About
I am data scientist specializing in mechanical reliability, natural language processing…
Activity
543 followers
Experience
Education
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Rice University
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Publications
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A Bayesian nonparametric approach for the analysis of multiple categorical item responses
Journal of Statistical Planning and Inference
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BayesRank: A bayesian approach to ranked peer grading
Proceedings of the Second (2015) ACM Conference on Learning@ Scale
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Mathematical language processing: Automatic grading and feedback for open response mathematical questions
Proceedings of the Second (2015) ACM Conference on Learning@ Scale
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Collaboration-type identification in educational datasets
Journal of Educational Data Mining (JEDM)
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Sparse factor analysis for learning and content analytics
Journal of Machine Learning Research (JMLR)
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Bayesian pairwise collaboration detection in educational datasetsI
IEEE Global Conference on Signal and Information Processing
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Learning analytics via sparse factor analysis
Personalizing education with machine learning, NeurIPS workshop
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SpaRCS: Recovering low-rank and sparse matrices from compressive measurements
Advances in neural information processing systems
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Distributed bearing estimation via matrix completion
IEEE International Conference on Acoustics, Speech and Signal Processing
Patents
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Sparse factor analysis for analysis of user content preferences
Issued US 9,704,102
See patentA mechanism for discerning user preferences for categories of provided content. A computer receives response data including a set of preference values that have been assigned to content items by content users. Output data is computed based on the response data using a latent factor model. The output data includes at least: an association matrix that defines K concepts associated with the content items, wherein K is smaller than the number of the content items, wherein, for each of the K…
A mechanism for discerning user preferences for categories of provided content. A computer receives response data including a set of preference values that have been assigned to content items by content users. Output data is computed based on the response data using a latent factor model. The output data includes at least: an association matrix that defines K concepts associated with the content items, wherein K is smaller than the number of the content items, wherein, for each of the K concepts, the association matrix defines the concept by specifying strengths of association between the concept and the content items; and a concept-preference matrix including, for each content user and each of the K concepts, an extent to which the content user prefers the concept. The computer may display a visual representation of the association strengths in the association matrix and/or the extents in the concept-preference matrix.
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Compressive sense based reconstruction in the presence of frequency offset
Issued US 8547258
See patentA calibration method to compensate for a sparsifying basis mismatch is provided. An analog signal is converted to a first digital signal at a sampling frequency that is less than a Nyquist frequency for the analog signal to generate a first digital signal. Each of a plurality of spectral terms is iteratively isolated from the first digital signal, and the offset for each of the plurality of spectral terms is iteratively determined. A dictionary is then constructed using the offset for each of…
A calibration method to compensate for a sparsifying basis mismatch is provided. An analog signal is converted to a first digital signal at a sampling frequency that is less than a Nyquist frequency for the analog signal to generate a first digital signal. Each of a plurality of spectral terms is iteratively isolated from the first digital signal, and the offset for each of the plurality of spectral terms is iteratively determined. A dictionary is then constructed using the offset for each of the plurality of spectral terms, where the dictionary compensates for mismatch from a sparsifying basis.
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Compressive sense based reconstruction algorithm for non-uniform sampling based data converter
Issued US 8547260
See patentCompressive sensing is an emerging field that attempts to prevent the losses associated with data compression and improve efficiency overall, and compressive sensing looks to perform the compression before or during capture, before energy is wasted. Here, a reconstruction algorithm is proposed for a compressive sensing successive approximation register (SAR) analog-to-digital converter (ADC). Accordingly, an analog signal is converted to a first digital signal at a sampling frequency that is…
Compressive sensing is an emerging field that attempts to prevent the losses associated with data compression and improve efficiency overall, and compressive sensing looks to perform the compression before or during capture, before energy is wasted. Here, a reconstruction algorithm is proposed for a compressive sensing successive approximation register (SAR) analog-to-digital converter (ADC). Accordingly, an analog signal is converted to a first digital signal at a sampling frequency that is less than a Nyquist frequency for the analog signal, and a second digital signal is constructed from the first digital signal with a box constrained linear optimization process such that the second digital signal is approximately equal to an analog-to-digital conversion of the analog signal at the Nyquist frequency for the analog signal.
Languages
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Spanish
Native or bilingual proficiency
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English
Native or bilingual proficiency
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Portuguese
Professional working proficiency
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