127 research outputs found
A Literature Review On Chief Executive Officer Hubris And Related Constructs: Is The Theory Of Chief Executive Officer Hubris An Antecedents Or Consequences?
This paper reviews the theory of Chief Executive Officer hubris and related constructs. It is to identify the area of Chief Executive Officer hubris clearly and to clarify the confusion of related constructs which includes: overconfidence, Chief Executive Officer celebrity, and narcissism. We examined the four related constructs comprehensively and evaluated Chief Executive Officer hubris construct as an antecedent or consequence. Throughout the research mainstream, these research related constructs often use the word hubris interchangeably. Many researchers are confused whether Chief Executive Officer hubris is an antecedent or consequence? We will attempt to resolve this issue by examining antecedents and consequences of Chief Executive Officer hubris and related constructs. Furthermore, suggestions and implications for future research based on Chief Executive Officer hubris will be assessed.
The Informational Content Of Changes In Stock Recommendation: Chaebol Vs. Non-Chaebol Affiliated Analysts
Accurate analysts’ reports alleviate information asymmetry between companies and investors by providing accounting information that is useful in investment decision-making for market participants. Investors evaluate the credibility of stock recommendations based on the accuracy of the earnings forecasts of analysts, applying them in the decision-making process. Studies of stock recommendations have focused on their informational content, systematically analyzing the characteristics of recommendations and, to a lesser degree, decision-making factors. For most analysts, when stock recommendations and forecast changes are simultaneously disclosed, a large bias results if analysts fail to consider the magnitude of the market reaction relative to the earnings forecast and stock recommendations. In most previous studies, the informational content of both individual stock recommendations and changes in stock recommendations was investigated. In this study, we examine differences in the informational content depending on the stock recommendations of the report released immediately previous to the current report for the same recommendation. An upgraded (or downgraded) revision within the same recommendation category is associated with a greater (lower) stock price return. Even the same recommendation in the market may cause different reactions depending on both the recommendation itself and on the direction of change of the recommendation. Affiliated analysts have more access to inside information of the companies they analyze. The stock returns after revisions of Chaebol-affiliated analysts are significantly higher than those of non-Chaebol-affiliated analysts
A 6.78MHz Adaptive-ZVS Class-D PA with Dynamic Dead-Time for Wireless Power Transfer system
Department of Electrical EngineeringIn this thesis, a class-D power amplifier (PA) with adaptive zero-voltage switching (A-ZVS) technique for Low power 6.78 MHz resonant wireless power transfer (R-WPT) system is proposed. In R-WPT operation, the loading impedance of a PA can be varied by the process tolerance of the LC resonant components and WPT environments, such as the resonant topology, coupling coefficient and loading condition of the receiver. The proposed A-ZVS feedback loop of PA calibrates the equivalent resonant capacitance using PWM-controlled switched capacitor in real-time to achieve ZVS by adjusting the loading impedance to be slightly inductive. Furthermore, the proposed PA adjust the dead-time according to variation of WPT environments. The proposed PA was fully integrated except for one switched capacitor used as the tuning element and fabricated in a TSMC 0.18um BCD process. The measurement results demonstrated robust ZVS operation with a peak system efficiency of 52.7% and an enhanced maximum transmitting power of 107%.ope
The Impact of Cultural Distance on the Performance of Foreign Subsidiaries: Evidence From the Korean Market
This study investigates whether the cultural distance between Korea and the home countries of foreign subsidiaries in Korea affects the subsidiaries’ financial performance. It contributes to the literature on international business in that it sheds light on cultural distance, a well-established but somewhat neglected concept in international business. Unlike most of the previous studies that have used cultural distance as a control or moderating variable, this study uses it as an independent variable in the context of globalization through foreign direct investments in Korea. Focusing on the possible positive side of broad cultural distance, we hypothesize that the performances of foreign subsidiaries are likely to be better when the cultural distance between their home countries and Korea increases. To test our hypothesis, we have conducted an empirical analysis, using data collected from 472 foreign subsidiaries doing business in Korea. The results support our argument that cultural distance has a positive impact on financial performance. This study finds that having cultural similarities with a foreign market does not guarantee success. Instead, it shows that firms can gain opportunities when incorporating in a foreign national market with broad cultural distance. 
Incorporating Language-Driven Appearance Knowledge Units with Visual Cues in Pedestrian Detection
Large language models (LLMs) have shown their capability in understanding
contextual and semantic information regarding appearance knowledge of
instances. In this paper, we introduce a novel approach to utilize the strength
of an LLM in understanding contextual appearance variations and to leverage its
knowledge into a vision model (here, pedestrian detection). While pedestrian
detection is considered one of crucial tasks directly related with our safety
(e.g., intelligent driving system), it is challenging because of varying
appearances and poses in diverse scenes. Therefore, we propose to formulate
language-driven appearance knowledge units and incorporate them with visual
cues in pedestrian detection. To this end, we establish description corpus
which includes numerous narratives describing various appearances of
pedestrians and others. By feeding them through an LLM, we extract appearance
knowledge sets that contain the representations of appearance variations. After
that, we perform a task-prompting process to obtain appearance knowledge units
which are representative appearance knowledge guided to be relevant to a
downstream pedestrian detection task. Finally, we provide plentiful appearance
information by integrating the language-driven knowledge units with visual
cues. Through comprehensive experiments with various pedestrian detectors, we
verify the effectiveness of our method showing noticeable performance gains and
achieving state-of-the-art detection performance.Comment: 11 pages, 4 figures, 9 table
Robust Pedestrian Detection via Constructing Versatile Pedestrian Knowledge Bank
Pedestrian detection is a crucial field of computer vision research which can
be adopted in various real-world applications (e.g., self-driving systems).
However, despite noticeable evolution of pedestrian detection, pedestrian
representations learned within a detection framework are usually limited to
particular scene data in which they were trained. Therefore, in this paper, we
propose a novel approach to construct versatile pedestrian knowledge bank
containing representative pedestrian knowledge which can be applicable to
various detection frameworks and adopted in diverse scenes. We extract
generalized pedestrian knowledge from a large-scale pretrained model, and we
curate them by quantizing most representative features and guiding them to be
distinguishable from background scenes. Finally, we construct versatile
pedestrian knowledge bank which is composed of such representations, and then
we leverage it to complement and enhance pedestrian features within a
pedestrian detection framework. Through comprehensive experiments, we validate
the effectiveness of our method, demonstrating its versatility and
outperforming state-of-the-art detection performances
Unsupervised Speech Representation Pooling Using Vector Quantization
With the advent of general-purpose speech representations from large-scale
self-supervised models, applying a single model to multiple downstream tasks is
becoming a de-facto approach. However, the pooling problem remains; the length
of speech representations is inherently variable. The naive average pooling is
often used, even though it ignores the characteristics of speech, such as
differently lengthed phonemes. Hence, we design a novel pooling method to
squash acoustically similar representations via vector quantization, which does
not require additional training, unlike attention-based pooling. Further, we
evaluate various unsupervised pooling methods on various self-supervised
models. We gather diverse methods scattered around speech and text to evaluate
on various tasks: keyword spotting, speaker identification, intent
classification, and emotion recognition. Finally, we quantitatively and
qualitatively analyze our method, comparing it with supervised pooling methods
- …