2,239 research outputs found

    Crowdsourcing for Speech: Economic, Legal and Ethical analysis

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    With respect to spoken language resource production, Crowdsourcing - the process of distributing tasks to an open, unspecified population via the internet - offers a wide range of opportunities: populations with specific skills are potentially instantaneously accessible somewhere on the globe for any spoken language. As is the case for most newly introduced high-tech services, crowdsourcing raises both hopes and doubts, certainties and questions. A general analysis of Crowdsourcing for Speech processing could be found in (Eskenazi et al., 2013). This article will focus on ethical, legal and economic issues of crowdsourcing in general (Zittrain, 2008a) and of crowdsourcing services such as Amazon Mechanical Turk (Fort et al., 2011; Adda et al., 2011), a major platform for multilingual language resources (LR) production

    Crowdsourcing for Language Resource Development: Criticisms About Amazon Mechanical Turk Overpowering Use

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    International audienceThis article is a position paper about Amazon Mechanical Turk, the use of which has been steadily growing in language processing in the past few years. According to the mainstream opinion expressed in articles of the domain, this type of on-line working platforms allows to develop quickly all sorts of quality language resources, at a very low price, by people doing that as a hobby. We shall demonstrate here that the situation is far from being that ideal. Our goal here is manifold: 1- to inform researchers, so that they can make their own choices, 2- to develop alternatives with the help of funding agencies and scientific associations, 3- to propose practical and organizational solutions in order to improve language resources development, while limiting the risks of ethical and legal issues without letting go price or quality, 4- to introduce an Ethics and Big Data Charter for the documentation of language resourc

    Machine-assisted translation by Human-in-the-loop Crowdsourcing for Bambara

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    Language is more than a tool of conveying information; it is utilized in all aspects of our lives. Yet only a small number of languages in the 7,000 languages worldwide are highly resourced by human language technologies (HLT). Despite African languages representing over 2,000 languages, only a few African languages are highly resourced, for which there exists a considerable amount of parallel digital data. We present a novel approach to machine translation (MT) for under-resourced languages by improving the quality of the model using a paradigm called ``humans in the Loop.\u27\u27 This thesis describes the work carried out to create a Bambara-French MT system including data discovery, data preparation, model hyper-parameter tuning, the development of a crowdsourcing platform for humans in the loop, vocabulary sizing, and segmentation. We present a novel approach to machine translation (MT) for under-resourced languages by improving the quality of the model using a paradigm called ``humans in the Loop.\u27\u27 We achieved a BLEU (bilingual evaluation understudy) score of 17.5. The results confirm that MT for Bambara, despite our small data set, is viable. This work has the potential to contribute to the reduction of language barriers between the people of Sub-Saharan Africa and the rest of the world

    Annotated Speech Corpus for Low Resource Indian Languages: Awadhi, Bhojpuri, Braj and Magahi

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    In this paper we discuss an in-progress work on the development of a speech corpus for four low-resource Indo-Aryan languages -- Awadhi, Bhojpuri, Braj and Magahi using the field methods of linguistic data collection. The total size of the corpus currently stands at approximately 18 hours (approx. 4-5 hours each language) and it is transcribed and annotated with grammatical information such as part-of-speech tags, morphological features and Universal dependency relationships. We discuss our methodology for data collection in these languages, most of which was done in the middle of the COVID-19 pandemic, with one of the aims being to generate some additional income for low-income groups speaking these languages. In the paper, we also discuss the results of the baseline experiments for automatic speech recognition system in these languages.Comment: Speech for Social Good Workshop, 2022, Interspeech 202

    Vistaar: Diverse Benchmarks and Training Sets for Indian Language ASR

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    Improving ASR systems is necessary to make new LLM-based use-cases accessible to people across the globe. In this paper, we focus on Indian languages, and make the case that diverse benchmarks are required to evaluate and improve ASR systems for Indian languages. To address this, we collate Vistaar as a set of 59 benchmarks across various language and domain combinations, on which we evaluate 3 publicly available ASR systems and 2 commercial systems. We also train IndicWhisper models by fine-tuning the Whisper models on publicly available training datasets across 12 Indian languages totalling to 10.7K hours. We show that IndicWhisper significantly improves on considered ASR systems on the Vistaar benchmark. Indeed, IndicWhisper has the lowest WER in 39 out of the 59 benchmarks, with an average reduction of 4.1 WER. We open-source all datasets, code and models.Comment: Accepted in INTERSPEECH 202

    Computational Sociolinguistics: A Survey

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    Language is a social phenomenon and variation is inherent to its social nature. Recently, there has been a surge of interest within the computational linguistics (CL) community in the social dimension of language. In this article we present a survey of the emerging field of "Computational Sociolinguistics" that reflects this increased interest. We aim to provide a comprehensive overview of CL research on sociolinguistic themes, featuring topics such as the relation between language and social identity, language use in social interaction and multilingual communication. Moreover, we demonstrate the potential for synergy between the research communities involved, by showing how the large-scale data-driven methods that are widely used in CL can complement existing sociolinguistic studies, and how sociolinguistics can inform and challenge the methods and assumptions employed in CL studies. We hope to convey the possible benefits of a closer collaboration between the two communities and conclude with a discussion of open challenges.Comment: To appear in Computational Linguistics. Accepted for publication: 18th February, 201

    From Compute to Data: Across-the-Stack System Design for Intelligent Applications

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    Intelligent applications such as Apple Siri, Google Assistant and Amazon Alexa have gained tremendous popularity in recent years. With human-like understanding capabilities and natural language interface, this class of applications is quickly becoming people’s preferred way of interacting with their mobile, wearable and smart home devices. There have been considerable advancement in machine learning research that aim to further enhance the understanding capability of intelligent applications, however there exist significant roadblocks in applying state-of-the-art algorithms and techniques to a real-world use case. First, as machine learning algorithms becomes more sophisticated, it imposes higher computation requirements for the underlying software and hardware system to process intelligent application request efficiently. Second, state-of-the-art algorithms and techniques is not guaranteed to provide the same level of prediction and classification accuracy when applied to tasks required in real-world intelligent applications, which are often different and more complex than what are studied in a research environment. This dissertation addresses these roadblocks by investigating the key challenges across multiple components in an intelligent application system. Specifically, we identify the key compute and data challenges and presents system design and techniques. To improve the computational performance of the hardware and software system, we challenge the status-quo approach of cloud-only intelligent application processing and propose computation partitioning strategies that effectively leverage both the cycles in the cloud and on the mobile device to achieve low latency, low energy consumption and high datacenter throughput. We characterize and taxonomize state-of-the- art deep learning based natural language processing (NLP) applications to identify the algorithmic design elements and computational patterns that render conventional GPU acceleration techniques ineffective on this class of applications. Leveraging their unique characteristics, we design and implement a novel fine-grain cross-input batching techniques for providing GPU acceleration to a number of state-of-the-art NLP applications. For the data component, large scale and effective training data, in addition to algorithm, is necessary to achieve high prediction accuracy. We investigate the challenge of effective large-scale training data collection via crowdsourcing. We propose novel metrics to evaluate the quality of training data for building real-word intelligent application systems. We leverage this methodology to study the trade-off of multiple crowdsourcing methods and provide recommendations on best training data crowdsourcing practices.PHDComputer Science & EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttps://deepblue.lib.umich.edu/bitstream/2027.42/145886/1/ypkang_1.pd
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