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| "date_generated": "2023-01-19T13:27:46.634401Z" |
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| "title": "Investigating non lexical markers of the language of schizophrenia in spontaneous conversations", |
| "authors": [ |
| { |
| "first": "Chuyuan", |
| "middle": [], |
| "last": "Li", |
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| "institution": "CNRS", |
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| "postCode": "F-54000", |
| "settlement": "Nancy", |
| "region": "Inria, LORIA", |
| "country": "France" |
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| "email": "" |
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| { |
| "first": "Maxime", |
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| "last": "Amblard", |
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| "region": "Inria, LORIA", |
| "country": "France" |
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| "email": "" |
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| { |
| "first": "Chlo\u00e9", |
| "middle": [], |
| "last": "Braud", |
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| "laboratory": "IRIT", |
| "institution": "ANITI", |
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| "settlement": "Toulouse", |
| "country": "France" |
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| "email": "2chloe.braud@irit.fr" |
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| { |
| "first": "Caroline", |
| "middle": [], |
| "last": "Demily", |
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| "affiliation": { |
| "laboratory": "UMR 5229", |
| "institution": "Univerist\u00e9", |
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| "addrLine": "Lyon 1", |
| "settlement": "Lyon", |
| "country": "France" |
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| { |
| "first": "Nicolas", |
| "middle": [], |
| "last": "Franck", |
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| "first": "Michel", |
| "middle": [], |
| "last": "Musiol", |
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| "country": "France" |
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| "abstract": "We investigate linguistic markers associated with schizophrenia in clinical conversations by detecting predictive features among Frenchspeaking patients. Dealing with humanhuman dialogues makes for a realistic situation, but it calls for strategies to represent the context and face data sparsity. We compare different approaches for data representation-from individual speech turns to entire conversations-, and data modeling, using lexical, morphological, syntactic, and discourse features, dimensions presumed to be tightly connected to the language of schizophrenia. Previous English models were mostly lexical and reached high performance, here replicated (93.7% acc.). However, our analysis reveals that these models are heavily biased, which probably concerns most datasets on this task. Our new delexicalized models are more general and robust, with the best accuracy score at 77.9%.", |
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| "text": "We investigate linguistic markers associated with schizophrenia in clinical conversations by detecting predictive features among Frenchspeaking patients. Dealing with humanhuman dialogues makes for a realistic situation, but it calls for strategies to represent the context and face data sparsity. We compare different approaches for data representation-from individual speech turns to entire conversations-, and data modeling, using lexical, morphological, syntactic, and discourse features, dimensions presumed to be tightly connected to the language of schizophrenia. Previous English models were mostly lexical and reached high performance, here replicated (93.7% acc.). However, our analysis reveals that these models are heavily biased, which probably concerns most datasets on this task. Our new delexicalized models are more general and robust, with the best accuracy score at 77.9%.", |
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| "text": "Schizophrenia is defined as a severe mental illness (APA, 2015) that comes with varied symptoms, ranging from delirium to hallucinations. Among these symptoms, there are language disorders, especially the so-called positive thought disorder (i.e., disorganized language output such as derailment and tangentiality) 1 and negative thought disorder 2 (Kuperberg, 2010). Schizophrenia affects about 1% of the world's adult population, with cognitive troubles for 70-80% of the patients (Potvin et al., 2017) . Since the symptoms often affect language skills, several studies proposed using NLP techniques on patients' productions (Section 2) to identify what is affected in language, thus understand better the 1 Derailment: spontaneous speech that tends to slip off track. Tangentiality: reply to a question in an oblique or irrelevant manner.", |
