Search Results for author: Mark Anderson

Found 23 papers, 2 papers with code

Neural Text Sanitization with Privacy Risk Indicators: An Empirical Analysis

no code implementations22 Oct 2023 Anthi Papadopoulou, Pierre Lison, Mark Anderson, Lilja Øvrelid, Ildikó Pilán

The text sanitization process starts with a privacy-oriented entity recognizer that seeks to determine the text spans expressing identifiable personal information.

Language Modelling named-entity-recognition +2

Learnable Frontends that do not Learn: Quantifying Sensitivity to Filterbank Initialisation

no code implementations20 Feb 2023 Mark Anderson, Tomi Kinnunen, Naomi Harte

We show that although performance is overall improved, the filterbanks exhibit strong sensitivity to their initialisation strategy.

Action Detection Activity Detection

Parsing linearizations appreciate PoS tags - but some are fussy about errors

no code implementations27 Oct 2022 Alberto Muñoz-Ortiz, Mark Anderson, David Vilares, Carlos Gómez-Rodríguez

PoS tags, once taken for granted as a useful resource for syntactic parsing, have become more situational with the popularization of deep learning.

POS

Learnable Acoustic Frontends in Bird Activity Detection

no code implementations3 Oct 2022 Mark Anderson, Naomi Harte

Combining this data with species agnostic bird activity detection systems enables the monitoring of activity levels of bird populations.

Action Detection Activity Detection +1

The Impact of Edge Displacement Vaserstein Distance on UD Parsing Performance

1 code implementation CL (ACL) 2022 Mark Anderson, Carlos Gómez-Rodríguez

We contribute to the discussion on parsing performance in NLP by introducing a measurement that evaluates the differences between the distributions of edge displacement (the directed distance of edges) seen in training and test data.

Assessing the Limits of the Distributional Hypothesis in Semantic Spaces: Trait-based Relational Knowledge and the Impact of Co-occurrences

1 code implementation *SEM (NAACL) 2022 Mark Anderson, Jose Camacho-Collados

The increase in performance in NLP due to the prevalence of distributional models and deep learning has brought with it a reciprocal decrease in interpretability.

Bioacoustic Event Detection with prototypical networks and data augmentation

no code implementations16 Dec 2021 Mark Anderson, Naomi Harte

This report presents deep learning and data augmentation techniques used by a system entered into the Few-Shot Bioacoustic Event Detection for the DCASE2021 Challenge.

Data Augmentation Event Detection +1

Low Resource Species Agnostic Bird Activity Detection

no code implementations16 Dec 2021 Mark Anderson, John Kennedy, Naomi Harte

This paper explores low resource classifiers and features for the detection of bird activity, suitable for embedded Automatic Recording Units which are typically deployed for long term remote monitoring of bird populations.

Action Detection Activity Detection

Replicating and Extending ``Because Their Treebanks Leak'': Graph Isomorphism, Covariants, and Parser Performance

no code implementations ACL 2021 Mark Anderson, Anders S{\o}gaard, Carlos G{\'o}mez-Rodr{\'\i}guez

S{\o}gaard (2020) obtained results suggesting the fraction of trees occurring in the test data isomorphic to trees in the training set accounts for a non-trivial variation in parser performance.

Splitting EUD graphs into trees: A quick and clatty approach

no code implementations ACL (IWPT) 2021 Mark Anderson, Carlos Gómez-Rodríguez

We present the system submission from the FASTPARSE team for the EUD Shared Task at IWPT 2021.

A Falta de Pan, Buenas Son Tortas: The Efficacy of Predicted UPOS Tags for Low Resource UD Parsing

no code implementations ACL (IWPT) 2021 Mark Anderson, Mathieu Dehouck, Carlos Gómez Rodríguez

We evaluate the efficacy of predicted UPOS tags as input features for dependency parsers in lower resource settings to evaluate how treebank size affects the impact tagging accuracy has on parsing performance.

A Modest Pareto Optimisation Analysis of Dependency Parsers in 2021

no code implementations ACL (IWPT) 2021 Mark Anderson, Carlos Gómez Rodríguez

We evaluate three leading dependency parser systems from different paradigms on a small yet diverse subset of languages in terms of their accuracy-efficiency Pareto front.

John praised Mary because he? Implicit Causality Bias and Its Interaction with Explicit Cues in LMs

no code implementations2 Jun 2021 Yova Kementchedjhieva, Mark Anderson, Anders Søgaard

We hypothesize that the temporary challenge humans face in integrating the two contradicting signals, one from the lexical semantics of the verb, one from the sentence-level semantics, would be reflected in higher error rates for models on tasks dependent on causal links.

Attribute Sentence

Replicating and Extending "Because Their Treebanks Leak": Graph Isomorphism, Covariants, and Parser Performance

no code implementations1 Jun 2021 Mark Anderson, Anders Søgaard, Carlos Gómez Rodríguez

S{\o}gaard (2020) obtained results suggesting the fraction of trees occurring in the test data isomorphic to trees in the training set accounts for a non-trivial variation in parser performance.

What Taggers Fail to Learn, Parsers Need the Most

no code implementations NoDaLiDa 2021 Mark Anderson, Carlos Gómez-Rodríguez

We present an error analysis of neural UPOS taggers to evaluate why using gold standard tags has such a large positive contribution to parsing performance while using predicted UPOS tags either harms performance or offers a negligible improvement.

Near-unity broadband omnidirectional emissivity via femtosecond laser surface processing

no code implementations8 Dec 2020 Andrew Reicks, Alfred Tsubaki, Mark Anderson, Jace Wieseler, Larousse Khosravi Khorashad, Jeffrey E. Shield, George Gogos, Dennis Alexander, Christos Argyropoulos, Craig Zuhlke

It is very challenging to achieve near perfect absorption/emission that is both broadband and omnidirectional while utilizing a scalable fabrication process.

Optics

Distilling Neural Networks for Greener and Faster Dependency Parsing

no code implementations WS 2020 Mark Anderson, Carlos Gómez-Rodríguez

The carbon footprint of natural language processing research has been increasing in recent years due to its reliance on large and inefficient neural network implementations.

Dependency Parsing

Efficient EUD Parsing

no code implementations WS 2020 Mathieu Dehouck, Mark Anderson, Carlos Gómez-Rodríguez

We present the system submission from the FASTPARSE team for the EUD Shared Task at IWPT 2020.

Inherent Dependency Displacement Bias of Transition-Based Algorithms

no code implementations LREC 2020 Mark Anderson, Carlos Gómez-Rodríguez

Empirical studies have shown that performance varies across different treebanks in such a way that one algorithm outperforms another on one treebank and the reverse is true for a different treebank.

Sentence

Artificially Evolved Chunks for Morphosyntactic Analysis

no code implementations WS 2019 Mark Anderson, David Vilares, Carlos Gómez-Rodríguez

We introduce a language-agnostic evolutionary technique for automatically extracting chunks from dependency treebanks.

Chunking Dependency Parsing +2

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