| Literature DB >> 31616337 |
Cristiano Chesi1, Paolo Canal1.
Abstract
In this paper, we discuss the results of two experiments, one off-line (acceptability judgment) and the other on-line (eye-tracking), targeting Object Cleft (OC) constructions. In both experiments, we used the same materials presenting a manipulation on person features: second person plural pronouns and plural definite determiners alternate in introducing a full NP ("it was [DP1 the/you [NP bankers]]i that [DP2 the/you [NP lawyers]] have avoided _i at the party") in a language, Italian, with overt person (and number) subject-verb agreement. As results, we first observed that the advantage of the bare pronominal forms reported in previous experiments (Gordon et al., 2001; Warren and Gibson, 2005, a.o.) is lost when the full NP (the "lexical restriction" in Belletti and Rizzi, 2013) is present. Second, an advantage for the mismatch condition, Art 1 -Pro 2, in which the focalized subject is introduced by the determiner and the OC subject by the pronoun, as opposed to the matching Pro 1 -Pro 2 condition, is observed, both off-line (higher acceptability and accuracy in answering comprehension questions after eyetracking) and on-line (e.g., smaller number of regressions from the subject region); third, we found a relevant difference between acceptability and accuracy in comprehension questions: despite similar numerical patterns in both off-line measures, the difference across conditions in accuracy is mostly not significant, while it is significant in acceptability. Moreover, while the matching condition Pro 1 -Pro 2 is perceived as nearly ungrammatical (far below the mean acceptability across-conditions), the accuracy in comprehension is still high (close to 80%). To account for these facts, we compare different formal competence and processing models that predict difficulties in OC constructions: similarity-based (Gordon et al., 2001, a.o.), memory load (Gibson, 1998), and intervention-based (Friedmann et al., 2009) accounts are compared to processing oriented ACT-R-based predictions (Lewis and Vasishth, 2005) and to top-down Minimalist derivations (Chesi, 2015). We conclude that most of these approaches fail in making predictions able to reconcile the competence and the performance perspective in a coherent way to the exception of the top-down model that is able to predict correctly both the on-line and the off-line main effects obtained.Entities:
Keywords: complexity; cue-based retrieval; intervention; memory load; object cleft; pronominal determiners; similarity; top-down derivation
Year: 2019 PMID: 31616337 PMCID: PMC6764083 DOI: 10.3389/fpsyg.2019.02105
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Summary of the predictions for the paradigm in 10 (data from Warren and Gibson, 2005).
| Memory-load prediction | Hard | Medium | Easy | Hard | Medium | Easy | Hard | Medium | Easy |
| Similarity-based prediction | Hard | Medium | Easy | Medium | Hard | Easy | Easy | Easy | Medium |
| Intervention-based prediction | Hard | ? | Easy | ? | Hard | Easy | Easy | Easy | Easy |
| ACT-R-based prediction | Hard | Hard | Medium | Hard | Hard | Medium | Medium | Medium | Easy |
| Top-down prediction | Hardest | Medium | Medium–Easy | Hard | Hard | Easy | Hard | Medium | Easy |
Theory by theory overall (off-line) predictions on the paradigm (19).
| Similarity-based prediction | Hard | Hard | Medium | Medium |
| Intervention-based prediction | Hard | Hard | Medium | Medium |
| Top-down prediction (FRC)—H1 | Hard | Hard | Medium | Medium |
| Top-down prediction (FRC)—H2 | Hard | Hardest | Medium | Hard |
| Memory-load prediction—A1 | Hard | Hard | Hard | Hard |
| Memory-load prediction—A2 | Harder | Hard | Hard | Harder |
| Memory-load prediction—A3 | Hard | Harder | Harder | Hard |
| ACT-R-based prediction | Hard | Hard | Hard | Hard |
On-line predictions on the paradigm (19); at the verb segment (encoding+retrieval).
| Art1-Art2 | Memory-load prediction | 2 | 2 | 4 (1+3) | 4 |
| Top-down prediction | 2 | 3 | 3.43 [2+log(27)] | 5 | |
| Art1-Pro2 | Memory-load prediction | 2 | 3 | 5 (1+4) | 4 |
| Top-down prediction | 2 | 4 | 3.38 [2+log(24)] | 5 | |
| Pro1-Art2 | Memory-load prediction | 3 | 2 | 4 (1+3) | 4 |
| Top-down prediction | 3 | 3 | 3.43 [2+log(27)] | 5 | |
| Pro1-Pro2 | Memory-load prediction | 3 | 3 | 5 (1+4) | 4 |
| Top-down prediction | 3 | 5 | 3.68 [2+log(48)] | 5 |
Figure 1Offline results: estimated acceptability (7-point Likert scale) judgments (experiment 1) and accuracy (%) in answering comprehension questions (experiment 2). Error bars represent 95% confidence intervals around the models' estimates.