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| "text": "(Potvin et al., 2017)", |
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| "section": "Introduction", |
| "sec_num": "1" |
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| "text": "2 Negative thought disorder are those of poverty of speech and language (known as alogia) and poverty of content. disease and its symptoms and how language works in general.", |
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| "section": "Introduction", |
| "sec_num": "1" |
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| "text": "In this paper, we explore linguistic markers of schizophrenia through feature exploration within a classification system. We do so on spontaneous dialogues in French where all the previous work was in English and most used social media data or monologues. Replicating state-of-the-art results allows us to confirm some previous findings of specific features of the language of schizophrenia.", |
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| "section": "Introduction", |
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| "text": "Our study focuses on two aspects: carefully exploring data representations and investigating preliminary modeling of dialogues, both with scarce data. Using spontaneous conversations makes for a realistic scenario -the patient is merely talking with her clinician. However, representing dialogues is not easy: we restrict ourselves to patients' speech turns, and test varied context windows to tackle data sparsity. Additionally, we compare several representations and confirm that lexicon is a good indicator, making for high-performing models with at best 93.7% (acc.). Nevertheless, our analysis demonstrates that it probably corresponds to a bias in our data caused by the constraints imposed during the collection process. Most of the datasets are likely biased the same way. This analysis led us to delexicalized models while focusing on dimensions presumed to be affected in schizophrenia: morphosyntactic, syntactic, dialogue, and discourse information are therefore considered. Our best delexicalized model gets 77.9% (acc.) and shows the importance of morpho-syntactic information and high-level features in dialogue.", |
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| "section": "Introduction", |
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| "text": "When dealing with medical data, ethical questions arise. The diagnosis of schizophrenia is complex and relies on many indices. Automatic systems could provide psychiatrists with further clues, possibly alleviating the need for the patients to go through several cognitive tests, but this is a longreach goal. It is clear that the systems developed can not substitute for a human expert, as a diagnosis is a medical act. Moreover, linguistic clues, while crucial, have to be interpreted within the patient's social environment.", |
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| "section": "Introduction", |
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| "text": "Contributions This study: (i) is the first in French, replicating English studies with comparable results with less data and resources; (ii) continues seminal work on schizophrenia detection in dialogues but with a focus on modeling and bias -two crucial issues for a task inherently data-scarce; (iii) reveals language features of schizophrenia, confirming psychologists' descriptions on the use of complex structures or the capacity to maintain conversation. 3", |
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| "text": "Psychiatrists rely on language and speech behavior as one of the main clues in psychiatric diagnosis (Ratana et al., 2019) . They found that these patients' speech tends to be less predictable (Salzinger et al., 1964 (Salzinger et al., , 1970 Salzinger, 1979) , with a poorer vocabulary (Salzinger and Hammer, 1963; Manschreck et al., 1991) . It has also been found that their productions tend to be more grammatically deviant (Hoffman and Sledge, 1988) and less syntactically complex than that of controls (Fraser et al., 1986; Morice and Ingram, 1982) . At the discourse level, they associate words within a larger context than controls (Maher et al., 2005) with often more diffuse associations (Chaika, 1974; Elvev\u00e5g et al., 2007) . They also present referential impairments -categorized as vagueness, missing information, or confusing reference (Rochester, 2013; Docherty et al., 1996) -, and specific discontinuities at the discourse level (Musiol and Trognon, 2000; Rebuschi et al., 2014) .", |
