Planning and Development ,Transferability ,Twitter ,lcsh:Geodesy ,Geographic variation ,02 engineering and technology ,credibility ,World Wide Web ,Naive Bayes classifier ,3305 Geography, Planning and Development ,020204 information systems ,Credibility ,0202 electrical engineering, electronic engineering, information engineering ,Social media ,910 Geography & travel ,Computers in Earth Sciences ,Reliability (statistics) ,Geonames ,lcsh:QB275-343 ,User profile ,Geographic feature granularity ,1903 Computers in Earth Sciences ,lcsh:Mathematical geography. Cartography ,Naïve Bayes ,10122 Institute of Geography ,020201 artificial intelligence & image processing ,Volunteered Geographic Information (VGI) ,lcsh:GA1-1776 - Abstract
Twitter is a well-known microblogging platform for rapid diffusion of views, ideas, and information. During disasters, it has widely been used to communicate evacuation plans, distribute calls for help, and assist in damage assessment. The reliability of such information is very important for decision-making in a crisis situation, but also difficult to assess. There is little research so far on the transferability of quality assessment methods from one geographic region to another. The main contribution of this research is to study Twitter usage characteristics of users based in different geographic locations during disasters. We examine tweeting activity during two earthquakes in Italy and Myanmar. We compare the granularity of geographic references used, user profile characteristics that are related to credibility, and the performance of Naïve Bayes models for classifying Tweets when used on data from a different region than the one used to train the model. Our results show similar geographic granularity for Myanmar and Italy earthquake events, but the Myanmar earthquake event has less information from locations nearby when compared to Italy. Additionally, there are significant and complex differences in user and usage characteristics, but a high performance for the Naïve Bayes classifier even when applied to data from a different geographic region. This research provides a basis for further research in credibility assessment of users reporting about disasters
- Published
- 2017
16. Automatic identification of eyewitness messages on twitter during disasters
- Author
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Kiran Zahra, Muhammad Imran, Frank O. Ostermann, University of Zurich, Zahra, Kiran, Department of Geo-information Processing, UT-I-ITC-STAMP, and Faculty of Geo-Information Science and Earth Observation
- Subjects
Situation awareness ,Computer science ,media_common.quotation_subject ,Internet privacy ,0211 other engineering and technologies ,Eyewitness identification ,02 engineering and technology ,Library and Information Sciences ,Management Science and Operations Research ,1710 Information Systems ,Social media ,020204 information systems ,Perception ,Machine learning ,1706 Computer Science Applications ,0202 electrical engineering, electronic engineering, information engineering ,Media Technology ,Information system ,910 Geography & travel ,Disaster response ,media_common ,021110 strategic, defence & security studies ,business.industry ,Law enforcement ,1803 Management Science and Operations Research ,Computer Science Applications ,2214 Media Technology ,Identification (information) ,10122 Institute of Geography ,Feeling ,ITC-ISI-JOURNAL-ARTICLE ,3309 Library and Information Sciences ,business ,Information Systems - Abstract
Social media platforms such as Twitter provide convenient ways to share and consume important information during disasters and emergencies. Information from bystanders and eyewitnesses can be useful for law enforcement agencies and humanitarian organizations to get firsthand and credible information about an ongoing situation to gain situational awareness among other potential uses. However, the identification of eyewitness reports on Twitter is a challenging task. This work investigates different types of sources on tweets related to eyewitnesses and classifies them into three types (i) direct eyewitnesses, (ii) indirect eyewitnesses, and (iii) vulnerable eyewitnesses. Moreover, we investigate various characteristics associated with each kind of eyewitness type. We observe that words related to perceptual senses (feeling, seeing, hearing) tend to be present in direct eyewitness messages, whereas emotions, thoughts, and prayers are more common in indirect witnesses. We use these characteristics and labeled data to train several machine learning classifiers. Our results performed on several real-world Twitter datasets reveal that textual features (bag-of-words) when combined with domain-expert features achieve better classification performance. Our approach contributes a successful example for combining crowdsourced and machine learning analysis, and increases our understanding and capability of identifying valuable eyewitness reports during disasters.
- Published
- 2020
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