Acceptability and Accuracy effects depending on DP1-DP2 types.
| DP1 type | ||
| + DP2 type | ||
| + DP1:DP2 | ||
| DP1 type | 0.69 | |
| + DP2 type | 0.00 | |
| + DP1:DP2 | 3.76 | <0.1 |
Bold values are the significant ones.
Figure 2Estimated First Fixation (FF) reading times (ms) across sentence regions. Error bars represent 95% confidence intervals around the models' estimates.
First Fixation (FF) effects depending on the DP1-DP2 types and Working Memory (WM).
| + DP1 type | 1.21 | |||||||||||
| + DP2 type | 2.14 | |||||||||||
| + DP1:DP2 | ||||||||||||
| + WM | 1.29 | |||||||||||
| + DP1:WM | ||||||||||||
| + DP2:WM | 2.08 | |||||||||||
| + DP1:DP2:WM | 1.32 | |||||||||||
χ.
Bold values are the significant ones.
Figure 3Estimated Gaze Duration (GD) reading times (ms) across sentence regions. Error bars represent 95% confidence intervals around the models' estimates.
Gaze Duration (GD) effects depending on DP1-DP2 type and Working Memory (WM).
| + DP1 type | 1.6 | |||||||||||
| + DP2 type | 3.42 | <0.1 | 2.93 | <0.1 | ||||||||
| + DP1:DP2 | 1.11 | 2.42 | ||||||||||
| + WM | 17.1 | 12.59 | ||||||||||
| + DP1:WM | ||||||||||||
| + DP2:WM | 1.93 | 1.01 | ||||||||||
| + DP1:DP2:WM | 1.13 | |||||||||||
Bold values are the significant ones.
Figure 4Estimated Total reading Times (TT) (ms) across sentence regions. Error bars represent 95% confidence intervals around the models' estimates.
Total Time (TT) effects depending on the DP1-DP2 type and Working Memory (WM).
| + DP1 type | 1.52 | 2.84 | <0.1 | 1.04 | 2.34 | |||||||
| + DP2 type | 2.77 | <0.1 | ||||||||||
| + DP1:DP2 | 1.58 | 1.32 | ||||||||||
| + WM | 3.53 | <0.1 | 1.21 | |||||||||
| + DP1:WM | ||||||||||||
| + DP2:WM | 3.60 | <0.1 | 1.90 | |||||||||
| + DP1:DP2:WM | ||||||||||||
Bold values are the significant ones.
Figure 5Estimated Second Pass (SP) reading times (ms) across sentence regions. Error bars represent 95% confidence intervals around the models' estimates.
Second Pass (SP) reading times effects depending on the DP1-DP2 type and Working Memory (WM).
| + DP1 type | 1.64 | |||||||||||
| + DP2 type | ||||||||||||
| + DP1:DP2 | 2.73 | <0.1 | ||||||||||
| + WM | 1.89 | 2.21 | 2.66 | |||||||||
| + DP1:WM | 1.51 | 2.13 | 2.37 | |||||||||
| + DP2:WM | 2.08 | 1.27 | 2.47 | |||||||||
| + DP1:DP2:WM | 2.13 | |||||||||||
χ.
Bold values are the significant ones.
Figure 6Estimated first (light shades) and total (full colors) regression probabilities (%) In and From the regions of interest. Error bars represent 95% confidence intervals around the models' estimates.
Regression from (R-from) depending on the DP1-DP2 types and Working Memory (WM).
| Null (trial order) | ||||||||
| + DP1 type | 2.19 | <1 | 1.64 | |||||
| + DP2 type | < | 1.29 | ||||||
| + DP1:DP2
| ||||||||
| + WM | 3.31 | <0.1 < | ||||||
| + DP1:WM | ||||||||
| + DP2:WM | 3.48 | <0.1 | ||||||
| + DP1:DP2:WM | 1.81 | 2.38 | < | |||||
First Regression from are indicated (.
Bold values are the significant ones.
Italics indicate the fR–from measures.