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| "text": "On the other hand, many researchers have used NLP methods to help to identify mental disorders, such as depression (Howes et al., 2014; Guntuku et al., 2019; Sekuli\u0107 and Strube, 2019) , posttraumatic stress disorder (Pedersen, 2015; Kleim et al., 2018) , suicide risk (Benton et al., 2017 ), Alzheimer's disease (Orimaye et al., 2014; Fraser et al., 2016) , and autism (Goodkind et al., 2018; Sakishita et al., 2019) .", |
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| "text": "For schizophrenia, previous work has mainly focused on lexical information (Mitchell et al., 2015; Hong et al., 2012; Birnbaum et al., 2017; Xu et al., 2019) . Unlike ours, these studies rely on Linguistic Inquiry Word Count (LIWC) cate-gories (Pennebaker et al., 2001 ) -psycho-metrically validated lexicon mapping words to psychological concepts), Latent Dirichlet Allocation (LDA) (Blei et al., 2003) -inferring topics in each document, and Brown clustering (Brown et al., 1992) -grouping contextually similar words into the same cluster. However, most of these resources are only available in English.", |
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| "text": "More recent approaches considered syntactic, semantic, and sentiment information (Kayi et al., 2017; Allende-Cid et al., 2019) . Both studies show good performance with morpho-syntactic features, especially with Part-Of-Speech (POS) tags. 4 They were based on narrative texts (essays and tweets). We here demonstrate that some findings can generalize to spontaneous conversations. Amblard et al. (2020) proposed the first study on detecting schizophrenia patients from conversations, mostly limited to lexical features. Also, close to our work, Howes et al. (2012a Howes et al. ( ,b, 2013 investigated linguistic features in transcripts of conversations between patients and clinicians. The authors tried to predict patient satisfaction and adherence to treatment on the concatenation of speech turns of the patient. Inspired by the work of Howes et al. 2012b, we also use higher-level features (see Section 3) on real conversations but directly investigating a model of detecting patients with schizophrenia symptoms. Furthermore, we extend previous work by varying the length of dialogues and testing more complex features, including sequences of POS tags, finer tree representations, and dialogical information.", |
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| "text": "Varying dialogue size: Our data are composed of 41 dialogues with 2, 811 words, and 268 speech turns on average (when limited to patients/controls). The clinician's speech turns are ignored in all dialogues to reduce their impact on classification, but further studies should also include the interaction. First, we concatenate all the speech turns of a patient/control (Full setting), thus making for a large document that contains the whole context. Since the documents are long, it could be hard for the system to find regularities, especially with only a few classification instances (i.e., 41). The opposite #Doc. #Speech T./doc. #Word/doc. option is to classify each speech turn individually (Indiv.): this leads to more instances (10, 319), but we lose the context of the neighboring speech turns. Moreover, the speech turns are of varied length with an average of 11 words; some of them contain too few words to be informative. The last option is in between: we use a window of at least n words (W-n), always going until the end of the current speech turn, to assess the possibility of identifying distinctive features already in smaller blocks of conversation. We test n \u2208 {128, 256, 512}, providing with middle representations (see Table 1 ). The number of instances is (resp.) 893, 443, and 209, with an average number of speech turns 11, 20, and 42. This configuration allows keeping some context without overwhelming the model.", |
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| "text": "Comparing representations: Existing work on schizophrenia language demonstrated the importance of lexical features. For French, as for many languages, we do not have access to a resource such as LIWC. We thus propose to simply include bag-of-words (bow) and n-grams (n \u2208 {2, 3}) to our models as a proxy for topic identification. Howes et al. (2012b) showed the importance of features specific to spontaneous dialogues that do involve lexicon but in a more generic way: OCR corresponds to Open Class Repair initiators (pardon?, huh?); Backchannel (BC) responses are phatic expressions (yeah, hum mm). To reflect text organization, we also include discourse features by extracting the forms (without disambiguation) corresponding to connectives (but, because, since) as identified in LexConn (Roze et al., 2012) .", |
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| "text": "Finally, we test the two following non-lexical features: Part-Of-Speech n-grams and treelets. Allende-Cid et al. (2019) demonstrated that POS tags are effective features. We also test for larger patterns with sequences, POS n-gram with n \u2208 {1, 2, 3}. Kayi et al. (2017) only used the dependencies as syntactic features. We extend to treelet features (Johannsen et al., 2015) pendency parse trees: 2-treelet corresponds to 2 tokens with a syntactic relation between a head and a dependent, e.g., 'VERB\u2192nsubj\u2192NOUN', and 3-treelet corresponds to 3 tokens with 2 syntactic relations: could be 1 head dominates 2 dependents or a chain of dependencies, e.g., 'PRON\u2190poss\u2190NOUN\u2190nsubj\u2190VERB'. See Figure 1 for an illustration.", |
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| "text": "Data: Forty-one conversations between patients (18) or controls (23) and a psychologist come from SLAM project (Rebuschi et al., 2014; Amblard et al., 2015) . The transcripts are standardized and follow a transcription guide. The groups are balanced with gender, age, intelligence quotient (IQ) score, years of studies, and three cognitive tests' results (WAIS-III, TMT, CVLT) 5 . They are free exchanges carried out in a medical setting where the psychologist is not personally involved -her main action is to maintain the exchange. Preliminary experiments showed that we could distinguish the two groups with relatively high accuracy with the clinician's data. We thus removed clinician's speech turns to reduce this impact and only focused on patients' factors. Further studies are needed to decide how to take into account the entire interaction.", |
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| "text": "Classification: We compare several classification algorithms: Support Vector Machines (SVM) (Cortes and Vapnik, 1995) , Logistic Regression (LR), Random Forest (RF), Perceptron (Perc), and Naive Bayes (NB), without and with feature selection based on importance weight, all implemented in Scikit-Learn (Pedregosa et al., 2011) . Hyperparameters are:", |
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| "text": "\u2022 Naive Bayes: smoothing \u03b1 \u2208 V = {0.001, 0.005, 0.01, 0.1, 0.5, 1, 5, 10, 100}; \u2022 Logistic Regression: L 2 and regularization C \u2208 V ;", |
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| "text": "\u2022 SVM with linear kernel: L 2 and regularization C \u2208 V \u222a {1000};", |
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| "text": "\u2022 Perceptron: L 2 and \u03b1 \u2208 V ;", |
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| "text": "\u2022 Random Forest: max_depth \u2208 {2, N one};", |
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| "text": "Thresholds for feature selection are the range of 10 values equally distributed from 1e \u2212 5 to the weight of the 50 th most important feature (thus allowing to keep at least 50 features), plus the mean and median of the weights.", |
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| "text": "Since our dataset is minimal, we use nested cross-validation to assess the performance of our system: tune hyper-parameters on K \u2212 1 folds and then evaluate on the left-out fold, repeating the whole process M times (K = M = 5). We report average accuracy over the M out folds. Best hyper-parameters values and algorithms are given in Appendix A.2.", |
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| "text": "Lexical features: We compare different representations for Full and Indiv. settings -the most similar to long narrative texts or short Twitter messages. As in previous work, we found that lexical information is very effective (Table 2: bow and ngram) with at best 93.66% in accuracy. However, analysis from previous studies suggested a potential issue: Mitchell et al. (2015) reported that healthrelated lexicon is more represented in the tweets dataset, and Howes et al. (2012b) that the most predictive unigrams are about conditions, treatment and, medication. We investigate our data using Spearman correlation 6 to rank lexical features and find similar results: terms linked to the condition are in top ranks for schizophrenia ( are correlated with controls. This finding is due to the nature of our data: patients talk about their disease with a clinician, and controls talk more about their everyday life. These features perform well because they reflect a lexical bias in data collection. However, the models will not be usable in the wild. Dialogue and discourse: Figure 2 presents results on selected subsets of non-or less-lexicalized features for the five splits of our data. Horizontal lines correspond to the majority vote baselines.", |