Regression In (Rin) depending on the DP1-DP2 types and Working Memory (WM).
| + DP1 type | 3.00 | <0.1 | ||||||||
| + DP2 type | ||||||||||
| + DP1:DP2 | 2.43 | 1.09 | ||||||||
| + WM | ||||||||||
| + DP1:WM | 1.32 | 3.02 | <0.1 | |||||||
| + DP2:WM | 1.90 | 1.20 | ||||||||
| + DP1:DP2:WM | 2.02 | |||||||||
χ.
Bold values are the significant ones.
Main results summarized.
| Acceptability | Good | Bad | Good | Medium | |
| Comprehension | Good | Good | Good | Good | |
| DP1 (focalized object) | First fixation | Baseline | Baseline | Baseline | Baseline |
| Gaze | Baseline | Slower | Baseline | Slower | |
| Total | Baseline | Slower | Baseline | Slower | |
| Second pass | Baseline | Slower | Baseline | Slower | |
| Regressions from | Baseline | More | Baseline | More | |
| Regressions in | Baseline | Baseline | Baseline | Baseline | |
| D2 (subject) | First fixation | Baseline | Slower | Slower | Baseline |
| Gaze | Baseline | Slower | Slower | Baseline | |
| Total | Baseline | Slower | Mildly slower | Baseline | |
| Second pass | Baseline | Slower | Mildly slower | Baseline | |
| Regressions from | More | More | Baseline | Baseline | |
| Regressions in | Baseline | More | Baseline | Baseline | |
| Verb | First fixation | Baseline | Slower | Slower | Baseline |
| Gaze | Baseline | Slower | Baseline | Baseline | |
| Total | Baseline | Slower | Baseline | Baseline | |
| Second pass | Baseline | Slower | Baseline | Baseline | |
| Regressions from | Slightly more | More | Baseline | Baseline |
Figure 7TT and GD estimates compared to FREC and DLT metrics.
| (6) X: | Ho sentito che Alberto ha salutato qualcuno prima di partire per le vacanze; ha per caso salutato Beatrice prima di partire? (Dopo il litigio che hanno avuto per colpa di Claudia sarebbe stato un segno distensivo) |
| Y: | (no, non-era Beatrice, purtroppo) era CLAUDIA che Alberto ha salutato prima di partire! |
| (9) | ||||||
| a. | It was | that | at the party | |||
| a'. | It was | that | at the party | |||
| a”. | It was | that | at the party | |||
| b. | It was | that | at the party | |||
| b'. | It was | that | at the party | |||
| b”. | It was | that | at the party | |||
| c. | It was | that | at the party | |||
| c'. | It was | that | at the party | |||
| c”. | It was | that | at the party |
| (10) | ||
|---|---|---|
| 365 (19) | ||
| 319 (12) | ||
| 306 (14) | ||
| 348 (18) | ||
| 347 (21) | ||
| 291 (14) | ||
| 348 (18) | ||
| 311 (15) | ||
| 291 (13) |
| (14) | |||
|---|---|---|---|
| 365 (19) | 1,43 | ||
| 319 (12) | 1,08 | ||
| 306 (14) | 0,78 | ||
| 348 (18) | 1,26 | ||
| 347 (21) | 1,26 | ||
| 291 (14) | 0,6 | ||
| 348 (18) | 1,26 | ||
| 311 (15) | 0,9 | ||
| 291 (13) | 0,6 |
| (16) | ||||||||
|---|---|---|---|---|---|---|---|---|
| a. | It was | that | at the party | [D1-D2] | ||||
| 1 | 2 | 1 | 3 | 2 | 3 | |||
| a'. | It was | that | at the party | [D1-N2] | ||||
| 1 | 2 | 1 | 1 | 2 | 3 | |||
| a”. | It was | that | at the party | [D1-P2] | ||||
| 1 | 2 | 1 | 0 | 2 | 3 | |||
| b. | It was | that | at the party | [N1-D2] | ||||
| 1 | 1 | 1 | 2 | 2 | 3 | |||
| b'. | It was | that | at the party | [N1-N2] | ||||
| 1 | 1 | 1 | 2 | 2 | 3 | |||
| b”. | It was | that | at the party | [N1-P2] | ||||
| 1 | 1 | 1 | 0 | 2 | 3 | |||
| c. | It was | that | at the party | [P1-D2] | ||||
| 1 | 0 | 1 | 2 | 2 | 3 | |||
| c'. | It was | that | at the party | [P1-N2] | ||||
| 1 | 0 | 1 | 1 | 2 | 3 | |||
| c”. | It was | that | at the party | [P1-P2] | ||||
| 1 | 0 | 1 | 0 | 2 | 3 |