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| "text": "Howes et al. (2012b)", |
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| "text": "Concerning dialogue features, OCR gives poor results mostly behind the baseline, while BC is above with 74.48% (Full). Moreover, combining with BC to another feature set almost consistently allows improvements (not the case with OCR). These features are good indicators, contrary to what was reported in (Howes et al., 2012b) . Note that we directly use the tokens as features rather than the proportion of BC per word, which allows more refined analysis. The most informative features for controls are phatic expressions (ah, ok, humhum, vraiment [really] POS tags and syntax: Sequences of POS tags (2-POS and 3-POS) and of treelet (2-treelet and 3treelet) are fully non-lexicalized features. They capture some internal structure of the interaction. We obtain our best scores with the longest sequences (3-POS, 72.55% acc., 74.34% F 1 ). These scores are higher than the ones reported by Kayi et al. (2017) on tweets (69.20% F 1 ) or essays (69.76% F 1 ) with simple POS tags and a lot more documents, and are very close to Allende-Cid et al. (2019) with meta-POS (75.1% in F 1 ): this confirms the predictive power of POS for the task.", |
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| "start": 304, |
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| "start": 522, |
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| "text": "(ah, ok, humhum, vraiment [really]", |
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| "text": "We found that patients with schizophrenia used more verbs than controls (e.g., 2-POS such as VERB-ADP 7 , 3-POS such as PRON-AUX-VERB), and, as in (Kayi et al., 2017), a higher proportion of adverbs. Precisely, we observe that the usage of adverbs of time (parfois [sometimes], plus maintenant [not anymore], quasiment jamais [almost never]), of place (ici d\u00e9j\u00e0 [here already]) and of frequency and manner (beaucoup plus [much more], beaucoup mieux [much better]) is higher than that of controls -this is possibly linked to the exchange about their (current) heath condition. On the other hand, controls employ a higher portion of linking adverbs (enfin [finally], donc [so], quand m\u00eame [anyway]).", |
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| "text": "Syntactic features confirm these observations, the most predictive being verbal structures, followed by adverbial modifiers (advmod, advcl) 8 . This goes along with (Kayi et al., 2017) , in which the top parse tag is advmod, and confirms clinician's descriptions on the use of less complex syntactic structures for patients with schizophrenia. Controls tend to use more complicated syntactic structures, such as those with SCONJ (subordinating conjunction) and CCONJ (coordinating conjunction), confirmed by our analysis of discourse connectives.", |
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| "start": 165, |
| "end": 184, |
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| "text": "Context window size: Our experiments were also designed to test the impact of the context when dealing with dialogues. Figure 2 demonstrates that, in general, the larger the window, the better the scores. Individual speech turns are too small and contain no context. However, using the whole conversation most often leads to a drop in performance compared to our largest window (512 words) due to data sparsity, as we can observe for connective, n-POS and n-treelet. OCR and Backchannels do not follow this trend, meaning that they are probably less sparse.", |
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| { |
| "text": "These experiments demonstrate that using the block of conversation is relevant -the models find enough information to make accurate classification -, while allowing to increase the number of classification instances artificially.", |
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| { |
| "text": "Best algorithm: Among the 5 classifiers, NB generally performs well when dealing with word counts (in Full and Indiv.), while SVM and LR are generally better in other cases. More precisely, SVM performs better when the context window is relatively large, and the data sparsity is more pronounced (Full). At the same time, LR is better at dealing with small to medium-sized contexts (Indiv. and W-n settings). Detailed information is in the supplementary material.", |
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| "sec_num": "5" |
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| "text": "We used conversations involving patients with schizophrenia in order to learn about language features associated with the disease. We compared various settings to represent dialogues and several representations to deal with data scarcity and lexical bias. Our experiments replicate performances as high as previous studies in English. Further experiments will be designed to take into account the entire interaction, probably with neural networks. We would also like to investigate the effect of adversarial loss in mitigating the bias within a neural model.", |
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| "section": "Conclusion", |
| "sec_num": "6" |
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| { |
| "text": "We hope that this paper will remind us of the importance of looking for bias in data and exploring higher-level, less language-dependent information to produce robust systems and draw more general conclusions on conversational data. ", |
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| "section": "Conclusion", |
| "sec_num": "6" |
| }, |
| { |
| "text": "A.1 OCR and backchannel word list", |
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| "section": "A Appendices", |
| "sec_num": null |
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| "text": "In order to improve reproducibility, we give the full list of tokens used for OCR (Table 3) and backchannel (Table 5) , as well as their corresponding translation in English (Table 4, Table 6 ). They were obtained by translating the list given by the authors of we contacted, and by adding a few additional terms specific to French. A.2 Best scores and corresp. settings Table 7 : Best scores (averaged accuracy Acc.), best algorithms (Algo), corresponding hyper-parameters (Hyperparams.) and threshold (Thres.) for full documents (Full), individual speech turns (Indiv.) and Window size of 512 tokens (W-512).", |
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| "text": "(Table 4, Table 6", |
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| "start": 371, |
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| "sec_num": null |
| }, |
| { |
| "text": "Our code is on: https://github.com/ chuyuanli/non-lexical-markers-scz-conv.", |
| "cite_spans": [], |
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| { |
| "text": "POS tagging is a process of marking up a word in a text to a particular part of speech. Allende-Cid et al. (2019) tested two types of POS tags: a general one called meta-POS (12 labels) and a precise one POS (160 labels). Both allow performance higher than chance.", |
| "cite_spans": [], |
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| "section": "", |
| "sec_num": null |
| }, |
| { |
| "text": "WAIS-III: Wechsler Adult Intelligence Scale (WAIS) is an IQ test designed to measure intelligence and cognitive ability in adults and older adolescents. Trail Making Test (TMT) is a widely used test to assess executive abilities in patients. California Verbal Learning Test (CVLT) measures episodic verbal learning and memory.", |
| "cite_spans": [], |
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| "section": "", |
| "sec_num": null |
| }, |
| { |
| "text": "p-value< 0.05, coefficient |\u03c1| > 0.3", |
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| "section": "", |
| "sec_num": null |
| }, |
| { |
| "text": "ADP stands for adposition and it covers preposition and postposition.8 advmod is a (non-clausal) adverb or adverbial phrase; advcl is an adverbial clause modifier. They serve to modify a verb or other predicate.", |
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| "back_matter": [ |
| { |
| "text": "The authors thank the anonymous reviewers for their insightful comments and suggestions. This work was supported by the PIA project \"Lorraine Universit\u00e9 d'Excellence\", ANR-15-IDEX-04-LUE, as well as the CPER LCHN (Contrat de Plan \u00c9tat-R\u00e9gion -Langues, Connaissances et Humanit\u00e9s Num\u00e9riques). We would like to thank the Centre Hospitalier Le Vinartier for having contributed decisively to the implementation of the experimentation. Experiments presented in this paper were carried out in secured nodes on the Grid'5000 testbed. We would like to thank the Grid'5000 community (see https://www.grid5000.fr).", |
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| "section": "Acknowledgements", |
| "sec_num": null |
| } |
| ], |
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| "FIGREF0": { |
| "text": "based on the de-Max . . . eat . . . apple NOUN . . . VERB . . . NOUN nsubj dobj An example of syntactic relation represented as treelet.", |
| "uris": null, |
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| "type_str": "figure" |
| }, |
| "FIGREF1": { |
| "text": "Accuracy for all features and window sizes. OCR: Open Class Repair, BC: Backchannel response, Conn.: connectives. W-n: window size.", |
| "uris": null, |
| "num": null, |
| "type_str": "figure" |
| }, |
| "TABREF1": { |
| "text": "Number of documents, speech turns and words per document when varying the window.", |
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| "html": null, |
| "content": "<table/>", |
| "type_str": "table" |
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| "content": "<table/>", |
| "type_str": "table" |
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| "TABREF5": { |
| "text": ", c'est \u00e7a[that's right / yeah, right]). At the same time, patients with schizophrenia are correlated with more ambiguous expressions which are also used in non-phatic contexts(je comprends [I understand], bien s\u00fbr [of course], exactement [exactly]), i.e., less BC responses: this supports that the patients are less prone to maintain the conversation. Connectives also give promising results, at best 73.6%. Trend shows that controls use longer connectives (jusqu'\u00e0 ce que [until that], au point de [to the point that]) vs. patients (donc [so], puis [then]). Connectives linked to the present moment are also highly correlated to schizophrenic group (maintenant (que) [now (that)], depuis que [ever since]); this might refer to changes after treatment.", |
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| "content": "<table/>", |
| "type_str": "table" |
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| "type_str": "table" |
| }, |
| "TABREF8": { |
| "text": "Open class repair initiators list (French).", |
| "num": null, |
| "html": null, |
| "content": "<table><tr><td>pardon you said</td><td>pardon</td><td>ah pardon you were saying</td></tr><tr><td>excuse-me</td><td>excuse me</td><td>i am sorry</td></tr><tr><td>sorry</td><td>(ah) yes?</td><td>ah really?</td></tr><tr><td>is it true?</td><td>it's euh?</td><td>huh?</td></tr><tr><td>of what</td><td>what is it?</td><td>which means</td></tr><tr><td>euh?</td><td>tell me more</td><td>but still</td></tr></table>", |
| "type_str": "table" |
| }, |
| "TABREF9": { |
| "text": "", |
| "num": null, |
| "html": null, |
| "content": "<table><tr><td colspan=\"3\">: Open class repair initiators list (English trans-</td></tr><tr><td>lation).</td><td/><td/></tr><tr><td>oui</td><td>ouais</td><td>ouais voil\u00e0</td></tr><tr><td>oui c'est \u00e7a</td><td>oui bah oui</td><td>oui... forc\u00e9ment</td></tr><tr><td>bah ouais</td><td>hum (hum)</td><td>muh mmh</td></tr><tr><td>mmh/mmhh</td><td>d'accord</td><td>ok</td></tr><tr><td>voil\u00e0</td><td>c'est \u00e7a</td><td>c'est vrai</td></tr><tr><td>c'est s\u00fbr</td><td>\u00e7a c'est clair</td><td>eh bien s\u00fbr</td></tr><tr><td>carr\u00e9ment</td><td>bien s\u00fbr</td><td>super</td></tr><tr><td>ok... bon</td><td>d'accord \u00e7a marche</td><td>certes</td></tr><tr><td>mais hein</td><td>je comprends</td><td>vraiment</td></tr><tr><td>bien</td><td>bon</td><td>tr\u00e8s bien</td></tr><tr><td>quand m\u00eame</td><td>tout \u00e0 fait</td><td>certainement</td></tr><tr><td>exactement</td><td>tant mieux</td><td>oh</td></tr><tr><td>ah</td><td>ben</td><td>alors ben</td></tr><tr><td>ah d'accord</td><td>ah \u00e7a euh</td><td>eh bah c'est bien</td></tr></table>", |
| "type_str": "table" |
| }, |
| "TABREF10": { |
| "text": "backchannel response list (French).", |
| "num": null, |
| "html": null, |
| "content": "<table><tr><td>yes</td><td>yeah</td><td>yeah that's it</td></tr><tr><td>yes that's it</td><td>yes euh yes</td><td>yes... for sure</td></tr><tr><td>euh yeah</td><td>hum (hum)</td><td>muh mmh</td></tr><tr><td>mmh/mmhh</td><td>okay</td><td>ok</td></tr><tr><td>that's it</td><td>that's it</td><td>that's true</td></tr><tr><td>(yes) (for) sure</td><td>that's clear/clearly/definitely</td><td>eh of course</td></tr><tr><td>completely</td><td>of course</td><td>super</td></tr><tr><td>ok... then</td><td>all right</td><td>indeed/yes</td></tr><tr><td>but hein</td><td>i understand</td><td>really</td></tr><tr><td>good</td><td>well</td><td>very good</td></tr><tr><td>still</td><td>exactly</td><td>certainly/sure</td></tr><tr><td>exactly</td><td>all the better/so much the better</td><td>oh</td></tr><tr><td>ah</td><td>well</td><td>so... well</td></tr><tr><td>ah okay</td><td>ah (this) euh</td><td>eh well that's good</td></tr></table>", |
| "type_str": "table" |
| }, |
| "TABREF11": { |
| "text": "", |
| "num": null, |
| "html": null, |
| "content": "<table><tr><td>: backchannel response list (English transla-</td></tr><tr><td>tion).</td></tr></table>", |
| "type_str": "table" |
| } |
| } |
| } |
| } |